Learning Meta-Distance for Sequences by Learning a Ground Metric via Virtual Sequence Regression

IEEE Transactions on Pattern Analysis and Machine Intelligence(2022)

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摘要
Distance between sequences is structural by nature because it needs to establish the temporal alignments among the temporally correlated vectors in sequences with varying lengths. Generally, distances for sequences heavily depend on the ground metric between the vectors in sequences to infer the alignments and hence can be viewed as meta-distances upon the ground metric. Learning such meta-distanc...
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Measurement,Learning systems,Training,Optimization,Neural networks,Machine learning,Kernel
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