Pokerface: The Word-Emotion Detector

Alaa Khader, Ashwini Kamath, Harsh Sharma, Irina Temnikova, Ferda Ofli, Francisco Guzman

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Every day, humans interact with text spanning from different sources such as news, literature, education, and even social media. While reading, humans process text word by word, accessing the meaning of a particular word from the lexicon, and when needed, changing its meaning to match the context of the text (Harley, 2014). The process of reading can induce a range of emotions, such as engagement, confusion, frustration, surprise or happiness. For example, when readers come across unfamiliar jargon, this may confuse them, as they try to understand the text.

In the past, scientists have addressed the emotion in text from a writer’s perspective. For example the field of Sentiment Analysis, aims to detect the emotional charge of words, to infer the intentions of the writer. However, here we propose the reverse approach: detect emotions produced on readers while processing text.

Detecting which emotions are induced by reading a piece of text can give us insights about the nature of the text itself. A word-emotion detector can be used to assign specific emotions experienced by readers to specific words or passages of text. This area of research has never been explored before.
Original languageEnglish
Title of host publicationQatar Foundation Annual Research Conference Proceedings
Volume2016
Edition1
DOIs
Publication statusPublished - Mar 2016

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