Learning Transferred Weights From Co-Occurrence Data for Heterogeneous Transfer Learning

被引:58
|
作者
Yang, Liu [1 ,2 ]
Jing, Liping [1 ]
Yu, Jian [1 ]
Ng, Michael K. [3 ]
机构
[1] Beijing Jiaotong Univ, Beijing Key Lab Traff Data Anal & Min, Beijing 100044, Peoples R China
[2] Hebei Univ, Coll Math & Informat Sci, Baoding 071002, Peoples R China
[3] Hong Kong Baptist Univ, Dept Math, Ctr Math Imaging & Vis, Hong Kong, Hong Kong, Peoples R China
基金
中国国家自然科学基金;
关键词
Co-occurrence data; directed cyclic network (DCN); heterogeneous transfer learning; multidomain; transferred weight; ALGORITHM; KNOWLEDGE;
D O I
10.1109/TNNLS.2015.2472457
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
One of the main research problems in heterogeneous transfer learning is to determine whether a given source domain is effective in transferring knowledge to a target domain, and then to determine how much of the knowledge should be transferred from a source domain to a target domain. The main objective of this paper is to solve this problem by evaluating the relatedness among given domains through transferred weights. We propose a novel method to learn such transferred weights with the aid of co-occurrence data, which contain the same set of instances but in different feature spaces. Because instances with the same category should have similar features, our method is to compute their principal components in each feature space such that co-occurrence data can be rerepresented by these principal components. The principal component coefficients from different feature spaces for the same instance in the co-occurrence data have the same order of significance for describing the category information. By using these principal component coefficients, the Markov Chain Monte Carlo method is employed to construct a directed cyclic network where each node is a domain and each edge weight is the conditional dependence from one domain to another domain. Here, the edge weight of the network can be employed as the transferred weight from a source domain to a target domain. The weight values can be taken as a prior for setting parameters in the existing heterogeneous transfer learning methods to control the amount of knowledge transferred from a source domain to a target domain. The experimental results on synthetic and real-world data sets are reported to illustrate the effectiveness of the proposed method that can capture strong or weak relations among feature spaces, and enhance the learning performance of heterogeneous transfer learning.
引用
收藏
页码:2187 / 2200
页数:14
相关论文
共 50 条
  • [31] Semisupervised Dual-Dictionary Learning for Heterogeneous Transfer Learning on Cross-Scene Hyperspectral Images
    Chen, Hong
    Ye, Minchao
    Lei, Ling
    Lu, Huijuan
    Qian, Yuntao
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2020, 13 : 3164 - 3178
  • [32] Feature Matching Based Heterogeneous Transfer Learning for Student Performance Prediction
    Chen, Juan
    Jia, Haiyang
    Wu, Zhongbo
    Mu, Junxian
    Ang, Gao
    KNOWLEDGE SCIENCE, ENGINEERING AND MANAGEMENT, PT II, KSEM 2024, 2024, 14885 : 204 - 215
  • [33] Heterogeneous transfer learning for activity recognition using heuristic search techniques
    Feuz, Kyle Dillon
    Cook, Diane J.
    INTERNATIONAL JOURNAL OF PERVASIVE COMPUTING AND COMMUNICATIONS, 2014, 10 (04) : 393 - +
  • [34] Transfer Learning Across Heterogeneous Features For Efficient Tensor Program Generation
    Verma, Gaurav
    Raskar, Siddhisanket
    Xie, Zhen
    Malik, Abid M.
    Emani, Murali
    Chapman, Barbara
    2023 2ND INTERNATIONAL WORKSHOP ON EXTREME HETEROGENEITY SOLUTIONS, EXHET 2023, 2023, : 7 - 12
  • [35] A heterogeneous transfer learning method for fault prediction of railway track circuit
    Na, Lan
    Cai, Baigen
    Zhang, Chongzhen
    Liu, Jiang
    Li, Zhengjiao
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2025, 140
  • [36] Dictionary-based transfer learning with Universum data
    Che, Zhiyong
    Liu, Bo
    Xiao, Yanshan
    Lin, Luyue
    INFORMATION SCIENCES, 2022, 599 : 64 - 83
  • [37] Transfer Learning in Earth Observation Data Analysis: A review
    Nowakowski, Artur
    Del Rosso, Maria Pia
    Zachar, Paulina
    Spiller, Dario
    Gabara, Grzegorz
    Barretta, Domenico
    Kalinowska, Kamila Barbara
    Choromanski, Kamil
    Wilkowski, Artur
    Sebastianelli, Alessandro
    Kupidura, Przemyslaw
    Osinska-Skotak, Katarzyna
    Ullo, Silvia Liberata
    IEEE GEOSCIENCE AND REMOTE SENSING MAGAZINE, 2025, 13 (01) : 121 - 152
  • [38] Transfer Learning with Prior Data- Driven Models from Multiple Unconventional Fields
    Cornelio, Jodel
    Razak, Syamil Mohd
    Cho, Young
    Liu, Hui-Hai
    Vaidya, Ravimadhav
    Jafarpour, Behnam
    SPE JOURNAL, 2023, 28 (05): : 2385 - 2414
  • [39] An online learning neural network ensembles with random weights for regression of sequential data stream
    Ding, Jinliang
    Wang, Haitao
    Li, Chuanbao
    Chai, Tianyou
    Wang, Junwei
    SOFT COMPUTING, 2017, 21 (20) : 5919 - 5937
  • [40] Heterogeneous Graph Based Similarity Measure for Categorical Data Unsupervised Learning
    Ye, Yanqing
    Jiang, Jiang
    Ge, Bingfeng
    Yang, Kewei
    Stanley, H. Eugene
    IEEE ACCESS, 2019, 7 : 112662 - 112680