Litcius/Paper detail

A Deep Learning–based Approach for Emotions Classification in Big Corpus of Imbalanced Tweets

Nasir Jamal, Chen Xianqiao, Fadi Al‐Turjman, Farhan Ullah

2021ACM Transactions on Asian and Low-Resource Language Information Processing19 citationsDOI

Abstract

Emotions detection in natural languages is very effective in analyzing the user's mood about a concerned product, news, topic, and so on. However, it is really a challenging task to extract important features from a burst of raw social text, as emotions are subjective with limited fuzzy boundaries. These subjective features can be conveyed in various perceptions and terminologies. In this article, we proposed an IoT-based framework for emotions classification of tweets using a hybrid approach of Term Frequency Inverse Document Frequency (TFIDF) and deep learning model. First, the raw tweets are filtered using the tokenization method for capturing useful features without noisy information. Second, the TFIDF statistical technique is applied to estimate the importance of features locally as well as globally. Third, the Adaptive Synthetic (ADASYN) class balancing technique is applied to solve the imbalance class issue among different classes of emotions. Finally, a deep learning model is designed to predict the emotions with dynamic epoch curves. The proposed methodology is analyzed on two different Twitter emotions datasets. The dynamic epoch curves are shown to show the behavior of test and train data points. It is proved that this methodology outperformed the popular state-of-the-art methods.

Topics & Concepts

tf–idfComputer scienceArtificial intelligenceSentiment analysisLexical analysisClass (philosophy)Machine learningBig dataRaw dataTask (project management)Natural language processingDeep learningTerm (time)Data miningPhysicsManagementQuantum mechanicsEconomicsProgramming languageSentiment Analysis and Opinion MiningSpam and Phishing DetectionText and Document Classification Technologies