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title crossref abstract layout series id month tex_title firstpage lastpage page order cycles bibtex_author author date address publisher container-title volume genre issued pdf extras
Forward and Backward Knowledge Transfer for Sentiment Classification
acml19
This paper studies the problem of learning a sequence of sentiment classification tasks. The learned knowledge from each task is retained and later used to help future or subsequent task learning. This learning paradigm is called \textit{lifelong learning}. However, existing lifelong learning methods either only transfer knowledge forward to help future learning and do not go back to improve the model of a previous task or require the training data of the previous task to retrain its model to exploit backward/reverse knowledge transfer. This paper studies reverse knowledge transfer of lifelong learning. It aims to improve the model of a previous task by leveraging future knowledge without retraining using its training data, which is challenging now. In this work, this is done by exploiting a key characteristic of the generative model of naïve Bayes. That is, it is possible to improve the naïve Bayesian classifier for a task by improving its model parameters directly using the retained knowledge from other tasks. Experimental results show that the proposed method markedly outperforms existing lifelong learning baselines.
inproceedings
Proceedings of Machine Learning Research
wang19f
0
Forward and Backward Knowledge Transfer for Sentiment Classification
457
472
457-472
457
false
Wang, Hao and Liu, Bing and Wang, Shuai and Ma, Nianzu and Yang, Yan
given family
Hao
Wang
given family
Bing
Liu
given family
Shuai
Wang
given family
Nianzu
Ma
given family
Yan
Yang
2019-10-15
PMLR
Proceedings of The Eleventh Asian Conference on Machine Learning
101
inproceedings
date-parts
2019
10
15