Author:
Ab. Nasir Ahmad Fakhri,Seok Nee Eng,Sern Choong Chun,Shahrizan Abdul Ghani Ahmad,Abdul Majeed Anwar P. P.,Adam Asrul,Furqan Mhd.
Abstract
Abstract
Text-based input becomes a common channel for humans in sharing their opinions/emotions to the product or service through online social media, shopping platform etc. Humans are easy to make errors in interpreting emotions, especially the emotion that derived from text based. The main aim of this study is to develop text-based emotion recognition and prediction system. Several market challenges facing in the advancement of emotion analysis with accuracy being the main issue. Therefore, four supervised machine learning classification algorithms such as Multinomial Naïve Bayes, Support Vector Machine, Decision Trees, and k-Nearest Neighbors were investigated. The model was developed based on Ekman’s six basic emotions which are anger, fear, disgust, joy, guilt and sadness. Data pre-processing techniques such as stemming, stop-words, digits and punctuation marks removal, spelling correction, and tokenization were implemented. A benchmark of ISEAR (International Survey on Emotion Antecedents and Reactions) dataset was used to test all models. Multinomial Naïve Bayes classifier resulted the best performance with an average accuracy of 64.08%. Finally, the best model was integrated to graphical user interface using Python Tkinter library to complete the whole system development. Besides, the detailed performance of the best model such as tf-idf and count vectorizer, confusion matrix, precision-recall rate, as well as ROC (Receiver Operating Characteristic) score were also discussed. Text-based emotion prediction system to interpret and understand human emotions was successfully developed.
Reference29 articles.
1. Multimodal approaches for emotion recognition: a survey;Sebe,2005
2. Affective computing: challenges;Picard;Int. J. Hum.- Comput. Stud.,2003
3. Emotion detection in suicide notes;Desmet;Expert Systems with Applications,2013
4. Feature based Summarization of Customers’ Reviews of Online Products;Bafna;Procedia Computer Science,2013
5. Are They Different? Affect, Feeling, Emotion, Sentiment, and Opinion Detection in Text;Munezero;IEEE Transactions on Affective Computing,2014
Cited by
21 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献