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Main Authors: Igali, Ayan, Abdrakhman, Abdulkhak, Torekhan, Yerdaut, Shamoi, Pakizar
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.01838
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author Igali, Ayan
Abdrakhman, Abdulkhak
Torekhan, Yerdaut
Shamoi, Pakizar
author_facet Igali, Ayan
Abdrakhman, Abdulkhak
Torekhan, Yerdaut
Shamoi, Pakizar
contents Computer-mediated communication has become more important than face-to-face communication in many contexts. Tracking emotional dynamics in chat conversations can enhance communication, improve services, and support well-being in various contexts. This paper explores a hybrid approach to tracking emotional dynamics in chat conversations by combining DistilBERT-based text emotion detection and emoji sentiment analysis. A Twitter dataset was analyzed using various machine learning algorithms, including SVM, Random Forest, and AdaBoost. We contrasted their performance with DistilBERT. Results reveal DistilBERT's superior performance in emotion recognition. Our approach accounts for emotive expressions conveyed through emojis to better understand participants' emotions during chats. We demonstrate how this approach can effectively capture and analyze emotional shifts in real-time conversations. Our findings show that integrating text and emoji analysis is an effective way of tracking chat emotion, with possible applications in customer service, work chats, and social media interactions.
format Preprint
id arxiv_https___arxiv_org_abs_2408_01838
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Tracking Emotional Dynamics in Chat Conversations: A Hybrid Approach using DistilBERT and Emoji Sentiment Analysis
Igali, Ayan
Abdrakhman, Abdulkhak
Torekhan, Yerdaut
Shamoi, Pakizar
Computation and Language
Computer-mediated communication has become more important than face-to-face communication in many contexts. Tracking emotional dynamics in chat conversations can enhance communication, improve services, and support well-being in various contexts. This paper explores a hybrid approach to tracking emotional dynamics in chat conversations by combining DistilBERT-based text emotion detection and emoji sentiment analysis. A Twitter dataset was analyzed using various machine learning algorithms, including SVM, Random Forest, and AdaBoost. We contrasted their performance with DistilBERT. Results reveal DistilBERT's superior performance in emotion recognition. Our approach accounts for emotive expressions conveyed through emojis to better understand participants' emotions during chats. We demonstrate how this approach can effectively capture and analyze emotional shifts in real-time conversations. Our findings show that integrating text and emoji analysis is an effective way of tracking chat emotion, with possible applications in customer service, work chats, and social media interactions.
title Tracking Emotional Dynamics in Chat Conversations: A Hybrid Approach using DistilBERT and Emoji Sentiment Analysis
topic Computation and Language
url https://arxiv.org/abs/2408.01838