Literature DB >> 31497777

Data-Driven Approach to Multiple-Source Domain Adaptation.

Petar Stojanov1, Mingming Gong2, Jaime G Carbonell3, Kun Zhang4.   

Abstract

A key problem in domain adaptation is determining what to transfer across different domains. We propose a data-driven method to represent these changes across multiple source domains and perform unsupervised domain adaptation. We assume that the joint distributions follow a specific generating process and have a small number of identifiable changing parameters, and develop a data-driven method to identify the changing parameters by learning low-dimensional representations of the changing class-conditional distributions across multiple source domains. The learned low-dimensional representations enable us to reconstruct the target-domain joint distribution from unlabeled target-domain data, and further enable predicting the labels in the target domain. We demonstrate the efficacy of this method by conducting experiments on synthetic and real datasets.

Entities:  

Year:  2019        PMID: 31497777      PMCID: PMC6730632     

Source DB:  PubMed          Journal:  Proc Mach Learn Res


  3 in total

1.  Semi-supervised learning of class balance under class-prior change by distribution matching.

Authors:  Marthinus Christoffel du Plessis; Masashi Sugiyama
Journal:  Neural Netw       Date:  2013-11-18

2.  Domain Adaptation with Conditional Transferable Components.

Authors:  Mingming Gong; Kun Zhang; Tongliang Liu; Dacheng Tao; Clark Glymour; Bernhard Schölkopf
Journal:  JMLR Workshop Conf Proc       Date:  2016-06

3.  Pulmonary lobe segmentation based on ridge surface sampling and shape model fitting.

Authors:  James C Ross; Gordon L Kindlmann; Yuka Okajima; Hiroto Hatabu; Alejandro A Díaz; Edwin K Silverman; George R Washko; Jennifer Dy; Raúl San José Estépar
Journal:  Med Phys       Date:  2013-12       Impact factor: 4.071

  3 in total

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