Computational Methods for Affect Detection from Natural Language (Computational Social Sciences)

Computational Methods for Affect Detection from Natural Language (Computational Social Sciences)

《Computational Methods for Affect Detection from Natural Language (Computational Social Sciences)》是Springer; 1st ed. 2019版出版的圖書,作者是Alexandra Balahur-Dobrescu,Maite Taboada,Björn W. Schuller

基本介紹

  • 作者:Alexandra Balahur-Dobrescu、Maite Taboada、Björn W. Schuller
  • 出版時間:2020年1月1日
  • 出版社:Springer; 1st ed. 2019版
  • 頁數:250 頁
  • ISBN:9783319006017
  • 原作品:Computational Methods for Affect Detection from Natural Language (Computational Social Sciences)
  • 裝幀:Hardcover
  • 叢書:Computational Social Sciences
  • 售價:93,59 €
內容簡介
A broad overview of natural language processing in affective computing is given by this title. Its goal is to familiarize the reader with current approaches in affective computing as well as the most relevant concepts related to this field (affect, sentiment, subjectivity and others). Research in human affect has a long established tradition in social sciences - Philosophy, Psy...(展開全部) A broad overview of natural language processing in affective computing is given by this title. Its goal is to familiarize the reader with current approaches in affective computing as well as the most relevant concepts related to this field (affect, sentiment, subjectivity and others). Research in human affect has a long established tradition in social sciences - Philosophy, Psychology, Socio-psychology, Cognitive Science, Pragmatics, Marketing, Communication. The study of affect from a computational point of view is a recent field in Artificial Intelligence, denominated “Affective Computing”. Despite the novelty of the subject, the volume and importance of research in automatic human affect recognition, classification and simulation has been constantly growing in the past decades, leading to the development of further sub-areas of research. One of these directions deals with the study of automatic affect treatment from text, in the Artificial Intelligence area of Natural Language Processing. In this context, different tasks have been developed, from emotion detection, subjectivity analysis, opinion mining to sentiment analysis and appraisal analysis.

熱門詞條

聯絡我們