Easy-But-Effective Domain Sub-Similarity Learning for Transfer Regression

IEEE Transactions on Knowledge and Data Engineering(2022)

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摘要
Transfer covariance function, which can model domain similarity and adaptively control the knowledge transfer across domains, is widely used in transfer learning. In this paper, we concentrate on Gaussian process ( GP ) models using a transfer covariance function for regression problems in a black-box learning scenario. Precisely, we investigate a family of rather general transfer covariance functions, ${T}_{*}$ , that can model the heterogeneous sub-similarities of domains through multiple kernel learning. A necessary and sufficient condition to obtain valid GP s using ${T}_{*}$ ( $GP_{T_{*}}$ ) for any data is given. This condition becomes specially handy for practical applications as (i) it enables semantic interpretations of the sub-similarities and (ii) it can readily be used for model learning. In particular, we propose a computationally inexpensive model learning rule that can explicitly capture different sub-similarities of domains. We propose two instantiations of $GP_{T_{*}}$ , one with a set of predefined constant base kernels and one with a set of learnable parametric base kernels. Extensive experiments on 36 synthetic transfer tasks and 12 real-world transfer tasks demonstrate the effectiveness of $GP_{T_{*}}$ on the sub-similarity capture and the transfer performance.
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关键词
Transfer regression,transfer covariance function,gaussian process
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