Narrow Search
Last searches

Results for *

Displaying results 1 to 1 of 1.

  1. Emotion detection in natural language processing
    Published: [2025]; © 2025
    Publisher:  Springer, Cham, Switzerland

    This book provides a practical guide on annotating emotions in natural language data and showcases how these annotations can improve Natural Language Processing (NLP) and Natural Language Understanding (NLU) models and applications. The author... more

    Universitätsbibliothek Leipzig
    Unlimited inter-library loan, copies and loan

     

    This book provides a practical guide on annotating emotions in natural language data and showcases how these annotations can improve Natural Language Processing (NLP) and Natural Language Understanding (NLU) models and applications. The author presents an introduction to emotion as well as the ethical considerations on emotion annotation. State-of-the-art approaches to emotion annotation in NLP and NLU including rule-based, machine learning, and deep learning applications are addressed. Theoretical foundations of emotion and the implication on emotion annotation are discussed along with the current challenges and limitations in emotion annotation. This book is appropriate for researchers and practitioners in the field of NLP and NLU and anyone interested in the intersection of natural language and emotion

     

    Export to reference management software   RIS file
      BibTeX file
    Content information
    Source: Union catalogues
    Language: English
    Media type: Book
    Format: Print
    ISBN: 9783031720468
    Series: Synthesis lectures on human language technologies
    Subjects: COM094000; COMPUTERS / Natural Language Processing; MAT029040; MATHEMATICS / Applied; MATHEMATICS / Probability & Statistics / General; Machine learning; Maschinelles Lernen; Mathematical modelling; Mathematische Modellierung; Natural language & machine translation; Natürliche Sprachen und maschinelle Übersetzung; Probability & statistics; Stochastics; Stochastik; Wahrscheinlichkeitsrechnung und Statistik
    Scope: x, 105 Seiten, Diagramme
    Notes:

    Introduction.- Theoretical Foundations and Detection of Emotions.- Rule-Based Approaches for Emotion Detection.- Machine Learning Approaches to Emotion Detection.- Challenges and Limitations in Emotion Detection Methods.