Computational Methods for Affect Detection from Natural Language

Computational Methods for Affect Detection from Natural Language

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Jan 1, 2016 · Anglais · Relié (250 pages)
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Détails du livre

Format Relié
Pages 250
Langue Anglais
Publié Jan 1, 2016
Éditeur Springer
Édition 1
ISBN-10 3319006010
ISBN-13 9783319006017

Description

This work delves into the intersection of natural language processing and affective computing, offering a comprehensive overview of methodologies for detecting emotions and sentiments in text. It explores how computational techniques can be harnessed to analyze language patterns that reflect human feelings, paving the way for advancements in diverse applications, from social media analysis to mental health monitoring.

Schuller, Balahur-Dobrescu, and Taboada present a thorough examination of various algorithms and models, highlighting their effectiveness and challenges in real-world scenarios. By addressing both theoretical foundations and practical implementations, the authors provide valuable insights for researchers and practitioners alike. Readers will gain an understanding of how machines can interpret non-verbal cues hidden within the words we use, thereby advancing the field of artificial intelligence in understanding human emotional states.

Genres

Science & Technologie Philosophie Psychologie
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