Cross-domain sentiment classification refers to utilizing useful knowledge in the source domain to help sentiment classification in the target domain which has few or no labeled data. Most existing methods mainly concentrate on extracting common features between domains. Unfortunately, they cannot fully consider the effects of the aspect (e.g., the battery life in reviewing an electronic product) information of the sentences. In order to better solve this problem, we propose an Interactive Attention Transfer Network (IATN) for crossdomain sentiment classification. IATN provides an interactive attention transfer mechanism, which can better transfer sentiment across domains by incorporating information of both sentences and aspects. Specifica...
This paper proposes using most similar domain to target domain as source domain among avail- able do...
Abstract Cross-domain sentiment classification could be attributed to two steps. The first step is u...
Transfer learning is one of the popular methods for solving the problem that the models built on the...
Cross-domain sentiment classification aims to leverage useful information in a source domain to help...
The literature [-5]contains several reports evaluating the abilities of deep neural networks in text...
Cross-domain sentiment classifiers aim to predict the polarity (i.e. sentiment orientation) of targe...
As the size of the feature space and data size increases, it is difficult to find the essential key ...
Neural network methods have achieved great success in reviews sentiment classification. Recently, so...
Cross-domain sentiment classification consists in distinguishing positive and negative reviews of a ...
Cross-domain sentiment classification aims to tag sentiments for a target domain by labeled data fro...
Text sentiment classification is an essential research field of natural language processing. Recentl...
In many online news services, users often write comments towards news in subjective emotions such as...
We describe a sentiment classication method that is applicable when we do not have any labeled data ...
With the development of 5G, the advancement of basic infrastructure has led to considerable developm...
Abstract-- Sentiment analysis, also known as opinion mining, is an area that analyzes people’s opini...
This paper proposes using most similar domain to target domain as source domain among avail- able do...
Abstract Cross-domain sentiment classification could be attributed to two steps. The first step is u...
Transfer learning is one of the popular methods for solving the problem that the models built on the...
Cross-domain sentiment classification aims to leverage useful information in a source domain to help...
The literature [-5]contains several reports evaluating the abilities of deep neural networks in text...
Cross-domain sentiment classifiers aim to predict the polarity (i.e. sentiment orientation) of targe...
As the size of the feature space and data size increases, it is difficult to find the essential key ...
Neural network methods have achieved great success in reviews sentiment classification. Recently, so...
Cross-domain sentiment classification consists in distinguishing positive and negative reviews of a ...
Cross-domain sentiment classification aims to tag sentiments for a target domain by labeled data fro...
Text sentiment classification is an essential research field of natural language processing. Recentl...
In many online news services, users often write comments towards news in subjective emotions such as...
We describe a sentiment classication method that is applicable when we do not have any labeled data ...
With the development of 5G, the advancement of basic infrastructure has led to considerable developm...
Abstract-- Sentiment analysis, also known as opinion mining, is an area that analyzes people’s opini...
This paper proposes using most similar domain to target domain as source domain among avail- able do...
Abstract Cross-domain sentiment classification could be attributed to two steps. The first step is u...
Transfer learning is one of the popular methods for solving the problem that the models built on the...