The simplicity of using Web 2.0 platforms and services has resulted in an abundance of user-generated content. A significant part of this content contains user opinions with clear economic relevance - customer and travel reviews, for example, or the articles of well-known and respected bloggers who influence purchase decisions. Analyzing and acting upon user-generated content is becoming imperative for marketers and social scientists who aim to gather feedback from very large user communities. Sentiment detection, as part of opinion mining, supports these efforts by identifying and aggregating polar opinions - i.e., positive or negative statements about facts. For achieving accurate results, sentiment detection requires a correct interpre...
Sentiment detection analyzes the positive or negative polarity of text. The field has received consi...
Sentiment lexicons are language resources widely used in opinion mining and important tools in unsup...
The Web 2.0 has dramatically changed people?s communication style. It is a great move toward more co...
The simplicity of using Web publishing services and social networking platforms has resulted in an a...
Web intelligence applications track online sources with economic relevance such as customer reviews,...
Sentiment detection automatically identifies emotions in textual data. The increasing amount of emot...
Sentiment analysis concerns the computational study of opinions expressed in text. Social media doma...
Sentiment lexicons for sentiment analysis offer a simple, yet effective way to obtain the prior sent...
Sentiment analysis (SA) is used to extract opinions from a huge amount of data and these opinions ar...
Since manually constructing domain-specific sentiment lexicons is extremely time consuming and it ma...
The lexicon-based approaches to opinion mining involve the extraction of term polarities from sentim...
This paper presents a novel method for contextualizing and enriching large semantic knowledge bases ...
AbstractThis paper presents a novel method for contextualizing and enriching large semantic knowledg...
This paper presents a novel framework for sentiment analysis, which exploits sentiment topic informa...
Automated analysis of the sentiments presented in online consumer feedbacks can facilitate both orga...
Sentiment detection analyzes the positive or negative polarity of text. The field has received consi...
Sentiment lexicons are language resources widely used in opinion mining and important tools in unsup...
The Web 2.0 has dramatically changed people?s communication style. It is a great move toward more co...
The simplicity of using Web publishing services and social networking platforms has resulted in an a...
Web intelligence applications track online sources with economic relevance such as customer reviews,...
Sentiment detection automatically identifies emotions in textual data. The increasing amount of emot...
Sentiment analysis concerns the computational study of opinions expressed in text. Social media doma...
Sentiment lexicons for sentiment analysis offer a simple, yet effective way to obtain the prior sent...
Sentiment analysis (SA) is used to extract opinions from a huge amount of data and these opinions ar...
Since manually constructing domain-specific sentiment lexicons is extremely time consuming and it ma...
The lexicon-based approaches to opinion mining involve the extraction of term polarities from sentim...
This paper presents a novel method for contextualizing and enriching large semantic knowledge bases ...
AbstractThis paper presents a novel method for contextualizing and enriching large semantic knowledg...
This paper presents a novel framework for sentiment analysis, which exploits sentiment topic informa...
Automated analysis of the sentiments presented in online consumer feedbacks can facilitate both orga...
Sentiment detection analyzes the positive or negative polarity of text. The field has received consi...
Sentiment lexicons are language resources widely used in opinion mining and important tools in unsup...
The Web 2.0 has dramatically changed people?s communication style. It is a great move toward more co...