Iti Mathur’s research while affiliated with Banasthali University and other places

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Publications (82)


An improved context-aware analysis for sentimental Grass Hopper Optimization algorithm and its post affects on Twitter
  • Article

April 2023

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26 Reads

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1 Citation

Journal of Intelligent & Fuzzy Systems

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Pooja Gupta

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Iti Mathur

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Social media platforms, namely Instagram, Facebook, Twitter, YouTube, etc. have gained a lot of attention as users used to share their views, and post videos, audio, and pictures for social networking. In near future, understanding the meaning and analyzing this enormously rising volume and size of online data will become a necessity in order to extract valuable information from them. In a similar context, the paper proposes an analysis model in two phases namely the training and the sentiment classification using the reward-based grasshopper optimization algorithm. The training architecture and context analysis of the tweet are presented for the sentiment analysis along with the ground truth processing of emotions. The proposed algorithm is divided into two phases namely the exploitation and the exploration part and creates a reward mechanism that utilizes both phases. The proposed algorithm also uses cosine similarity, dice coefficient, and euclidean distance as the input set and further processes using the grasshopper algorithm. Finally, it presents a combination of swarm intelligence and machine learning for attribute selection in which the reward mechanism is further validated using machine learning techniques. The comparative performance in terms of precision, recall, and F-measure has been measured for the proposed model in comparison to existing swarm-based sentiment analysis works. Overall, simulation analysis showed that the proposed work based on grasshopper optimization outperformed the existing approaches for Sentiment 140 by 5.93% to 10.05% SemEval 2013 by 6.15% to 12.61% and COVID-19 tweets by 2.72% to 9.13% . Thus, demonstrating the efficiency of the context-aware sentiment analysis using the grasshopper optimization approach.


Comparative Analysis on Ontology-Based Contextual Senses Approaches for Search Engine

January 2023

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24 Reads

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1 Citation

Computers and the Internet have changed how we live our lives in ways that are often difficult to grasp, therefore it is extremely helpful to utilise computers and the Internet for the purposes of making computers and the Internet easier to use. An ontology-based search engine will assist in more accurate searches by utilising artificial intelligence to improve natural language processing and analysing keywords to more precisely target data (NLP). A general evaluation of some of the existing search engine design methodologies was introduced in this document, including with some information about the difficult areas of development. Text analysis with artificial intelligence NLP techniques could be used to build an engine that generates intelligent responses based on user requests. This research is all about intelligent ontology-based semantic search engines and evaluating their research in terms of creating methodologies. Furthermore, elements of artificial intelligence technology that are increasingly difficult to deal with, including such deep learning and machine learning, are investigated to influence development of search engines. These publications demonstrate considerable progress in the decade-long drive towards AI-infused ontology-driven search engine via use of ontologies.KeywordsContextSearch engineOntologyText miningInformation retrievalArtificial intelligence


An ontological architecture for context data retrieval and ranking using SVM and DNN

January 2023

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14 Reads

Journal of Information and Optimization Sciences

Context retrieval and ranking have always been an area of interest for researchers around the world. The ranking provides significance to the data that has to be presented in front of users but it also consumes time if the ranking architecture is not organized. The retrieval is dependent upon the co-relation among the data attributes that are supplied against a class label also referred to as ground truth and the ranking depends upon the sensing polarity that indicates the hold of the outcome towards asked information. This paper illustrates an ontological architecture that involves two phases namely context retrieval and ranking. The ranking phase is composed of three different algorithm architectures namely k-means, Support Vector Machines (SVM), and Deep Neural Networks (DNN). The DNN is tuned to fit and work as per the availability of a total number of samples. The proposed work has been evaluated for both quantitative and qualitative parameters in different sets and scenarios. The proposed work has also been compared with other state of art techniques and is illustrated in the paper itself.


A Novel Similarity Measure for Context-Based Search Engine

September 2022

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39 Reads

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2 Citations

Analyzing the multiple relevant documents returned in reply to an end-user request by an information retrieval system is challenging. It is very time-consuming and less efficient to find analogous web pages without applying the clustering. Clustering of web pages arranges a large number of web documents into relevant small clustered groups. In this paper, a novel similitude degree computation technique is proposed to provide the web documents related to the context in which multiple related web documents are the members of the same cluster. The clustering module results in web documents’ arrangement with their associated topic and corresponding computed similitude or similarity score. This provides the user clusters containing equivalent web documents related to the issue of desire. This context-based grouping of web documents reduces the time taken for searching relevant data and improves the results in response to a user request. Moreover, the comparison and analysis of the proposed technique are done with different existing similarity measures on the basis of performance metrics purity and entropy. It has shown the proposed scheme provides better results to the user.


Journal of Intelligent & Fuzzy Systems xx (20xx) x-xx
  • Article
  • Full-text available

June 2022

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184 Reads

Journal of Intelligent & Fuzzy Systems

This paper aims to select the appropriate node(s) to effectively destabilize the terrorist network in order to reduce the terrorist group's effectiveness. Considerations are introduced in this literature as fuzzy soft sets. Using the weighted average combination rule and the D-S theory of evidence, we created an algorithm to determine which node(s) should be isolated from the network in order to destabilize the terrorist network. The paper may also prove that if its power and foot soldiers simultaneously decrease, terrorist groups will collapse. This paper also proposes using entropy-based centrality, vote rank centrality, and resilience centrality to neutralize the network effectively. The terrorist network considered for this study is a network of the 26/11 Mumbai attack created by Sarita Azad.

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A fuzzy soft set based novel method to destabilize the terrorist network

May 2022

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46 Reads

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4 Citations

Journal of Intelligent & Fuzzy Systems

This paper aims to select the appropriate node(s) to effectively destabilize the terrorist network in order to reduce the terrorist group’s effectiveness. Considerations are introduced in this literature as fuzzy soft sets. Using the weighted average combination rule and the D–S theory of evidence, we created an algorithm to determine which node(s) should be isolated from the network in order to destabilize the terrorist network. The paper may also prove that if its power and foot soldiers simultaneously decrease, terrorist groups will collapse. This paper also proposes using entropy-based centrality, vote rank centrality, and resilience centrality to neutralize the network effectively. The terrorist network considered for this study is a network of the 26/11 Mumbai attack created by Sarita Azad.


An approach to forecast pollutants concentration with varied dispersion

May 2021

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32 Reads

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12 Citations

International journal of Environmental Science and Technology

Globally, the rising level of air pollution is becoming a cause of serious concern. The situation has reached such an alarming situation that knowing the extent of air pollution well in advance has become an absolute necessity before we step out of our home. An advance prediction can help the urban travellers to know the possibility of enhanced pollution ahead of time at strategic locations of a city and thereby be useful in planning a less polluted route. Different cities of the world have pollutants levels with varied dispersion pattern. As a result, a generic prediction model is needed that can cater to all types of pollutants and which can offer better forecasts of pollution data irrespective of their dispersion levels. In this paper, the authors modelled recurrent neural network (RNN)-based bidirectional long short-term memory (Bi-LSTM) that forecasts pollutants concentration with least RMSE. The model is trained and tested on the pollution data of Delhi, the most polluted capital city in the world for the second consecutive year in 2019. Air pollutants like PM10, PM2.5, NO2, O3, and CO are considered that have a varied dispersion pattern. To test the efficacy of our predictions, the model is tested on real data obtained from the Central Pollution Control Board (CPCB) of India. The performance metrics are also generated to evaluate the performance of the proposed model.


Hybrid Model with Word2vector in Information Retrieval Ranking

January 2021

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53 Reads

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3 Citations

People have realized the importance of finding and archiving information with the computer advents for thousands of years, and storing of large amount of information became possible. It is actually not related to the fetching of the documents, it informs the user on the whereabouts and existence of the documents. In this paper, hybrid model has been used in which the document is classified using the support vector machine (SVM) classifier, and after the condition is applied, if it is satisfied, the extraction of the matched paragraph and the sentence is responsible for the generation of relevant answer. The knowledge base gets updated if condition does not match, and new updated answer will be generated. Finally, the best answer is displayed after ranking by using the PSO optimization. Word2vector is applied for feature extraction. In this paper, comparison of RankSVM, RankPSO and RankHSVM + PSO for the implementation of IR ranking is considered. Here, first SVM is used as a classifier for dividing most relevant and non-relevant results, and afterward PSO is used for the optimization of the result means extraction of the best answer or document. Selection of appropriate parameters is difficult in case of simple SVM, but for the ranking of the answers it gives potential solutions. PSO is used for optimization which has global search capability and is easy to implement and thus to optimize the ranking of document retrieval. We propose the RankHSVM + PSO model to find the fitness function. This technique improves the performance of the system as comparative to other techniques. The result shows that the algorithm applied here improves the value of performance evaluation by 4–5%. TREC 2004 QA DATA dataset is used which contains my datasets. It has a question answering track since 1999. The task was defined in each track. Retrieval of true equivalent test collection for standard retrieval is an open problem. In a retrieval test collection, the unit that is judged the document has a unique identifier.


Proposed model. a Circuit diagram. b Hardware setup
PM2.5 as measured by proposed pollution measurement kit in real time
System overview of urban route planning
Coalescing IoT and Wi-Fi technologies for an optimized approach in urban route planning

September 2020

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43 Reads

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9 Citations

Environmental Science and Pollution Research

The quality of air that we breathe is one of the more serious environmental challenges that the government faces all around the world. It is a matter of concern for almost all developed and developing countries. The National Air Quality Index (NAQI) in India was first initiated and unveiled by the central government under the Swachh Bharat Abhiyan (Clean India Campaign). It was launched to spread cleanliness, and awareness to work towards a clean and healthy environment among all citizens living in India. This index is computed based on values obtained by monitoring eight types of pollutants that are known to commonly permeate around our immediate environment. These are particulate matter PM10; particulate matter PM2.5; nitrogen dioxide; sulfur dioxide; carbon monoxide; lead; ammonia; and ozone. Studies conducted have shown that almost 90% of particulate matters are produced from vehicular emissions, dust, debris on roads, and industries and from construction sites spanning across rural, semi-urban, and urban areas. While the State and Central governments have devised and implemented several schemes to keep air pollution levels under control, these alone have proved inadequate in cases such as the Delhi region of India. Internet of Things (IoT) offers a range of options that do extends into the domain of environmental management. Using an online monitoring system based on IoT technologies, users can stay informed on fluctuating levels of air pollution. In this paper, the design of a low-price pollution measurement kit working around a dust sensor, capable of transmitting data to a cloud service through a Wi-Fi module, is described. A system overview of urban route planning is also proposed. The proposed model can make users aware of pollutant concentrations at any point of time and can also act as useful input towards the design of the least polluted path prediction app. Hence, the proposed model can help travelers to plan a less polluted route in urban areas.


Journal of Intelligent & Fuzzy Systems xx (20xx) x-xx

July 2020

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550 Reads

Analysis of the terrorist network is a process to analyze or deriving Useful information from the available network data. Ranking The Terrorist nodes within a terrorist network in identifying the most influential node is essential for the elaboration of Covert network mining. The purpose of this paper is to implement an approach of two dimensional criteria weight determination along with logarithmic concept implementation for vital node investigation in term of their influential ability. Betweenness, Closeness, Eigenvector, Hub, In-degree, Inverse closeness, Out-degree and Total degree considered as criteria and terrorist involved in 9/11 terrorist attack considered as alternatives used to formulate a decision problem. Although an integrated approach of Fuzzy based subjective-Aggregation concept based objective criteria weight determination and Ranking alternatives by the implementation of the logarithmic concept is used to solve multi criteria decision problems in order to show the application of most centralized node identification process which can be obtained easily by classification and selection problem solution using multiple criteria and alternatives. 6 7 8 9 10 11 12 13 14 15


Citations (67)


... They compared the classification approaches of SA and also presented the applications of SA and challenges observed while doing research. Mudgil et al. [6] proposed an analysis model using the grasshopper optimization algorithm (GHO). They combined swarm intelligence (SI) and machine learning (ML) by introducing a reward mechanism (GHO) based on SI and validating it using ML techniques. ...

Reference:

Optimization of opinion mining classification techniques using dragonfly algorithm
An improved context-aware analysis for sentimental Grass Hopper Optimization algorithm and its post affects on Twitter
  • Citing Article
  • April 2023

Journal of Intelligent & Fuzzy Systems

... As an alternative to the distance-based similarity measure, the context similarity coefficient (CSC) is proposed as a similarity measure metric to further improve the clustering accuracy of the m-APC algorithm. In contrast to the distance-based similarity measure, which relies on closeness, the CSC considers the behavior of each RSS measurement in a fingerprint during clustering [26], [27]. ...

A Novel Similarity Measure for Context-Based Search Engine
  • Citing Chapter
  • September 2022

... Kramosil and Michálek [2] presented the conception of a fuzzy metric space in 1975, which was updated by George and Veeramani [3] in an attempt to generate a Hausdorf topology for a particular category of fuzzy metric spaces. Furthermore, many researchers explored fuzzy metric spaces, their applications, and their related scopes in [4][5][6][7][8][9][10][11][12][13][14][15][16][17]. ...

A fuzzy soft set based novel method to destabilize the terrorist network
  • Citing Article
  • May 2022

Journal of Intelligent & Fuzzy Systems

... Deep et al. [155] introduced a bidirectional LSTM model based on recurrent neural networks, which accurately predicts the concentration of pollutants (PM, O 3 , NO 2 , and CO) with least RMSE. The model is trained and evaluated using Delhi's pollution data, taking into account air pollutants with diverse dispersion patterns. ...

An approach to forecast pollutants concentration with varied dispersion
  • Citing Article
  • May 2021

International journal of Environmental Science and Technology

... Formal concept analysis (FCA) studies how to extract knowledge from a formal context and has been applied to many areas of data since a formal context is capable to represent any kinds of data. Some research has been conducted to extract knowledge from any data which is formulated in a formal context (Moulahi, 2021;Xu et al., 2019;Marín et al., 2021;Gély et al., 2022;Yan & Li, 2022;Zou et al., 2020;Janostik & Konecny, 2020;Atencia et al., 2020;Kötters & Eklund, 2020;Rocco, Hernandez-Perdomo & Mun, 2020;Kumar Mishra, Joshi & Mathur, 2020;Albahli & Melton, 2016). Therefore, formal concept analysis has been considered to be a method in knowledge discovery (Kumar, 2011). ...

An efficient concept generation approach to identifying most influential node in a Terrorist Network using Weighted Formal Concept Analysis
  • Citing Article
  • January 2020

Materials Today Proceedings

... It has a gigantic potential to revolutionize the way we live and work. It has varying applications that could completely transform the way we carry out activities [1][2][3][4]. Using the power of IoT, we've sought to tackle a crucial problem in monitoring water quality. ...

Coalescing IoT and Wi-Fi technologies for an optimized approach in urban route planning

Environmental Science and Pollution Research

... This work has demonstrated the potential of multi-objective evolutionary optimization in higher-order community detection of directed networks. Diverse and high-quality higherorder directed partitions can provide more realistic community information for deeper network applications, such as motifbased link prediction [52], key node mining [53], and brain network analysis [54]. In future research, we will focus on more types of special networks (e.g., attribute networks), and further explore the higher-order multi-objective community detection that integrates higher-order topology with specific network features (e.g., user attributes). ...

A fuzzy based integrated model for identification of vital node in terrorist network using logarithmic concept
  • Citing Article
  • February 2020

Journal of Intelligent & Fuzzy Systems

... They showed how negative sentences can be handled using NLP approaches. Shree et al. [48] showed how there is difference between Hindi and English languages what problems the current state of the art MT system face while translating text. Ahmed et al. [49] showed how MT system can be developed by using an intermediate language which is related to both the languages. ...

Impact of Related Languages as Pivot Language on Machine Translation

... Shree et al. [48] showed how there is difference between Hindi and English languages what problems the current state of the art MT system face while translating text. Ahmed et al. [49] showed how MT system can be developed by using an intermediate language which is related to both the languages. They developed a Arabic-Hindi MT system using Urdu as the intermediate language. ...

Implications of English as a Pivot Language in Arabic-Hindi Machine Translation

International Journal of Recent Technology and Engineering (IJRTE)