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Auteurs principaux: Naseriparsa, Mehdi, Sukunesan, Suku, Cai, Zhen, Alfarraj, Osama, Tolba, Amr, Rabooki, Saba Fathi, Xia, Feng
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2501.14785
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author Naseriparsa, Mehdi
Sukunesan, Suku
Cai, Zhen
Alfarraj, Osama
Tolba, Amr
Rabooki, Saba Fathi
Xia, Feng
author_facet Naseriparsa, Mehdi
Sukunesan, Suku
Cai, Zhen
Alfarraj, Osama
Tolba, Amr
Rabooki, Saba Fathi
Xia, Feng
contents Eating disorders (ED) are critical psychiatric problems that have alarmed the mental health community. Mental health professionals are increasingly recognizing the utility of data derived from social media platforms such as Twitter. However, high dimensionality and extensive feature sets of Twitter data present remarkable challenges for ED classification. To overcome these hurdles, we introduce a novel method, an informed branch and bound search technique known as ED-Filter. This strategy significantly improves the drawbacks of conventional feature selection algorithms such as filters and wrappers. ED-Filter iteratively identifies an optimal set of promising features that maximize the eating disorder classification accuracy. In order to adapt to the dynamic nature of Twitter ED data, we enhance the ED-Filter with a hybrid greedy-based deep learning algorithm. This algorithm swiftly identifies sub-optimal features to accommodate the ever-evolving data landscape. Experimental results on Twitter eating disorder data affirm the effectiveness and efficiency of ED-Filter. The method demonstrates significant improvements in classification accuracy and proves its value in eating disorder detection on social media platforms.
format Preprint
id arxiv_https___arxiv_org_abs_2501_14785
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ED-Filter: Dynamic Feature Filtering for Eating Disorder Classification
Naseriparsa, Mehdi
Sukunesan, Suku
Cai, Zhen
Alfarraj, Osama
Tolba, Amr
Rabooki, Saba Fathi
Xia, Feng
Machine Learning
Artificial Intelligence
Social and Information Networks
Eating disorders (ED) are critical psychiatric problems that have alarmed the mental health community. Mental health professionals are increasingly recognizing the utility of data derived from social media platforms such as Twitter. However, high dimensionality and extensive feature sets of Twitter data present remarkable challenges for ED classification. To overcome these hurdles, we introduce a novel method, an informed branch and bound search technique known as ED-Filter. This strategy significantly improves the drawbacks of conventional feature selection algorithms such as filters and wrappers. ED-Filter iteratively identifies an optimal set of promising features that maximize the eating disorder classification accuracy. In order to adapt to the dynamic nature of Twitter ED data, we enhance the ED-Filter with a hybrid greedy-based deep learning algorithm. This algorithm swiftly identifies sub-optimal features to accommodate the ever-evolving data landscape. Experimental results on Twitter eating disorder data affirm the effectiveness and efficiency of ED-Filter. The method demonstrates significant improvements in classification accuracy and proves its value in eating disorder detection on social media platforms.
title ED-Filter: Dynamic Feature Filtering for Eating Disorder Classification
topic Machine Learning
Artificial Intelligence
Social and Information Networks
url https://arxiv.org/abs/2501.14785