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@article{145790,
author = {M.ROSAIAH and M.PADMAVATHAMMA},
title = { Cross-Domain Sentiment Classification Using Sentiment Sensitive Embeddings},
journal = {International Journal of Innovative Research in Technology},
year = {},
volume = {4},
number = {11},
pages = {250-261},
issn = {2349-6002},
url = {https://ijirt.org/article?manuscript=145790},
abstract = {Unsupervised Cross-domain Sentiment Classiï¬cation is the task of adapting a sentiment classiï¬er trained on a particular domain (source domain), to a different domain (target domain), without requiring any labeled data for the target domain. By adapting an existing sentiment classiï¬er to previously unseen target domains, we can avoid the cost for manual data annotation for the target domain. We model this problem as embedding learning, and construct three objective functions that capture: (a) distributional properties of pivots (i.e., common features that appear in both source and target domains), (b) label constraints in the source domain documents, and (c) geometric properties in the unlabeled documents in both source and target domains. Unlike prior proposals that ï¬rst learn a lower-dimensional embedding independent of the source domain sentiment labels, and next a sentiment classiï¬er in this embedding, our joint optimisation method learns embeddings that are sensitive to sentiment classiï¬cation. Experimental results on a benchmark dataset show that by jointly optimising the three objectives we can obtain better performances in comparison to optimising each objective function separately, thereby demonstrating the importance of task-speciï¬c embedding learning for cross-domain sentiment classiï¬cation. Among the individual objective functions, the best performance is obtained by (c). Moreover, the proposed method reports cross-domain sentiment classiï¬cation accuracies that are statistically comparable to the current state-of-the-art embedding learning methods for cross-domain sentiment classiï¬cation.},
keywords = {Domain adaptation, sentiment classiï¬cation, spectral methods, embedding learning},
month = {},
}
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