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Sarcasm Detection Using Deep Learning With Contextual Features

Md Saifullah Razali, Alfian Abdul Halin, Lei Ye, Shyamala Doraisamy, Noris Mohd Norowi

2021IEEE Access88 citationsDOIOpen Access PDF

Abstract

Our work focuses on detecting sarcasm in tweets using deep learning extracted features combined with contextual handcrafted features. A feature set is extracted from a Convolutional Neural Network (CNN) architecture before it is combined with carefully handcrafted feature sets. These handcrafted feature sets are created based on their respective contextual explanations. Each feature sets are specifically designed for the sole task of sarcasm detection. The objective is to find the most optimal features. Some sets are good to go even when it is used in independence. Other sets are not really significant without any combination. The results of the experiments are positive in terms of Accuracy, Precision, Recall and F1-measure. The combination of features are classified using a few machine learning techniques for comparison purposes. Logistic Regression is found to be the best classification algorithm for this task. Furthermore, result comparison to recent works and the performance of each feature set are also shown as additional information.

Topics & Concepts

SarcasmArtificial intelligenceComputer scienceFeature (linguistics)Convolutional neural networkTask (project management)Feature learningMachine learningSet (abstract data type)Deep learningPattern recognition (psychology)Feature extractionIndependence (probability theory)Natural language processingMathematicsManagementLinguisticsStatisticsEconomicsPhilosophyIronyLiteratureArtProgramming languageSentiment Analysis and Opinion MiningAdvanced Text Analysis TechniquesTopic Modeling
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