2018
DOI: 10.3233/sw-180301
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STEM: Stacked threshold-based entity matching for knowledge base generation

Abstract: One of the major issues encountered in the generation of knowledge bases is the integration of data coming from a collection of heterogeneous data sources. A key essential task when integrating data instances is the entity matching. Entity matching is based on the definition of a similarity measure among entities and on the classification of the entity pair as a match if the similarity exceeds a certain threshold. This parameter introduces a trade-off between the precision and the recall of the algorithm, as h… Show more

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Cited by 2 publications
(1 citation statement)
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References 41 publications
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“…[25] compares the performance of different models on entity matching tasks. Enrico et al [26] propose a stacking approach for threshold-based ML models, i.e., using integrated method to improve the prediction effect. Mugeni et al [27] propose a k-nearest neighbor graph-based blocking approach for entity matching and the performance is even better than many DL-based methods.…”
Section: Machine Learning-based Entity Matchingmentioning
confidence: 99%
“…[25] compares the performance of different models on entity matching tasks. Enrico et al [26] propose a stacking approach for threshold-based ML models, i.e., using integrated method to improve the prediction effect. Mugeni et al [27] propose a k-nearest neighbor graph-based blocking approach for entity matching and the performance is even better than many DL-based methods.…”
Section: Machine Learning-based Entity Matchingmentioning
confidence: 99%