2021
DOI: 10.48550/arxiv.2106.01186
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Self-Supervised Document Similarity Ranking via Contextualized Language Models and Hierarchical Inference

Dvir Ginzburg,
Itzik Malkiel,
Oren Barkan
et al.

Abstract: We present a novel model for the problem of ranking a collection of documents according to their semantic similarity to a source (query) document. While the problem of document-todocument similarity ranking has been studied, most modern methods are limited to relatively short documents or rely on the existence of "ground-truth" similarity labels. Yet, in most common real-world cases, similarity ranking is an unsupervised problem as similarity labels are unavailable. Moreover, an ideal model should not be restr… Show more

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