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Metric Distribution to Vector: Constructing Data Representation via Broad-Scale Discrepancies

Machine Learning 2022-10-04 v1 Artificial Intelligence Machine Learning

Abstract

Graph embedding provides a feasible methodology to conduct pattern classification for graph-structured data by mapping each data into the vectorial space. Various pioneering works are essentially coding method that concentrates on a vectorial representation about the inner properties of a graph in terms of the topological constitution, node attributions, link relations, etc. However, the classification for each targeted data is a qualitative issue based on understanding the overall discrepancies within the dataset scale. From the statistical point of view, these discrepancies manifest a metric distribution over the dataset scale if the distance metric is adopted to measure the pairwise similarity or dissimilarity. Therefore, we present a novel embedding strategy named MetricDistribution2vec\mathbf{MetricDistribution2vec} to extract such distribution characteristics into the vectorial representation for each data. We demonstrate the application and effectiveness of our representation method in the supervised prediction tasks on extensive real-world structural graph datasets. The results have gained some unexpected increases compared with a surge of baselines on all the datasets, even if we take the lightweight models as classifiers. Moreover, the proposed methods also conducted experiments in Few-Shot classification scenarios, and the results still show attractive discrimination in rare training samples based inference.

Keywords

Cite

@article{arxiv.2210.00415,
  title  = {Metric Distribution to Vector: Constructing Data Representation via Broad-Scale Discrepancies},
  author = {Xue Liu and Dan Sun and Xiaobo Cao and Hao Ye and Wei Wei},
  journal= {arXiv preprint arXiv:2210.00415},
  year   = {2022}
}
R2 v1 2026-06-28T02:32:24.991Z