Current lexica and machine learning based sentiment analysis approaches still suffer from a two-fold limitation. First, manual lexicon construction and machine training is time consuming and error-prone. Second, the prediction’s accuracy entails sentences and their corresponding training text should fall under the same domain. In this article, we experimentally evaluate four sentiment classifiers, namely support vector machines (SVMs), Naive Bayes (NB), logistic regression (LR) and random forest (RF). We quantify the quality of each of these models using three real-world datasets that comprise 50,000 movie reviews, 10,662 sentences, and 300 generic movie reviews. Specifically, we study the impact of a variety of natural language processing ...
Sentiment analysis is becoming one of the most active area in Natural Language Processing nowadays. ...
Sentiment analysis concerns the study of opinions expressed in a text. Due to the huge amount of rev...
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...
In this paper, we compare the following machine learning methods as classifiers for sentiment analys...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
Automatic sentiment analysis is an important and challenging topic in Human Language Technology (HLT...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
Opinions have important effects on the process of decision making. With the explosion of text inform...
Customer reviews about a brand or product, movie reviews, and social media reviews can be analyzed t...
Sentiment analysis and opinion mining are emerging areas of research for analysing Web data and capt...
Sentiment analysis and Opinion mining has emerged as a popular and efficient technique for informati...
This study investigates a comparison of classification models used to determine aspect based separate...
— Sentiment analysis, which involves analyzing text data and using language computation to extract ...
Sentiment analysis is the process of computationally evaluating spoken or written language to determ...
Sentiment analysis is becoming one of the most active area in Natural Language Processing nowadays. ...
Sentiment analysis concerns the study of opinions expressed in a text. Due to the huge amount of rev...
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...
In this paper, we compare the following machine learning methods as classifiers for sentiment analys...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
Automatic sentiment analysis is an important and challenging topic in Human Language Technology (HLT...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
Opinions have important effects on the process of decision making. With the explosion of text inform...
Customer reviews about a brand or product, movie reviews, and social media reviews can be analyzed t...
Sentiment analysis and opinion mining are emerging areas of research for analysing Web data and capt...
Sentiment analysis and Opinion mining has emerged as a popular and efficient technique for informati...
This study investigates a comparison of classification models used to determine aspect based separate...
— Sentiment analysis, which involves analyzing text data and using language computation to extract ...
Sentiment analysis is the process of computationally evaluating spoken or written language to determ...
Sentiment analysis is becoming one of the most active area in Natural Language Processing nowadays. ...
Sentiment analysis concerns the study of opinions expressed in a text. Due to the huge amount of rev...
We propose a novel method for counting sentiment orientation that outperforms supervised learning ap...