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    Deep Learning for Entity Matching: A Design Space Exploration

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    tech report (1.839Mb)
    Date
    2018-05-15
    Author
    Mudgal Sunil Kumar, Sidharth
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    Abstract
    Entity matching (EM) finds data instances that refer to the same real-world entity. In this thesis we examine applying deep learning (DL) to EM, to understand DL's benefits and limitations. We review many DL solutions that have been developed for related matching tasks in text processing (e.g., entity linking, textual entailment, etc.). We categorize these solutions and define a space of DL solutions for EM, as embodied by four solutions with varying representational power: SIF, RNN, Attention, and Hybrid. Next, we investigate the types of EM problems for which DL can be helpful. We consider three such problem types, which match structured data instances, textual instances, and dirty instances, respectively. We empirically compare the above four DL solutions with Magellan, a state-of-the-art learning-based EM solution. The results show that DL does not outperform current solutions on structured EM, but it can significantly outperform them on textual and dirty EM. For practitioners, this suggests that they should seriously consider using DL for textual and dirty EM problems. We then analyze DL's performance and discuss future research directions. Finally, we present Deepmatcher, a Python package for performing entity matching using deep learning.
    Subject
    Deep learning
    Entity Resolution
    Entity Matching
    Permanent Link
    http://digital.library.wisc.edu/1793/78379
    Type
    Technical Report
    Citation
    TR1851
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    • CS Technical Reports

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