We propose a novel method for counting sentiment orientation that outperforms supervised learning approaches in time and memory complexity and is not statistically significantly different from them in accuracy. Our method consists of a novel approach to generating unigram, bigram and trigram lexicons. The proposed method, called frequentiment, is based on calculating the frequency of features (words) in the document and averaging their impact on the sentiment score as opposed to documents that do not contain these features. Afterwards, we use ensemble classification to improve the overall accuracy of the method. What is important is that the frequentiment-based lexicons with sentiment threshold selection outperform other popular lexicons an...
WOS: 000380626000001Typically performed by supervised machine learning algorithms, sentiment analysi...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
With the emergence of web 2.0 and availability of huge amount of digital data on the social web, peo...
We propose a novel method for counting sentiment orientation that outperforms supervised learning ap...
In this paper, we present a comparative study of text sentiment classification models using term fre...
Abstract: A number of Feature Selection and Ensemble Methods for Sentiment Analysis Classification h...
Sentiment analysis is widely studied to extract opinions from user generated content (UGC), and vari...
Sentiment lexicons are language resources widely used in opinion mining and important tools in unsup...
Today's business information systems face the challenge of analyzing sentiment in massive data sets ...
For sentiment analysis, we address the problem of supervised-learning being domain-dependent. Additi...
Abstract Sentiment classification or sentiment analysis has been acknowledged as an open research do...
Sentiment analysis has been one of the most active research areas in the past decade due to its vast...
In this paper we introduce a simplied approach to sentiment analysis: a lexicon-driven method based ...
Most approaches to sentiment analysis requires a sentiment lexicon in order to automatically predict...
In this paper we present a lexicon–based method for the automatic analysis of opinionated documents....
WOS: 000380626000001Typically performed by supervised machine learning algorithms, sentiment analysi...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
With the emergence of web 2.0 and availability of huge amount of digital data on the social web, peo...
We propose a novel method for counting sentiment orientation that outperforms supervised learning ap...
In this paper, we present a comparative study of text sentiment classification models using term fre...
Abstract: A number of Feature Selection and Ensemble Methods for Sentiment Analysis Classification h...
Sentiment analysis is widely studied to extract opinions from user generated content (UGC), and vari...
Sentiment lexicons are language resources widely used in opinion mining and important tools in unsup...
Today's business information systems face the challenge of analyzing sentiment in massive data sets ...
For sentiment analysis, we address the problem of supervised-learning being domain-dependent. Additi...
Abstract Sentiment classification or sentiment analysis has been acknowledged as an open research do...
Sentiment analysis has been one of the most active research areas in the past decade due to its vast...
In this paper we introduce a simplied approach to sentiment analysis: a lexicon-driven method based ...
Most approaches to sentiment analysis requires a sentiment lexicon in order to automatically predict...
In this paper we present a lexicon–based method for the automatic analysis of opinionated documents....
WOS: 000380626000001Typically performed by supervised machine learning algorithms, sentiment analysi...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
With the emergence of web 2.0 and availability of huge amount of digital data on the social web, peo...