Computational Humor Recognition: A Systematic Literature Review

Author:

Kalloniatis Antony1,Adamidis Panagiotis1

Affiliation:

1. International Hellenic University

Abstract

Abstract Computational humor recognition is considered to be one of the hardest tasks in natural language processing (NLP) since humor is such a particularly complex emotion. There are very few recent studies that offer analysis of certain aspects of computational humor. However, there has been no attempt to study the empirical evidence on computational humor recognition in a systematic way. The aim of this research is to examine computational humor detection from four aspects: datasets, features and algorithms. Therefore, a Systematic Literature Review (SLR) is carried out to present in details the computational techniques for humor identification under these aspects. After posing some research questions, a total of 106 primary papers were recognized as relevant to the objectives of these questions and further detailed analysis was conducted. The study revealed that there is a great number of publicly available annotated humor datasets with many different types of humor instances. Twenty one (21) humor features have been carefully studied and research evidence of their use in humor computational detection is presented. Additionally, a classification of the humor detection approaches was performed and the results are submitted. Finally, the challenges of applying these techniques to humor recognition as well as promising future research directions are discussed.

Publisher

Research Square Platform LLC

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1. Análisis emocional del corpus COLUMNAS.HUMOR: un enfoque mixto;Círculo de Lingüística Aplicada a la Comunicación;2023-11-21

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