Cross-domain sentiment classification aims to tag sentiments for a target domain by labeled data from a source domain. Due to the difference between domains, the accuracy of a trained classifier may be very low. In this paper, we propose a boosting-based learning framework named TR-TrAdaBoost for cross-domain sentiment classification. We firstly explore the topic distribution of documents, and then combine it with the unigram TrAdaBoost. The topic distribution captures the domain information of documents, which is valuable for cross-domain sentiment classification. Experimental results indicate that TR-TrAdaBoost represents documents well and boost the performance and robustness of TrAdaBoost
Text sentiment classification is a fundamental sub-area in natural language processing. The sentimen...
Sentiment relevance (SR) aims at identify-ing content that does not contribute to sen-timent analysi...
This paper presents a novel framework for sentiment analysis, which exploits sentiment topic informa...
Cross-domain sentiment classification consists in distinguishing positive and negative reviews of a ...
The enormous growth of Internet usage, number of social interactions, and activities in social netwo...
Domain-adapted sentiment classification refers to training on a labeled source domain to well infer ...
Deep learning,as a new unsupervised leaning algorithm,has strong capabilities to learn data represen...
Sentiment classification is one of the most extensively studied problems in sentiment analysis and s...
We describe a sentiment classication method that is applicable when we do not have any labeled data ...
The main task of sentiment classification is to automatically judge sentiment polarity (positive or ...
Cross-domain sentiment classifiers aim to predict the polarity (i.e. sentiment orientation) of targe...
Enormous growth of Internet usage, number of social interactions and activities in social networking...
Cross-domain sentiment classification (CSC) aims at learning a sentiment classifier for unlabeled da...
Cross-domain sentiment classification (CSC) aims at learning a sentiment classifier for unlabeled da...
Cross-domain sentiment classification refers to utilizing useful knowledge in the source domain to h...
Text sentiment classification is a fundamental sub-area in natural language processing. The sentimen...
Sentiment relevance (SR) aims at identify-ing content that does not contribute to sen-timent analysi...
This paper presents a novel framework for sentiment analysis, which exploits sentiment topic informa...
Cross-domain sentiment classification consists in distinguishing positive and negative reviews of a ...
The enormous growth of Internet usage, number of social interactions, and activities in social netwo...
Domain-adapted sentiment classification refers to training on a labeled source domain to well infer ...
Deep learning,as a new unsupervised leaning algorithm,has strong capabilities to learn data represen...
Sentiment classification is one of the most extensively studied problems in sentiment analysis and s...
We describe a sentiment classication method that is applicable when we do not have any labeled data ...
The main task of sentiment classification is to automatically judge sentiment polarity (positive or ...
Cross-domain sentiment classifiers aim to predict the polarity (i.e. sentiment orientation) of targe...
Enormous growth of Internet usage, number of social interactions and activities in social networking...
Cross-domain sentiment classification (CSC) aims at learning a sentiment classifier for unlabeled da...
Cross-domain sentiment classification (CSC) aims at learning a sentiment classifier for unlabeled da...
Cross-domain sentiment classification refers to utilizing useful knowledge in the source domain to h...
Text sentiment classification is a fundamental sub-area in natural language processing. The sentimen...
Sentiment relevance (SR) aims at identify-ing content that does not contribute to sen-timent analysi...
This paper presents a novel framework for sentiment analysis, which exploits sentiment topic informa...