A Practical Guide to Sentiment Analysis [electronic resource]

Başlık
A Practical Guide to Sentiment Analysis [electronic resource]

ISBN
9783319553948

Fiziksel Açıklamalar
VII, 196 p. 16 illus., 7 illus. in color. online resource.

Dizi Bildirim
Socio-Affective Computing, 5

Genel Not
Preface -- Affective Computing and Sentiment Analysis -- Many Facets of Sentiment Analysis -- Reflections on Sentiment/Opinion Analysis -- Challenges in Sentiment Analysis --  Sentiment Resources: Lexicons and Datasets -- Generative Models for Sentiment Analysis and Opinion Mining -- Social Media Summarization -- Deception Detection and Opinion Spam -- Concept-Level Sentiment Analysis with SenticNet -- Index.
 
This edited work presents studies and discussions that clarify the challenges and opportunities of sentiment analysis research. While sentiment analysis research has become very popular in the past ten years, most companies and researchers still approach it simply as a polarity detection problem. In reality, sentiment analysis is a 'suitcase problem' that requires tackling many natural language processing subtasks, including microtext analysis, sarcasm detection, anaphora resolution, subjectivity detection and aspect extraction.   In this book, the authors propose an overview of the main issues and challenges associated with current sentiment analysis research and provide some insights on practical tools and techniques that can be exploited to both advance the state of the art in all sentiment analysis subtasks and explore new areas in the same context. Readers will discover sentiment mining techniques that can be exploited for the creation and automated upkeep of review and opinion aggregation websites, in which opinionated text and videos are continuously gathered from the Web and not restricted to just product reviews, but also to wider topics such as political issues and brand perception. The book also enables researchers to see how affective computing and sentiment analysis have a great potential as a sub-component technology for other systems. They can enhance the capabilities of customer relationship management and recommendation systems allowing, for example, to find out which features customers are particularly happy about or to exclude from the recommendations items that have received very negative feedbacks. Similarly, they can be exploited for affective tutoring and affective entertainment or for troll filtering and spam detection in online social communication.

İçindekiler
Preface -- Affective Computing and Sentiment Analysis -- Many Facets of Sentiment Analysis -- Reflections on Sentiment/Opinion Analysis -- Challenges in Sentiment Analysis --  Sentiment Resources: Lexicons and Datasets -- Generative Models for Sentiment Analysis and Opinion Mining -- Social Media Summarization -- Deception Detection and Opinion Spam -- Concept-Level Sentiment Analysis with SenticNet -- Index.

Özet
This edited work presents studies and discussions that clarify the challenges and opportunities of sentiment analysis research. While sentiment analysis research has become very popular in the past ten years, most companies and researchers still approach it simply as a polarity detection problem. In reality, sentiment analysis is a 'suitcase problem' that requires tackling many natural language processing subtasks, including microtext analysis, sarcasm detection, anaphora resolution, subjectivity detection and aspect extraction.   In this book, the authors propose an overview of the main issues and challenges associated with current sentiment analysis research and provide some insights on practical tools and techniques that can be exploited to both advance the state of the art in all sentiment analysis subtasks and explore new areas in the same context. Readers will discover sentiment mining techniques that can be exploited for the creation and automated upkeep of review and opinion aggregation websites, in which opinionated text and videos are continuously gathered from the Web and not restricted to just product reviews, but also to wider topics such as political issues and brand perception. The book also enables researchers to see how affective computing and sentiment analysis have a great potential as a sub-component technology for other systems. They can enhance the capabilities of customer relationship management and recommendation systems allowing, for example, to find out which features customers are particularly happy about or to exclude from the recommendations items that have received very negative feedbacks. Similarly, they can be exploited for affective tutoring and affective entertainment or for troll filtering and spam detection in online social communication.

Konu Terimleri
Medicine.
 
Information storage and retrieva.
 
Applied linguistics.
 
Engineering mathematics.
 
Computer science.
 
Mathematical statistics.
 
Biomedicine general. http://scigraph.springernature.com/things/product-market-codes/B0000X
 
Information Storage and Retrieval. http://scigraph.springernature.com/things/product-market-codes/I18032
 
Applied Linguistics. http://scigraph.springernature.com/things/product-market-codes/N13000
 
Mathematical and Computational Engineering. http://scigraph.springernature.com/things/product-market-codes/T11006
 
User Interfaces and Human Computer Interaction. http://scigraph.springernature.com/things/product-market-codes/I18067
 
Statistics and Computing/Statistics Programs. http://scigraph.springernature.com/things/product-market-codes/S12008

Ek Yazar
Cambria, Erik.
 
Das, Dipankar.
 
Bandyopadhyay, Sivaji.
 
Feraco, Antonio.

Ek Kurum Yazarı
SpringerLink (Online service)

Elektronik Erişim
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