Abstract
The WSDM Cup 2017 Triple scoring challenge is aimed at calculating and assigning relevance scores for triples from type-like relations. Such scores are a fundamental ingredient for ranking results in entity search. In this paper, we propose a method that uses neural embedding techniques to accurately calculate an entity score for a triple based on its nearest neighbor. We strive to develop a new latent semantic model with a deep structure that captures the semantic and syntactic relations between words. Our method has been ranked among the top performers with accuracy - 0.74, average score difference - 1.74, and average Kendall's Tau - 0.35.
Comment: Triple Scorer at WSDM Cup 2017, see arXiv:1712.08081
Comment: Triple Scorer at WSDM Cup 2017, see arXiv:1712.08081
| Original language | English |
|---|---|
| Number of pages | 5 |
| Journal | CoRR |
| Volume | abs/1712.08359 |
| State | Published - 2017 |
Keywords
- Information Retrieval
- cs.IR