Andrew Rojecki’s research while affiliated with University of Illinois Chicago and other places

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Publications (25)


Live Free and Die: How Social Media Amplify Populist Vaccine Resistance
  • Article

September 2024

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14 Reads

Social Media + Society

Andrew Rojecki

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Viki Askounis Conner

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Peter Royal

The COVID-19 pandemic led to over one million American deaths, disproportionately suffered by those who resisted vaccination by championing individual autonomy over the collective good. The article takes as its point of departure that vaccine resistance is a recurring phenomenon in U.S. history with multiple origins. Among these are the absence of a consistent approach to public health policy—the combined result of the absence of federal police power—and tensions between the public good and libertarian values. The latest instance of populist resistance was assisted by changes in the information system. Relying on several lines of research, we specify a model of group identification that highlights social media’s role in this latest eruption of opposition. A key element is an attentive public that selectively shares information based on reputational concerns. We test our model by applying frame analysis on a body of data drawn from U.S.-based news content and audience reactions on Facebook.


Socio-Linguistic Characteristics of Coordinated Inauthentic Accounts

May 2024

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11 Reads

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5 Citations

Proceedings of the International AAAI Conference on Web and Social Media

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Ashwin Rao

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Georgios Chochlakis

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[...]

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Online manipulation is a pressing concern for democracies, but the actions and strategies of coordinated inauthentic accounts, which have been used to interfere in elections, are not well understood. We analyze a five million-tweet multilingual dataset related to the 2017 French presidential election, when a major information campaign led by Russia called "#MacronLeaks" took place. We utilize heuristics to identify coordinated inauthentic accounts and detect attitudes, concerns and emotions within their tweets, collectively known as socio-linguistic characteristics. We find that coordinated accounts retweet other coordinated accounts far more than expected by chance, while being exceptionally active just before the second round of voting. Concurrently, socio-linguistic characteristics reveal that coordinated accounts share tweets promoting a candidate at three times the rate of non-coordinated accounts. Coordinated account tactics also varied in time to reflect news events and rounds of voting. Our analysis highlights the utility of socio-linguistic characteristics to inform researchers about tactics of coordinated accounts and how these may feed into online social manipulation.


MOTIV visualization of moral framing on social media in 2020. (a) Summarization panel showing tweet feature such as sentiment and tweets for or against the topic. (b) Model building view showing inference scores for county votes within each county versus tweets expressing Loyalty, derived from a generalized linear model. (c) Timeline of tweets, along with retweet count, COVID‐19 cases and sentiment (lower bar). Counties from LA are shown in bold. (d) Glyph‐based map of counties showing 2016 voting history (colour), voting age population (width) and tweets (height). LA and Chicago stand out as wide glyphs while several smaller counties with disproportionately high tweets with negative stance stand out as downward facing spikes.
Workflows: (WF 0) Data foraging, where data are iteratively collected and analysed to identify the quality of coverage and interesting features. (WF 1) Hypothesis generation, where moral frames are analysed to identify interesting findings. A summary view is used to identify interesting frames which are filtered and assessed in more detail. (WF 2) Hypothesis testing, where observations in (WF 1) are confirmed by drill‐down or correlation testing. Insights are used to guide future investigations in (WF 1).
Data abstraction. Tweets are labelled with textual features, and augmented with county‐level data using the timestamp and geolocation data. Tweets are aggregated by MF and county for summarization. Generalized Regression Models model county demographics and aggregated tweet statistics to generate partial dependence plots in the inference views. County FIPS code is used to link all sections of the interface during brushing.
Outline of the timeline encoding. (Left) Timeline over a period of 10 time bins. Individual tiles encode tweets within the time bin. Tile height and position encode retweets and stance while colour encodes a secondary variable. (Right) 4‐tweet example encoding for a single time bin, annotated with the date in mm/dd format (05/04). A square tile in the bottom timeline shows the tweet date where colour encodes sentiment score across all tweets for that date.
County map glyph: width encodes population, while the upper and lower radius encode tweets for and against the topic of interest that express a certain Moral Frame. Colour encodes a user‐defined variable, which is voting history in the example.

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MOTIV: Visual Exploration of Moral Framing in Social Media
  • Article
  • Full-text available

March 2024

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23 Reads

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1 Citation

We present a visual computing framework for analysing moral rhetoric on social media around controversial topics. Using Moral Foundation Theory, we propose a methodology for deconstructing and visualizing the when, where and who behind each of these moral dimensions as expressed in microblog data. We characterize the design of this framework, developed in collaboration with experts from language processing, communications and causal inference. Our approach integrates microblog data with multiple sources of geospatial and temporal data, and leverages unsupervised machine learning (generalized additive models) to support collaborative hypothesis discovery and testing. We implement this approach in a system named MOTIV. We illustrate this approach on two problems, one related to Stay‐at‐home policies during the COVID‐19 pandemic, and the other related to the Black Lives Matter movement. Through detailed case studies and discussions with collaborators, we identify several insights discovered regarding the different drivers of moral sentiment in social media. Our results indicate that this visual approach supports rapid, collaborative hypothesis testing, and can help give insights into the underlying moral values behind controversial political issues. Supplemental Material: https://osf.io/ygkzn/?view_only=6310c0886938415391d977b8aae8b749

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Figure 3: Examples of the progression of map design through the design process. (Top-left) Choropleth map using texture weaving [18] to encode two features. (Top-right) Choropleth map with a single color and glyphs showing tweet distribution. (Bottom-left) Choropleth map using textures and glyphs. Areas are aggregated by the intersection of district voting maps and counties for demographic data to make each section more evenly distributed in terms of population. Glyphs show tweets aggregated at the county level. (Bottom-right) Glyph-based map where shape encodes tweet features and color encodes demographics. All maps are zoomable
A Lens to Pandemic Stay at Home Attitudes

August 2023

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41 Reads

We describe the design process and the challenges we met during a rapid multi-disciplinary pandemic project related to stay-at-home orders and social media moral frames. Unlike our typical design experience, we had to handle a steeper learning curve, emerging and continually changing datasets, as well as under-specified design requirements, persistent low visual literacy, and an extremely fast turnaround for new data ingestion, prototyping, testing and deployment. We describe the lessons learned through this experience.


Socio-Linguistic Characteristics of Coordinated Inauthentic Accounts

May 2023

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63 Reads

Online manipulation is a pressing concern for democracies, but the actions and strategies of coordinated inauthentic accounts, which have been used to interfere in elections, are not well understood. We analyze a five million-tweet multilingual dataset related to the 2017 French presidential election, when a major information campaign led by Russia called "#MacronLeaks" took place. We utilize heuristics to identify coordinated inauthentic accounts and detect attitudes, concerns and emotions within their tweets, collectively known as socio-linguistic characteristics. We find that coordinated accounts retweet other coordinated accounts far more than expected by chance, while being exceptionally active just before the second round of voting. Concurrently, socio-linguistic characteristics reveal that coordinated accounts share tweets promoting a candidate at three times the rate of non-coordinated accounts. Coordinated account tactics also varied in time to reflect news events and rounds of voting. Our analysis highlights the utility of socio-linguistic characteristics to inform researchers about tactics of coordinated accounts and how these may feed into online social manipulation.



Fig. 3: Ordering of frames by popularity over time based on tweets that contain them, colored by daily average sentiment. discussed or implemented in several nations. This included the end of India's first national lockdown, announced on June 1st. One viral tweet (387 retweets) from Mumbai pleaded "Dear Mumbaikars, The worst is NOT over. Please stop acting like it has and please stay home as much as you can.#StaySafe." A spike in activity may also be attributed to a suspected rise in cases during Memorial day and the international George Floyd protests, with one popular tweet from California saying "This is starting to make the rounds. Don't be fooled. COVID takes 1-2 weeks." The latest spike is from those Memorial Day dopes. Keep fighting! Stay safe & if you're immunocompromised or feeling ill STAY HOME! There are lots of ways to show your support!." The most popular tweet during this time, with 17, 198 retweets, echoed a similar sentiment with a new report on COVID-related deaths: "A least 6,000 people have died from COVID-19 in June in the U.S. as the pandemic continues to rage. We remind everyone to please continue social distancing, mask-wearing, and safe practices. Check up on your elders and self-quarantine. It is only going to get worse from here on." A small peak in anti-SAH tweets on June 9 th can be seen in Fig. 2, which appears to be in response to a study by the World Health Organization, with one tweet with 663 retweets from New York saying "Now the research from WHO is showing that the risk of asymptomatic people transmitting
Understanding Stay-at-home Attitudes through Framing Analysis of Tweets

September 2022

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67 Reads

With the onset of the COVID-19 pandemic, a number of public policy measures have been developed to curb the spread of the virus. However, little is known about the attitudes towards stay-at-home orders expressed on social media despite the fact that social media are central platforms for expressing and debating personal attitudes. To address this gap, we analyze the prevalence and framing of attitudes towards stay-at-home policies, as expressed on Twitter in the early months of the pandemic. We focus on three aspects of tweets: whether they contain an attitude towards stay-at-home measures, whether the attitude was for or against, and the moral justification for the attitude, if any. We collect and annotate a dataset of stay-at-home tweets and create classifiers that enable large-scale analysis of the relationship between moral frames and stay-at-home attitudes and their temporal evolution. Our findings suggest that frames of care are correlated with a supportive stance, whereas freedom and oppression signify an attitude against stay-at-home directives. There was widespread support for stay-at-home orders in the early weeks of lockdowns, followed by increased resistance toward the end of May and the beginning of June 2020. The resistance was associated with moral judgment that mapped to political divisions.




Citations (13)


... Third, the resultant network may be reweighted or pruned to emphasize particularly suspicious similarities or de-emphasize particularly common links. Examples include iterative pruning of low-weight edges [27,29,31,32] or iterative pruning of non-central nodes [21,31]. Finally, some sort of clustering or community-detection algorithm is applied to this network, along with a criteria for a community or cluster to be characterized as coordinated. ...

Reference:

Unsupervised detection of coordinated information operations in the wild
Socio-Linguistic Characteristics of Coordinated Inauthentic Accounts
  • Citing Article
  • May 2024

Proceedings of the International AAAI Conference on Web and Social Media

... Our backgrounds include infectious disease modeling (2), data science (1), and data visualization research (5), with 1 to 25+ years of professional experience. We worked on a range of COVID-19 related projects, nine located in the European Union (four in Germany, four in Luxembourg, one in Austria), one in Scotland, U.K., and one in the USA. ...

MOTIV: Visual Exploration of Moral Framing in Social Media

... Classification is usually suitable for media text analysis [90]. For example, researchers could use automatic content analysis to classify media text to test framing theory [91]. Regression, on the other hand, is often applicable to survey data [92]. ...

Understanding Stay-at-home Attitudes through Framing Analysis of Tweets
  • Citing Conference Paper
  • October 2022

... We propose a unified taxonomy for the media bias domain to mitigate ambiguity around its various concepts and names in prior work. In addition, we classify and summarize computer science contributions to media bias detection in six categories 5 : (1) traditional natural language processing (tNLP) methods [304], (2) simple non-neural ML techniques [370], (3) transformer-based (tbML) [372] and (4) non-transformer-based (ntbML) [138] machine learning. We also include (5) non-neural network (nNN)-based (Sect. ...

Detecting and understanding moral biases in news
  • Citing Conference Paper
  • January 2020

... Ultimately, for Trump and his supporters, the United States had developed into a weak and insecure state, and its citizens were shunned by both international and domestic elites. Trump's campaign rhetoric created a sense of crisis about America's place in the world by emphasizing a host of security threats ranging from economic to existential insecurity and that justified a radical transformation of policies in order to "Make America Great Again" (da Vinha, 2017; Inglehart & Norris, 2017;Rojecki, 2016). ...

Trumpism and the American Politics of Insecurity
  • Citing Article
  • October 2016

The Washington Quarterly

... The need of cross-national comparative studies in SNSs and political participation research. Investigations examining the contributions of digital technologies to political participation tend to attribute a positive connotation to this phenomenon(a), and be grounded, as Moy et al. (2012) observe, in the assumption and normative position that political participation is beneficial to both citizens and democratic institutions. Such a stance is shared by the authors of the present paper, and is supported by several influential political scientists such as Barber (1984), Evans (2001), andFischer (2003) who, for instance, regards citizens' participation as 'the cornerstone of the democratic political process' (Fischer, 2003, p. 205). ...

Shifting Contours in Political Communication Research
  • Citing Article
  • January 2012

International Journal of Communication

... However, networked communication structures have been also associated with problematic developments: social media has been linked to processes of ideological and affective polarization through mechanisms of selective exposure to like-minded media (Kubin & von Sikorski, 2021). Networked communication structures have also been linked with the spread of misinformation and conspiracy theories (Rojecki & Meraz, 2016) that undermine the capacity of citizens to agree on basic facts, let alone achieve higher levels of deliberative quality. Yet whether networked communication is viewed as a source of citizen agency or a threat to cohesive political communities, a common thread is that greater attention must be paid to citizen conversations and interactions (both face-to-face and in person) in also acting as a driver of news, rather than just mediating its reception (Shah et al., 2017). ...

Rumors and factitious informational blends: The role of the web in speculative politics

... We find that print media coverage of Harvey often referenced disasters like Hurricanes Ike and Katrina to provide a comparison and a broader context for understanding issues such as flood insurance program. This is in contrast to other studies (i.e., Miller and Goidel 2009;Rojecki 2009;Harbert 2010) that argue that news reporting tends to be eventfocused or episodic. We identified three reasons of those contrast. ...

Political culture and disaster response: The Great Floods of 1927 and 2005
  • Citing Article
  • November 2009

Media Culture & Society

... For example, Black/African American and Latinx pregnant people in the United States could encounter stereotype threat if they perceive a risk in fulfilling the stereotype of becoming a person of color with "too many" children. This stereotype may be especially relevant for low-income or unpartnered Black/African American or Latinx people, who face additional stereotypes about being single parents of color or accessing public assistance programs (Rojecki, 2007). Pregnancy-related stereotype threat may also be present for both young and older pregnant people. ...

The Politics of Disgust: The Public Identity of the Welfare Queen – Ange-Marie Hancock
  • Citing Article
  • February 2007

Political Psychology

... En esta pugna, la edición de publicaciones periódicas ha sido una de las estrategias más significativas. Si bien existen varias obras sobre el tratamiento del movimiento por la paz por parte de la prensa convencional (Cooper, 2002; Couldry y Downey, 2004) y sobre las estrategias del movimiento para aparecer en los periódicos (Coy y Woehrle, 1996;Levin, 2005), las publicaciones periódicas editadas por organizaciones o colectivos enmarcados en el movimiento por la paz apenas han sido estudiadas. Burns (1991) ofrece un listado comentado de prensa sobre la paz, el desarme y el control de armas en Estados Unidos. ...

Framing Peace Policies: The Competition for Resonant Themes
  • Citing Article
  • February 2005