Title
Sentiment analysis of blogs by combining lexical knowledge with text classification
Abstract
The explosion of user-generated content on the Web has led to new opportunities and significant challenges for companies, that are increasingly concerned about monitoring the discussion around their products. Tracking such discussion on weblogs, provides useful insight on how to improve products or market them more effectively. An important component of such analysis is to characterize the sentiment expressed in blogs about specific brands and products. Sentiment Analysis focuses on this task of automatically identifying whether a piece of text expresses a positive or negative opinion about the subject matter. Most previous work in this area uses prior lexical knowledge in terms of the sentiment-polarity of words. In contrast, some recent approaches treat the task as a text classification problem, where they learn to classify sentiment based only on labeled training data. In this paper, we present a unified framework in which one can use background lexical information in terms of word-class associations, and refine this information for specific domains using any available training examples. Empirical results on diverse domains show that our approach performs better than using background knowledge or training data in isolation, as well as alternative approaches to using lexical knowledge with text classification.
Year
DOI
Venue
2009
10.1145/1557019.1557156
KDD
Keywords
Field
DocType
training data,lexical knowledge,specific domain,text classification problem,text classification,background lexical information,sentiment analysis,specific brand,available training example,user generated content,text mining,opinion mining,naive bayes
Training set,Data mining,Text mining,Information retrieval,Naive Bayes classifier,Sentiment analysis,Computer science,Lexical knowledge,Artificial intelligence,Machine learning
Conference
Citations 
PageRank 
References 
166
4.93
23
Authors
3
Search Limit
100166
Name
Order
Citations
PageRank
Prem Melville1151884.77
Wojciech Gryc232410.90
Richard D. Lawrence332221.24