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Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia

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INTRODUCTION. Finding an accurate instrument to measure self-regulated learning in higher education is a complex task. In 2021, Panadero and colleagues developed the Deep Learning Strategies Questionnaire (DLS-Q) to assess the learning strategies used by students. In this study, we aimed to assess the evidence of validity of the DLS-Q in the Catalan language. Additionally, we explored whether students’ beliefs about the subject and their previous experience with peer-assessment processes are related to their self-regulated learning skills. METHOD. A total of 475 higher education students from various year groups and faculties at a university in Catalonia participated in this study. RESULTS. We found a significant positive correlation between all dimensions of deep-learning strategies and the different expectations and beliefs expressed by students at the beginning of the academic year. DISCUSSION. Since we decided to eliminate three items from the original version due to their low score, we propose a four-dimensional structure for a 27-item version of the questionnaire. The low-scoring items are consistent with the results of previous research in different educational contexts. We discuss possible explanations related to teaching practices and lecturers’ roles as feedback providers.
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ISSN: 2013-2255
Analysing the Deep Learning Strategies Questionnaire: a case
study with higher education students in Catalonia
Ludmila Martins a https://orcid.org/0000-0002-9527-4295
Antoni Ruiz-Bueno b https://orcid.org/0000-0001-9651-3633
Universitat de Barcelona, Spain.
a Departament de Didàctica i Organització Educativa, Facultat dEducació. Psg. Vall d’Hebron, 171 Edifici Llevant, 2a planta. 08035 Barcelona, Spain.
ludmila.martins@ub.edu
b Departament de Mètodes d’Investigació i Diagnòstic en Educació, Facultat d’Educació.
Research article. Received: 23/05/2024. Revised: 25/09/2024. Accepted: 29/10/2024. Published: 02/01/2025.
Abstract
INTRODUCTION. Finding an accurate instrument to measure self-regulated learning in higher education is a complex task. In 2021,
Panadero and colleagues developed the Deep Learning Strategies Questionnaire (DLS-Q) to assess the learning strategies used by
students. In this study, we aimed to assess the evidence of validity of the DLS-Q in the Catalan language. Additionally, we explored
whether students’ beliefs about the subject and their previous experience with peer-assessment processes are related to their self-
regulated learning skills.
METHOD. A total of 475 higher education students from various year groups and faculties at a university in Catalonia participated in this
study.
RESULTS. We found a significant positive correlation between all dimensions of deep-learning strategies and the different expectations
and beliefs expressed by students at the beginning of the academic year.
DISCUSSION. Since we decided to eliminate three items from the original version due to their low score, we propose a four-dimensional
structure for a 27-item version of the questionnaire. The low-scoring items are consistent with the results of previous research in
different educational contexts. We discuss possible explanations related to teaching practices and lecturers’ roles as feedback providers.
Keywords
self-regulated learning, learning strategy, higher education, questionnaire, validation.
Recommended reference
Martins, L., & Ruiz-Bueno, A. (2025). Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students
in Catalonia. REIRE Revista d’Innovació i Recerca en Educació, 18(1), 1–19. https://doi.org/10.1344/reire.46895
© 2025 The authors. This is an open access article distributed under the Creative Commons Attribution 4.0 International License, which permits
unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. To view a copy of this license, visit
https://creativecommons.org/licenses/by/4.0/
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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Títol (català)
Anàlisi del Qüestionari d’Estratègies d’Aprenentatge Profund: un estudi de cas amb estudiants d’educació superior a Catalunya
Resum
INTRODUCCIÓ. Trobar un instrument precís per mesurar l’aprenentatge autoregulat en l’educació superior és una tasca complexa. El
2021, Panadero i altres col·laboradors van desenvolupar el Deep Learning Strategies Questionnaire (DLS-Q) per avaluar les estratègies
d’aprenentatge utilitzades pels estudiants. En aquest estudi pretenem comprovar levidència de validesa de linstrument DLS-Q en
llengua catalana. A més, explorem si les creences dels estudiants sobre el tema i l’experiència prèvia en processos d’avaluació entre
iguals tenen relació amb les seves habilitats d’aprenentatge d’autoregulac.
MÈTODE. Hi van participar 475 estudiants d’educació superior de diversos cursos i facultats d’una universitat catalana.
RESULTATS. Vam trobar que totes les dimensions de les estratègies d’aprenentatge profund mostren una correlació significativa i
positiva amb les diferents expectatives o creences que els estudiants expressen a l’inici del curs.
DISCUSSIÓ. Atès que vam decidir eliminar tres ítems de la versió original a causa de la seva baixa puntuació, proposem una estructura de
quatre dimensions per a la versió del qüestionari de 27 ítems. Els ítems amb baixa puntuació són concordants amb els resultats
d’investigacions prèvies en diferents contextos educatius. Parlem de possibles explicacions vinculades a les retroaccions (feedback) que
proveeixen les pràctiques docents i el paper del professorat.
Paraules clau
aprenentatge autoregulat, estratègia d’aprenentatge, educació superior, qüestionari, validació
tulo (castellano)
Análisis del Cuestionario de Estrategias de Aprendizaje Profundo: un estudio de caso con estudiantes de educación superior en Cataluña
Resumen
INTRODUCCIÓN. Encontrar un instrumento preciso para medir el aprendizaje autorregulado en la educación superior es una tarea
compleja. En 2021, Panadero y colaboradores desarrollaron el Deep Learning Strategies Questionnaire (DLS-Q) para evaluar las
estrategias de aprendizaje utilizadas por los estudiantes. En este estudio pretendemos comprobar la evidencia de validez del
instrumento DLS-Q en lengua catalana. Además, exploramos si las creencias de los estudiantes sobre la asignatura y la experiencia previa
en procesos de evaluación entre iguales tienen relación con sus habilidades de autorregulación del aprendizaje.
TODO. Participaron 475 estudiantes de educación superior de varios cursos de diversas facultades de una universidad catalana.
RESULTADOS. Encontramos que todas las dimensiones de las estrategias de aprendizaje profundo muestran una correlación positiva
significativa con las diferentes expectativas o creencias que los estudiantes expresan al inicio del curso.
DISCUSIÓN. Como decidimos eliminar tres ítems de la versión original debido a su baja puntuación, proporcionamos una estructura de
cuatro dimensiones para la versión del cuestionario de 27 ítems. Los ítems con baja puntuación concuerdan con los resultados de
investigaciones anteriores en diferentes contextos educativos. Se discuten posibles explicaciones relacionadas con las prácticas docentes
y el papel del profesorado como proveedor de feedback.
Palabras clave
aprendizaje autorregulado, estrategia de aprendizaje, educación superior, cuestionario, validación
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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1 Introduction
1.1 Self-regulated learning
The Council of the European Union’s 2018 recommendation on key competences for lifelong learning (2018)
highlights learning to learn as one of the key competences for supporting training, learning and participation in
society throughout life. According to this recommendation, “Personal, social and learning to learn competence is
the ability to reflect upon oneself, effectively manage time and information, work with others in a constructive
way, remain resilient and manage one’s own learning and career” (ST/9009/2018/INIT, p. 10). This requires
students to be able to self-regulate their learning and, to that end, education must contribute to their
development (Zimmerman, 2002).
Various models have been proposed to explain the development of self-regulated learning. While these models
offer different approaches, they all concur that self-regulated learning is a cyclical process (Panadero, 2017). In
accordance with the cyclical model proposed by Zimmerman (2000), which consists of three phases (forethought,
performance and self-reflection), self-regulation can be defined as self-generated thoughts, feelings and goal-
oriented behaviours (Zimmerman, 2001).
According to Winne (2018), self-regulated learners are students who actively strive to improve their own learning
process by reflecting on its potential and evaluating their own performance. This definition implicitly draws on
information processing theory, as the model proposed by this author describes the cognitive process undertaken
by students while performing a task (Panadero, 2017). In Winne’s words, “At each phase of self-regulated
learning, learners identify, process, and act on information” (2018, p. 12).
Closely related to this processing and acting on information, García-Pérez et al. (2020) suggested that any
regulatory action students take to complete a task or comprehend content can be considered a learning strategy.
In addition, the same authors argued that it is crucial to consider the context when exploring the complex
relationship between learning strategies and self-regulation skills (García-Pérez et al., 2020).
In line with Pintrich (2000), self-regulation strategies are related to motivational aspects such as task value. Task
value (Eccles, 2005) can be understood as the importance or perceived value placed on completing a task.
Previous research has highlighted the positive relationship between this variable and self-regulated learning. For
example, Li and Zheng (2018) observed a correlation between self-regulated learning and different types of task
value, in particular causal relationships with utility and intrinsic value. In a similar vein, other studies have
revealed the predictive nature of task value on self-regulation (Lawanto et al., 2014). Moreover, Ghasemi and
Dowlatabadi (2018) pointed out that task value is a good predictor of the learning and self-regulation strategies
used by students, while Lee et al. (2020) revealed the importance of task value in self-regulatory processes,
thereby highlighting the importance of providing support for such purposes.
Self-regulated learning has different dimensions; in this sense, it involves both qualitative and quantitative
aspects (Schunk & Ertmer, 2000). Moreover, it is crucial to keep in mind that aspects of the context such as the
instructional design, the type of assessment and the task involved influence the strategies adopted by students
(García-Pérez et al., 2020). In this regard, students must be given the opportunity to choose and control their
learning, while teachers could provide such opportunities by adopting interventions and training to enhance their
students’ self-regulation (Schunk & Ertmer, 2000).
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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Regarding educational interventions designed to enhance self-regulated learning, several authors (e.g. Butler &
Winne, 1995; Nicol & Macfarlane-Dick, 2006; Panadero et al., 2017) have highlighted the role of feedback
practices to foster students’ self-regulation. On this topic, Hattie and Timperley (2007) warned that the
effectiveness of feedback for promoting learning could depend on the type of feedback. Similarly, Lipnevich and
Smith (2009) reported different effects depending on whether feedback is descriptive or evaluative, while
Theobald and Bellhäuser (2022) reported that a feedback intervention improved students’ self-regulated
learning, but that this varied depending on the content of the feedback.
1.2 Peer assessment for self-regulated learning
It is well known that assessment influences the learning process. In this regard, peer assessment is considered
crucial to assessment for learning (Stančić, 2021). Specifically, peer-assessment practices provide opportunities
to develop strategies related to self-regulated learning (Clayton Bernard & Kermarrec, 2022).
Peer assessment can be understood as a situation in which the level of quality or value of a task, product or
performance is considered and specified by an equal (Tooping, 2021). Thus, feedback is closely related to peer
assessment. As mentioned by Ibarra-Sáiz et al. (2020), “In peer assessment, the role of feedback is crucial” (p.
140).
As mentioned above, several authors have already suggested that peer-feedback activities provide an
opportunity to enhance students’ self-regulated learning (Prompan & Piamsai, 2024) and that peer assessment
creates the ideal environment for fostering metacognition and reflecting on one’s own learning process (Clayton
Bernard & Kermarrec, 2022). To have an effect on learning, however, feedback must be translated into action
(Wu & Schunn, 2020). In this regard, several factors that influence and/or mediate learning and peer assessment
through feedback have been identified. One fundamental factor is the quality of feedback (Zhang & Schunn,
2023). The model proposed by Winstone and Carless (2019), which outlines seven principles of good feedback,
presents the criteria that feedback must meet to support the development of students’ self-regulation. Indeed,
“in the context of peer assessment, it is essential for students to understand what quality feedback involves”
(Ibarra-Sáiz et al., 2020, p. 140).
Peer assessment can be an effective method for developing self-regulated learning (Schünemann et al., 2017).
The processes of internalizing criteria, applying them to a peer’s work and interpreting feedback from a peer are
valuable strategies for enhancing self-regulated learning (Muñoz et al., 2020). The bidirectional relationship
between feedback and self-regulated learning has been widely explored (Panadero et al., 2018). Zhang and
Schunn (2023) demonstrated the relationship between peer review and self-regulation as a cyclical process, given
that peer review requires students to put into practice feedback loops that are essential for self-regulated
learning processes (see p. 4).
Regarding peer assessment, Tooping (2021) presented an extensive list of variables to consider when
implementing this approach. One of these variables, students’ previous experience (see p. 6), is mentioned as a
key factor that can condition the implementation process, especially in terms of the nature of the experience.
Similarly, Clayton Bernard and Kermarrec (2022) found that students expressed difficulties in self-regulating their
activities when they lacked experience; by contrast, they were more skilled in assessing and providing feedback
when they had prior experience of formative feedback.
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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1.3 Measuring self-regulated learning
To evaluate the need for and success of interventions, reliable instruments for measuring self-regulation are
essential (Alonso-Tapia et al., 2014; Panadero et al., 2021). However, as Winne and Perry (2000) warned, “[…] it
is plain that many facets of self-regulated learning (SRL) are not readily observable. Therefore, one challenge in
studying SRL is to find ways to document its components” (p. 534). Subsequent studies have addressed the
challenges of measuring self-regulation for several reasons (Alonso-Tapia et al., 2014; Boekaerts & Corno, 2005;
García-Pérez et al., 2020; Panadero et al., 2016; Winne & Perry, 2000).
In a review of self-regulated learning models, Panadero (2017) summarized the instruments and measurement
methods used in six different models. In a more recent publication, Gajda et al. (2022) adapted and validated a
self-regulation scale for the Polish context. These latter authors also presented self-reporting instruments to
measure self-regulation in an adolescent population, classified by domain (see pp. 3-5).
In light of the complexity of identifying an accurate tool for measuring self-regulated learning in higher education,
Panadero et al. (2021) developed a questionnaire focused on the learning strategies used by students (Deep
Learning Strategies QuestionnaireDLS-Q). The results of the analysis conducted by these authors revealed the
factors that can influence the use of deep-learning strategies. They reported, among other findings, the influence
of goal orientations and the indirect effect of self-efficacy. In summary, the study revealed that “the higher the
value in the deep learning strategies the more the students regulate their learning strategies and achieve a deeper
processing of new information” (Panadero et al., 2021, p. 8). To the best of our knowledge, a recent study with
Ecuadorian students is the only research to have analysed the validity and reliability of DLS-Q (Yaguarema et al.,
2022). This study resulted in four factors, like the original version, but identified some inconsistencies in the item
loading across factors. Therefore, the study is relevant for interpreting the results of the analysis and for contexts
in which DLS-Q is applied.
In this study, we aimed to determine whether the structure of DLS-Q is suitable for verifying the instrument’s
validity in the Catalan language, given that it is currently available only in Spanish and English. In addition, we
sought to contribute to the evidence supporting the questionnaire’s usefulness since, to the best of our
knowledge, it has rarely been used in other studies. Our other objectives were to explore whether students’
beliefs about the subject and their previous experiences with peer-assessment processes were linked to their
self-regulated learning skills. In this context, we posed the following research questions:
RQ1. What is the internal structure of DLS-Q in Catalan like and to what extent is it reliable?
RQ2. Do students’ beliefs about the subject before the beginning of the academic year bear any relation to
their self-regulated learning strategies?
RQ3. Do students’ previous experiences with peer-assessment processes bear any relation to their self-
regulated learning strategies?
2 Method
This was a transversal study based on a questionnaire and a quantitative methodology (Guárdia Olmos et al.,
2008).
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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2.1 Study background
This study was developed in the context of an R&D project “Analysis of the effects of feedback supported by
digital monitoring technologies on generic competences (e-FeedSkill). The project was designed to analyse the
effects of peer feedback in the development of self-regulated learning strategies among higher education
students. Moreover, it aimed to explore whether monitoring technologies have differential effects on the
development of these skills. To achieve these objectives, the following components were designed and developed
as part of the project: i) a didactic sequence based on a peer-feedback process, ii) a virtual tutor or chatbot to
support the adoption of self-regulation strategies, and iii) a learner dashboard for providing feedback based on
learning analytics.
The e-FeedSkill project was implemented with different year groups within several degrees at the Universitat de
Barcelona (University of Barcelona). Since the project used a quasi-experimental methodology, the groups within
each subject were divided into control and experimental groups. The students in the second group had access to
monitoring technologies (a tutor chatbot and a learner dashboard). To prove the effect of the intervention, a
measure of self-regulated learning was needed. In light of the application context and after an evaluation process,
the researchers selected the Deep Learning Strategies Questionnaire (DLS-Q) (Panadero et al., 2021).
2.2 Participants
A total of 475 higher education students participated in this study, 78.53% of whom identified as woman, 20.21%
as men, 1.05% as non-binary and 0.21% as another gender. All were students in different year groups (391 from
first year, 57 from second year, 19 from third year, seven from fourth year and one from fifth year) from several
faculties (99 students from the Faculty of Education, 321 from the Faculty of Pharmacy, 13 from the Faculty of
Mathematics and Computer Science, 33 from the Faculty of Law, three from the Faculty of Biology and Geography
and six from the Faculty of History) at the Universitat de Barcelona. This university is located in Catalonia, where
the official languages are Catalan and Spanish. As a result, many academic activities and programmes are held in
Catalan. All students were informed about the objectives of the project. The activities within the didactic
sequence were mandatory, but the questionnaires used for research purposes were voluntary; therefore, the
sample was clustered by convenience. The approval of the University Bioethics Commission was obtained (IRB
00003099).
2.3 Instruments
In this study, we used the Deep Learning Strategies Questionnaire (DLS-Q) (Panadero et al., 2021), which is
designed to explore students’ thoughts while they perform academic tasks and is based on a four-dimensional
model. DLS-Q is composed of 30 items, each of which presents statements that reflect students’ possible thoughts
during academic tasks. Students are asked to express their level of agreement with each statement on a Likert-
type scale with five possible responses, from 1 (strongly disagree) to 5 (strongly agree). The analysis carried out
by Panadero et al. (2021) presents a four-factor structure for the 30 items. The proposed dimensions are: S1.
Basic learning self-regulation strategies; S2. Visual elaboration and summarizing strategies; S3. Deep information
processing strategies; and S4. Social learning self-regulation strategies. Table 1 below shows the distribution of
the items across these dimensions. The original items in the Spanish questionnaire were translated into Catalan
by the project’s principal investigator, who has bilingual proficiency in both languages (see Appendix 1). This
translation was subsequently revised by two other team members. Efforts were made to ensure the translation
remained as faithful as possible to the original content, which had already been validated. Most items were
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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translated as literally as possible and minor adaptations were made only in cases where the meaning might have
been lost due to the literal nature of the translation.
Table 1
Distribution of items across the DLS-Q dimensions proposed by Panadero et al. (2021)
Dimension
Items
Basic learning self-regulation strategies
1, 4, 8, 12, 16, 20, 24, 28
Visual elaboration and summarizing strategies
2, 5, 9, 13, 17, 21, 25, 29
Deep information processing strategies
3, 6, 10, 14, 18, 22, 26, 30
Social learning self-regulation strategies
7, 11, 15, 19, 23, 27
Additionally, four items were incorporated to explore studentsbeliefs about the subjects before the beginning
of the academic year. These items were drafted based on the items within the value task dimension of the
Motivated Strategies for Learning Questionnaire (MSLQ) (Pintrich, 1991). These items are designed to evaluate
students’ perceptions of the importance, usefulness and relevance of a task (Pintrich, 1991). In the items
developed for our study, students were asked to express their level of agreement with the following statements
on a Likert-type scale with five possible responses, from 1 (strongly disagree) to 5 (strongly agree): i) I think that
the topics of this subject will be useful for me to learn; ii) I believe that I will be able to use what I learn in this
subject in other subjects, iii) I think I will like the topics of this subject; and iv) Understanding the topics this
subject is very important to me.
Moreover, some items were added to the final instrument to collect the students’ personal data. Finally, the
instrument named “initial questionnaire(because of its function in the didactic sequence) was composed of six
sections: i) introduction to the research and project; ii) informed consent; iii) data protection and processing; iv)
personal data (student number, email address, degree, year, gender, previous experience in peer-assessment
processes, beliefs about the benefits and difficulties of peer assessment); v) DLS-Q; and vi) beliefs about the
subject. For the study presented in this paper, we used only the data collected in sections iv) degree and previous
experience in peer-assessment processes; v) DLS-Q; and vi) beliefs about the subject.
2.4 Procedure
In all subjects involved in the project during the second semester of the 2021-2022 academic year, the
intervention was carried out on the virtual campus. The instrument used in this study (initial questionnaire) was
drafted in an online form approved by the university and was included in the virtual classroom for each
participating subject to facilitate student access. On the first day of classes for each subject, a researcher
presented the project and explained the research aims to the students. The students were invited to complete
the initial questionnaire voluntarily (but not anonymously).
2.5 Data analysis
The data collected were anonymized, which involved eliminating any data that could identify the students, and a
database without any personal information was created. Using this database, the negative DLS-Q items were
recoded and exploratory and semi-confirmatory factor studies were performed using the Factor 12 software
package (Ferrando et al., 2022; Lorenzo-Seva & Ferrando, 2013). These results were then used to conduct scale
reliability, correlation and effect size analysis with the SPSS software package.
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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3 Results
To answer research question 1 (RQ1), we conducted an exploratory and semi-confirmatory factor study using the
Factor 12 software package (Ferrando et al., 2022; Lorenzo-Seva & Ferrando, 2013). Based on this analysis, a four-
factor structure emerged, across which the 30 items in the original scale are distributed (see Table 2).
Table 2
Rotated loading matrix of the Deep Learning Strategies Questionnaire (DLS-Q) for 30 items
Variable
F1
F2
F3
F4
DSLQ1
.508
DSLQ 2
.704
DSLQ 3
.558
DSLQ 4
.538
DSLQ 5_R
.649
DSLQ 6
.644
DSLQ 7
.658
DSLQ 8
.736
DSLQ 9_R
.616
DSLQ 10
.550
DSLQ 11
.313
DSLQ 12
.472
DSLQ 13
.457
DSLQ 14
.691
DSLQ 15
.561
DSLQ 16
.708
DSLQ 17
.409
DSLQ 18
.683
DSLQ 19
DSLQ 20
.411
DSLQ 21_R
.711
DSLQ 22
.653
DSLQ 23
DSLQ 24
.534
DSLQ 25_R
.710
DSLQ 26
.660
DSLQ 27
.912
DSLQ 28
.542
DSLQ 29
.633
DSLQ 30
.467
Note. In Factor 12, loadings lower than absolute .300 were omitted. F1 = Basic learning self-regulation strategies; F2 =
Social learning self-regulation; F3 = Deep information processing strategies; F4= Visual elaboration and summarizing
strategies. DSLQ 5_R, DSLQ 9_R, DSLQ 21_R, DSLQ 25_R: items recoded.
As shown in Table 3, the statistics corresponding to the fit of the model (semi-confirmatory factor analysis of the
four dimensions for 30 items) indicated a good fit of the structure. The values of the goodness-of-fit indices were
at values below .030 for RMSEA and above .90 for the rest of the indices.
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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Table 3
Semi-confirmatory factor analysis of the four dimensions for 30 items. Fit statistics
NNFI
GFI
Model for 30 items in four factors
.989
.982
RMSEA = root mean square error of approximation; NNFI = Non-Normed Fit Index (Tucker & Lewis); CFI = comparative fit
index; GFI = goodness of fit index; AGFI = adjusted g of fit index.
Based on these results, we decided to dismiss items 11, 19 and 23. The adequacy of the polychronic correlation
was calculated; the Kaiser-Meyer-Olkin test was good (KMO = .869) and Bartletts statistic X2 (351) = 5239.2 (p
<.001) indicated that enough equal variances could be assumed. Thus, a new exploratory and semi-confirmatory
factor analysis was carried out. In this case, the 27 items were also distributed across four factors, as shown in
Table 4 below.
Table 4
Rotated loading matrix of the Deep Learning Strategies Questionnaire (DLS-Q) for 27 items
Variable
F1
F2
F3
F4
DSLQ1
.581
DSLQ 2
.738
DSLQ 3
.566
DSLQ 4
.595
DSLQ 5_R
.695
DSLQ 6
.699
DSLQ 7
.732
DSLQ 8
.778
DSLQ 9_R
.652
DSLQ 10
.616
DSLQ 12
.552
DSLQ 13
.503
DSLQ 14
.729
DSLQ 15
.609
DSLQ 16
.749
DSLQ 17
.472
DSLQ 18
.730
DSLQ 20
.434
DSLQ 21_R
.755
DSLQ 22
.663
DSLQ 24
.570
DSLQ 25_R
.766
DSLQ 26
.664
DSLQ 27
.895
DSLQ 28
.628
DSLQ 29
.673
DSLQ 30
.503
Note. F1 = Basic learning self-regulation strategies; F2 = Social learning self-regulation; F3 = Deep information processing
strategies; F4 = Visual elaboration and summarizing strategies. DSLQ 5_R, DSLQ 9_R, DSLQ 21_R, DSLQ 25_R: items
recoded.
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
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The statistics corresponding to the fit of the model (semi-confirmatory factor analysis of the four dimensions for
27 items) confirmed the adequacy of this factorial structure, as shown in Table 5; the RMSEA statistics were less
than .030 and the other statistics were greater than .90.
Table 5
Semi-confirmatory factor analysis of the four dimensions for 27 items. Fit statistics
RMSEA
NNFI
CFI
GFI
AGFI
Model for 27 items in four factors
.028
.989
.992
.986
.980
RMSEA = root mean square error of approximation; NNFI = Non-Normed Fit Index (Tucker & Lewis); CFI = comparative fit
index; GFI = goodness of fit index; AGFI = adjusted goodness of fit index.
Overall, a Cronbachs alpha of .861 was obtained, with a confidence interval (95%) between .842 and .878. The
statistics obtained showed acceptable reliability for each factor, with Cronbachs alpha over .74 (Table 6).
Table 6
Scale reliability
Dimension
No. items
Cronbach’s alpha (α) reliability
Omega (Ω) composite reliability
F1
8
.785
.930
F2
3
.740
.922
F3
8
.824
.933
F4
8
.833
.938
Note. F1 = Basic learning self-regulation strategies; F2 = Social learning self-regulation; F3 = Deep information processing
strategies; F4 = Visual elaboration and summarizing strategies.
As shown in Table 4, there was correspondence between the distribution of items proposed in Panadero et al.
(2021) and the findings of the analysis presented in this study. To that end, F1 would include items relating to
basic learning self-regulation strategies, F2 items relating to social learning self-regulation strategies, F3 items
relating to deep information processing strategies and F4 items concerning visual elaboration and summarizing
strategies.
To answer RQ2, we conducted a correlational analysis to explore whether there was any relationship between
studentsexpectations or thoughts at the beginning of the academic year and their learning strategies.
We found significant positive correlations between all dimensions of deep-learning strategies and the different
expectations or beliefs expressed by students at the beginning of the year. As shown in Table 7, Pearson’s
correlation coefficient varied according to the dimension and expectation or belief posed. In addition to the fact
that all correlations were significant, there was a clear difference between meanings. Factor 2 (social learning
self-regulation strategies) presented low values for all expectations, while Factor 1 (basic learning self-regulation
strategies) showed relatively high values for all expectations. In fact, the highest value corresponded to Pearson’s
correlation coefficient between F1 (basic learning self-regulation strategies) and the statement “Understanding
the topics of this subject is very important to me”; this value was closely followed by the correlation between
Factor 1 and the statement “I believe that I will be able to use what I learn in this subject in other subjects”.
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
11
Table 7
Correlational analysis
Dimension
I think that the
topics of this subject
will be useful for me
to learn
I believe that I will
be able to use what I
learn in this subject
in other subjects
I think I will like the
topics of this subject
Understanding the
topics this subject
is very important
to me
F1
.346**
.380**
.328**
.381**
F2
.171**
.158**
.169**
.178**
F3
.274**
.335**
.194**
.327**
F4
.279**
.279**
.259**
.255**
Note. ** Correlations are significant at the .01 level (bilateral). Note. F1 = Basic learning self-regulation strategies; F2 =
Social learning self-regulation; F3 = Deep information processing strategies; F4 = Visual elaboration and summarizing
strategies.
We used these results to conduct a mean difference analysis to identify any differences between students with
high and low scores in the statement “I believe that I will be able to use what I learn in this subject in other
subjects”. The categorization according to item scores was carried out based on percentile scores. In this case,
we decided to create two categories to establish a more realistic comparison with the scores obtained on the
five-point scale. Specifically, the cut-off was established at the 75th percentile (with a score of 5, with low scores
below 5 and high scores above 5) (Table 8). To ensure that the groups created were comparable, Levenes test
was used in the comparison tests (T-test and ANOVA), in which the homogeneity of variances was verified.
Table 8
Frequencies for low and high groups in the ad hoc statements to explore students’ beliefs about the subjects
before the beginning of the academic year
Statement
75th percentile (cut-off)
Low
High
N
%
N
%
I think that the topics of this subject
will be useful for me to learn
267
56.2%
208
43.8%
I believe that I will be able to use what
I learn in this subject in other subjects
295
62.1%
180
37.9%
I think I will like the topics of this
subject
280
58.9%
195
41.1%
Understanding the topics of this
subject is very important to me
280
58.9%
195
41.1%
To obtain Cohen’s d and determine the effect size in SPSS, we saved the standardized values (z-scores) of the
dependent variable as new variables. These z-scores represent the factor scores for each of the factors derived
from the DLS_Q scale. Using these scores, we conducted the corresponding T-test. The results obtained are
presented in Table 9 below.
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
12
Table 9
T-test for independent samples. High and low scores for the statement “I believe that I will be able to use what I
learn in this subject in other subjects
Low scores
(N= 280)
High scores
(N= 195)
M
SD
M
SD
t
p
d
F1
30.682
4.196
34.025
4.238
-8.508
<.001
-0.910
F2
10.371
2.429
11.010
2.846
-2.625
.009
-0.425
F3
27.910
4.818
30.851
4.797
-6.555
<.001
-0.761
F4
28.446
6.023
31.594
6.124
-5.565
<.001
-0.681
Note. F1= Basic learning self-regulation strategies; F2 = Social learning self-regulation; F3 = Deep information processing
strategies; F4 = Visual elaboration and summarizing strategies.
According to Cohens criteria, d values from .2 upwards are considered small effects, values from .5 upwards are
medium effects, and values from .8 upwards are large effects (Cohen, 1988). In this regard, the score for the
statement “I believe that I will be able to use what I learn in this subject in other subjectsshowed statistically
significant differences in the implementation of deep-learning strategies. In particular, the effect size (Cohen’s d)
showed a large effect with the implementation of basic learning self-regulation strategies.
We also conducted the same analysis to identify any differences between students with high and low scores for
the statement “Understanding the topics of this subject is very important to me”. Table 10 below shows the results
obtained.
Table 10
T-test for independent samples. High and low scores for the statement “Understanding the topics of this subject
is very important to me
Low scores
(N= 280)
High scores
(N= 195)
M
SD
M
SD
t
p
d
F1
30.757
4.180
33.917
4.342
-7.978
<.001
-0.699
F2
10.321
2.570
11.082
2.644
-3.135
.002
-0.289
F3
27.785
4.648
31.030
4.919
-7.306
<.001
-0.646
F4
28.628
6.135
31.333
6.090
-4.741
<.001
-0.432
Note. F1 = Basic learning self-regulation strategies; F2 = Social learning self-regulation; F3 = Deep information processing
strategies; F4 = Visual elaboration and summarizing strategies.
In this case, we also found that the score for the statement “Understanding the topics of this subject is very
important to me” presented statistically significant differences in the implementation of deep-learning strategies.
In particular, the effect size (Cohen’s d) showed a medium effect with the implementation of basic learning self-
regulation strategies (F1) and deep information processing strategies (F3).
Regarding RQ3, we conducted a T-test to detect any differences between the students who said they had previous
experience of participating in peer-assessment processes and those who did not.
The sample was divided into group 1 (students with no reported experience) (N=140) and group 2 (students with
reported experience) (N=335).
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
13
Table 11
T-test for independent samples
No previous
experience
(N=140)
Previous experience
(N=335)
M
SD
M
SD
t
p
F1
32.350
4.785
31.931
4.405
.920
.358
F2
10.714
2.767
10.600
2.566
.432
.666
F3
29.207
5.330
29.080
4.889
.250
.802
F4
30.128
6.570
29.576
6.119
.878
.381
Note. F1 = Basic learning self-regulation strategies; F2 = Social learning self-regulation; F3 = Deep information processing
strategies; F4 = Visual elaboration and summarizing strategies.
As shown in Table 11, no statistically significant differences were found between the groups (p > 0.05); in other
words, previous experience of participating in peer-assessment processes made no difference in the use of deep-
learning strategies.
4 Discussion
Based on the exploratory and semi-confirmatory factor analysis conducted, we provide evidence supporting the
suitability of the four-dimensional structure proposed in the original version of DSL-Q. While the four-dimensional
structure for the 30 items presented a good fit, we decided to eliminate the items identified as 11, 19 and 23 in
the original version (Panadero et al., 2021; p. 9): (11) “I usually participate in class discussions, asking questions
or making comments to the teacher”; (19) “If the teachers provide us with presentations, I take notes in them
because it makes everything clearer” and (23) “If I do not do a good job on a task or an exam, I ask the teacher to
give me more information about how to improve”. The low scores for these items could be attributed to teaching
practices, such as the prevalence of lecture-based classes where students adopt a passive role, but they could
also indicate a lack of student trust in lecturers as feedback providers. These factors should be explored through
qualitative methods to gain a better understanding of studentsexperiences.
Beyond these hypotheses, our results were consistent with the recent findings of Yaguarema et al. (2022), who
also excluded item 19 (“If the teachers provide us with presentations, I take notes in them because it makes
everything clearer”). In addition, the authors pointed out a lack of consistency in this item and argued that it
could be included in “visual elaboration and summarizing strategiesinstead of “social learning self-regulation
strategies”.
In conclusion, the four-dimensional structure for the 27 items appears to be a good option in the context under
study in light of the results obtained. In addition, we found that the distribution of the items across the
dimensions was the same as those reported by the authors of the original version.
We also found significant positive correlations between all dimensions of learning strategies and students’ beliefs
at the beginning of the year. In particular, the correlation between basic learning self-regulation strategies (F1)
and the statement “Understanding the topics of this subject is very important to me” was consistent with the
definition of learning strategy as any regulatory action that students implement to complete a task or
comprehend content (García-Pérez et al., 2020).
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
14
With respect to the differences detected between students with low and high scores for the statements “I believe
that I will be able to use what I learn in this subject in other subjects” and “Understanding the topics of this subject
is very important to me”, this was consistent with the findings reported by Panadero et al. (2021) regarding the
relationship between studentsregulation and depth of information processing and the use of deep-learning
strategies. In turn, this is related to the theory underpinning the importance of the expectancy value (Eccles,
2005) when performing a learning task (Pintrich, 1991, 2000) and previous research in the field (Ghasemi &
Dowlatabadi, 2018; Lawanto et al., 2014; Li & Zheng, 2018). Likewise, our results were in line with previous
literature findings that have shown that learners with high values in task levels report higher self-regulation scores
(Lee et al., 2020).
Despite extensive evidence pointing to the importance of peer assessment and peer feedback in developing self-
regulated learning (Clayton Bernard & Kermarrec, 2022; Prompan & Piamsai, 2024; Stančić, 2021), our findings
suggest that previous experience with peer-evaluation processes does not show statistically significant
differences in the use of deep-learning strategies. Therefore, in this context, it may not contribute to enhancing
self-regulated learning. However, it is important to note that students’ responses were obtained through self-
reported yes-no questions. As a result, there is a lack of clarity on studentsunderstanding of the term “peer
assessment” and a lack of information on the type of feedback involved in their experiences. As observed by
Tooping (2021), the nature of students’ previous experiences with peer assessment is a key influencing factor.
Consequently, our results in this area should be treated with caution, in light of the differences in effects
depending on the type of feedback, as reported in previous studies (Hattie & Timperley, 2007; Lipnevich & Smith,
2009).
4.1 Limitations and future directions for study
This paper contributes to the body of literature on measuring self-regulated learning and its associated strategies.
We provide evidence consistent with the findings presented by the authors of the original version of DLS-Q
presented here. Moreover, we contribute to the field by translating and validating the items in a new language.
This may encourage other researchers to translate the items into other languages and explore the validity and
structure of the questionnaire in their own educational contexts.
Based on our findings and experience from this project, we recommend that interventions targeting self-
regulated learning be viewed as long-term processes that develop gradually throughout studentseducational
journeys. These interventions are mediated by contextual, intrapersonal and interpersonal variables. Therefore,
it is advisable to gather initial information about students’ levels or domains and keep in mind that self-regulated
learning should be linked to their learning objectives. It is also advisable to evaluate the effects of formative
assessments on studentsacademic performance and competences. Furthermore, regarding the link between
formative assessment practices and self-regulation learning, our results should make educators and researchers
aware of the importance of carefully designing and implementing such practices. The factors involved must be
reflected on to provide suitable opportunities for enhancing self-regulation skills.
Despite these contributions, the study presents certain limitations. Firstly, there was insufficient representation
of students from different year groups, which limited our ability to conduct analyses based on this variable. As
mentioned, the information about students’ previous experiences with peer assessment had inherent limitations.
Second, it should be kept in mind that the statements related to beliefs were specific to the subject, while DSL-Q
focuses on strategies used by students while performing academic assignments in general.
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
15
In conclusion, this contribution should encourage other educational researchers to incorporate new instruments
for measuring students’ strategies. This could provide valuable insights for the design and evaluation of
educational interventions that could help students enhance their self-regulation and, ultimately, their lifelong
learning competence.
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Funding
This contribution was supported by the project “Analysis on the effects of feedback supported with monitoring
digital technologies on generic competences (grant PID2019-104285GB-I00 funded by MCIN/AEI/
10.13039/501100011033).
This contribution is part of the first author’s PhD thesis for publication. It was written in the context of AYUDAS
PARA CONTRATOS PREDOCTORALES PARA LA FORMACIÓN DE DOCTORES (PRE2020-095434) funded by
MCIN/AEI.
Availability of data and materials
The datasets used and/or analysed for the current study are available from the corresponding author upon
reasonable request.
Ethical approval and consent to participate
Informed consent was obtained from all participants before being included in the study. The project was
approved by the Ethics Committee of the University of Barcelona (IRB 00003099).
Analysing the Deep Learning Strategies Questionnaire: a case study with higher education students in Catalonia
19
Appendix 1
Deep Learning Strategies Questionnaire (DLS-Q) statements in Catalan language
1. Analitzo en profunditat la tasca a realitzar perquè em quedi clar què he de fer.
2. Sovint elaboro esquemes o dibuixos per representar-me el que estudio o els problemes que he de fer.
3. Quan llegeixo o escolto una afirmació o conclusió a classe, penso en les alternatives possibles.
4. Quan he entès el que he de fer, procuro visualitzar de forma concreta el que he d'anar fent i aconseguint.
5. No acostumo a organitzar la informació en quadres o taules a l'estudiar perquè no serveix de molt per
aprendre.
6. Relaciono el que estic aprenent a les classes amb idees pròpies.
7. Sovint comento amb els meus companys/es idees o aspectes del que he estat estudiant.
8. Mentre faig una tasca comprovo si els passos que vaig donant són els adequats.
9. Excepte que m'ho demani el/la professor/a, no acostumo a fer resums dels textos que estudio.
10. Quan estudio relaciono el material que llegeixo amb el que ja sé.
11. Normalment participo de manera activa a les classes, preguntant o fent comentaris al professor/a.
12. Si el/la professor/a em lliura alguna eina que em permeti avaluar si la manera de procedir en realitzar
una tasca està bé, habitualment la utilitzo.
13. Quan estudio per a una avaluació, escric petits resums amb les idees i conceptes principals de les lectures.
14. Relaciono idees de la classe amb altres idees cada vegada que és possible fer-ho.
15. Demano l'opinió dels meus companys/es de classe sobre com estic fent un treball.
16. Quan estic fent una tasca m'aturo a comprovar si avanço segons el previst.
17. Acostumo a estudiar utilitzant estratègies diferents (memoritzar, fer esquemes, etc.) segons la matèria
de què es tracti.
18. En estudiar, sovint relaciono mentalment els continguts que estic treballant amb els d'altres assignatures.
19. Quan els professors ens proporcionen les presentacions, prenc les notes sobre les mateixes perquè així
em queda tot més clar.
20. En acabar una activitat de la universitat repasso el que he fet per veure si ho he entès i si està bé.
21. No acostumo a elaborar mapes conceptuals per relacionar els conceptes que estudio perquè són de poca
utilitat.
22. En estudiar acostumo a buscar possibles relacions entre el que estudio i les situacions a les que podria
aplicar-se.
23. Quan alguna cosa no m'ha anat molt bé en un treball o examen, demano al professor/a que em doni més
informació sobre com millorar.
24. Abans de posar-me a realitzar una tasca, planifico acuradament el que he de fer.
25. No acostumo a fer gràfics o diagrames mentre estudio o resolc problemes perquè no m'ajuden a
aprendre.
26. Cerco situacions a les quals aplicar els continguts del curs.
27. Intento, sempre que puc, comentar amb els meus companys/es idees o aspectes del que he estat
estudiant per tal d'aprofundir-hi.
28. Llegeixo les instruccions dels exercicis i els exàmens les vegades necessàries per comprendre en
profunditat què es demana.
29. Normalment, si és possible construeixo taules per organitzar la informació continguda en textos i
problemes.
30. En general estudio tractant d'imaginar-me i "visualitzar" les situacions a què fa referència el contingut.
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