Abstract

Sarcasm is a form of figurative language where the literal meaning of words cannot hold, and instead the opposite interpretation is intended in a text. Sarcasm detection is a significant task to mine fine-grained information, which is a much more difficult challenge for sentiment analysis. Both industry and academia have realized the importance of sarcasm detection. However, most existing methods do not work very well. Using a neural architecture, we propose a novel multi-dimension question answering (MQA) network in order to detect sarcasm. MQA not only introduces the abundant semantic information to understand the ambiguity of sarcasm by multi-dimension representations, but also builds the conversation context information by deep memory question answering network based on bidirectional LSTM and attention mechanism to discover sarcasm. The experimental results show that our model has ability to obviously outperform other state-of-the-art methods, and then further examples also verifies the advancement and effectiveness of our proposed network for detecting sarcasm.

Highlights

  • Sarcasm is the lowest form of wit but the highest form of intelligence, which is widely applied in web messages to express different sentiment

  • We present a Multi-dimension Question Answering model (MQA) by deep memory network based on Bi-Long Short Term Memory (LSTM) and attention mechanism, which improves the performance of sarcasm detection

  • EXPERIMENTAL RESULTS In this subsection, we describe some baseline approaches for comparison in order to comprehensively evaluate the performance of our proposed Multidimension Question Answering (MQA) model

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Summary

Introduction

Sarcasm is the lowest form of wit but the highest form of intelligence, which is widely applied in web messages to express different sentiment. Detecting the sarcasm texts can help to learn the social web better and contains many applications such as sentiment analysis [1]. Sarcasm always intends to express contempt or ridicule without a negative surface sentiment. Detection of sarcasm in a text is crucial to understand the extensive conversation context in social media discussions. Both industry and academia have realized the importance of sarcasm research. In recent years, [2] designs rules to identify the contrast between a positive sentiment and negative situation for identifying sarcasm.

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