2021
DOI: 10.48550/arxiv.2111.14244
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Schema matching using Gaussian mixture models with Wasserstein distance

Abstract: Gaussian mixture models find their place as a powerful tool, mostly in the clustering problem, but with proper preparation also in feature extraction, pattern recognition, image segmentation and in general machine learning. When faced with the problem of schema matching, different mixture models computed on different pieces of data can maintain crucial information about the structure of the dataset. In order to measure or compare results from mixture models, the Wasserstein distance can be very useful, however… Show more

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