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Park, Saerom
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Instance Weighting Domain Adaptation Using Distance Kernel

Author(s)
Lee, WoojinLee, JaewookPark, Saerom
Issued Date
2018-06
DOI
10.7232/iems.2018.17.2.334
URI
https://scholarworks.unist.ac.kr/handle/201301/64278
Citation
INDUSTRIAL ENGINEERING AND MANAGEMENT SYSTEMS, v.17, no.2, pp.334 - 340
Abstract
Domain adaptation methods aims to improve the accuracy of the target predictive classifier while using the patterns from a related source domain that has large number of labeled data. In this paper, we introduce new kernel weight domain adaptation method based on smoothness assumption of classifier. We propose new simple and intuitive method that can improve the learning of target data by adding distance kernel based cross entropy term in loss function. Distance kernel refers to a matrix which denotes distance of each instances in source and target domain. We efficiently reduced the computational cost by using the stochastic gradient descent method. We evaluated the proposed method by using synthetic data and cross domain sentiment analysis tasks of Amazon reviews in four domains. Our empirical results showed improvements in all 12 domain adaptation experiments
Publisher
Korean Institute of Industrial Engineers
ISSN
1598-7248
Keyword (Author)
Distance KernelDomain AdaptationSentimental Analysis

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