Sentiment lexicons are language resources widely used in opinion mining and important tools in unsupervised sentiment classification. We present a comparative study of sentiment classification of reviews on six different domains using sentiment lexicons from different sources. Our results highlight the tendency of a lexicon’s performance to be imbalanced towards one class, and indicate lexicon accuracy varies with the target domain. We propose an approach that combines information from different lexicons to make classification decisions and achieve more robust results that consistently improve our baseline across all domains tested. These are further refined by a domain independent score adjustment that mitigates the effect of the recall im...
We describe a sentiment classication method that is applicable when we do not have any labeled data ...
This article introduces a new general-purpose sentiment lexicon called WKWSCI Sentiment Lexicon and ...
Today's business information systems face the challenge of analyzing sentiment in massive data sets ...
Sentiment lexicons are language resources widely used in opinion mining and important tools in unsup...
Most approaches to sentiment analysis requires a sentiment lexicon in order to automatically predict...
Lexicon-based approaches to sentiment analysis of text are based on each word or lexical entry havin...
Since manually constructing domain-specific sentiment lexicons is extremely time consuming and it ma...
Nowadays people express their opinions about products, government policies, schemes and programs ove...
We propose a novel method for counting sentiment orientation that outperforms supervised learning ap...
With the emergence of web 2.0 and availability of huge amount of digital data on the social web, peo...
Sentiment analysis is widely studied to extract opinions from user generated content (UGC), and vari...
The simplicity of using Web 2.0 platforms and services has resulted in an abundance of user-generate...
Through a survey of literature, the role of sentiment classification in sentiment analysis has been ...
<div>Rapid increase in internet users along with growing power of online review sites and social med...
For sentiment analysis, we address the problem of supervised-learning being domain-dependent. Additi...
We describe a sentiment classication method that is applicable when we do not have any labeled data ...
This article introduces a new general-purpose sentiment lexicon called WKWSCI Sentiment Lexicon and ...
Today's business information systems face the challenge of analyzing sentiment in massive data sets ...
Sentiment lexicons are language resources widely used in opinion mining and important tools in unsup...
Most approaches to sentiment analysis requires a sentiment lexicon in order to automatically predict...
Lexicon-based approaches to sentiment analysis of text are based on each word or lexical entry havin...
Since manually constructing domain-specific sentiment lexicons is extremely time consuming and it ma...
Nowadays people express their opinions about products, government policies, schemes and programs ove...
We propose a novel method for counting sentiment orientation that outperforms supervised learning ap...
With the emergence of web 2.0 and availability of huge amount of digital data on the social web, peo...
Sentiment analysis is widely studied to extract opinions from user generated content (UGC), and vari...
The simplicity of using Web 2.0 platforms and services has resulted in an abundance of user-generate...
Through a survey of literature, the role of sentiment classification in sentiment analysis has been ...
<div>Rapid increase in internet users along with growing power of online review sites and social med...
For sentiment analysis, we address the problem of supervised-learning being domain-dependent. Additi...
We describe a sentiment classication method that is applicable when we do not have any labeled data ...
This article introduces a new general-purpose sentiment lexicon called WKWSCI Sentiment Lexicon and ...
Today's business information systems face the challenge of analyzing sentiment in massive data sets ...