Incorporating topic mining into social influence analysis / Ahmed Emad Samy Yossef Ahmed ; Supervised Ehab E. Hassanien , Samhaa R. Elbeltagy
Material type: TextLanguage: English Publication details: Cairo : Ahmed Emad Samy Yossef Ahmed , 2019Description: 78 Leaves : charts ; 30cmOther title:- دمج التنقيب عن المواضيع في اطار تحليل التاثير الاجتماعى [Added title page title]
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Item type | Current library | Home library | Call number | Copy number | Status | Date due | Barcode | |
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Thesis | قاعة الرسائل الجامعية - الدور الاول | المكتبة المركزبة الجديدة - جامعة القاهرة | Cai01.20.04.M.Sc.2019.Ah.I (Browse shelf(Opens below)) | Not for loan | 01010110079613000 | |||
CD - Rom | مخـــزن الرســائل الجـــامعية - البدروم | المكتبة المركزبة الجديدة - جامعة القاهرة | Cai01.20.04.M.Sc.2019.Ah.I (Browse shelf(Opens below)) | 79613.CD | Not for loan | 01020110079613000 |
Thesis (M.Sc.) - Cairo University - Faculty of Computers and Information - Department of Information Systems
Most of the tasks that infer features from text are addressed in a way that either ignores the environment's impact, or narrows the context down, in the best scenario, to capturing long-term semantic dependencies of a sentence, or a review. This work explores the impact of taking the environment within which a tweet is made, on the task of analyzing sentiment orientations of tweets produced by people in the same community. The thesis proposes- as we call it- C-GRU (Context-aware Gated Recurrent Units), which extracts the contextual information (topics) from tweets and incorporates them into finding sentiments conveyed by the tweet. The proposed architecture learns direct co-relations between such information and the (sentiment) predictions. With a multi-modal model, the architecture combines both outputs learnt (from topics and sentences) by learning the contribution weights of the two sub-modals to the predictions. The evaluation of the proposed model which is carried out by applying it to the SemEval-2018 dataset for Arabic multi-label emotion classification, demonstrates that the model outperforms the highest reported performer on the same dataset, with an accuracy of 54.4%. Also, it shows comparable results on the Stanford Sentiment Tree English dataset, and a further Arabic tweets dataset for emotion detection, with accuracies of 46% and 73.4% respectively
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