2020
DOI: 10.48550/arxiv.2008.13298
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SEEC: Semantic Vector Federation across Edge Computing Environments

Abstract: Semantic vector embedding techniques have proven useful in learning semantic representations of data across multiple domains. A key application enabled by such techniques is the ability to measure semantic similarity between given data samples and find data most similar to a given sample. State-ofthe-art embedding approaches assume all data is available on a single site. However, in many business settings, data is distributed across multiple edge locations and cannot be aggregated due to a variety of constrain… Show more

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