CLJan 8, 2022

Coherence-Based Distributed Document Representation Learning for Scientific Documents

arXiv:2201.02846v12 citations
AI Analysis

This work addresses the need for better document representations in natural language processing, particularly for scientific documents, by focusing on coherence, but it appears incremental as it builds on existing embedding methods with a specific structural enhancement.

The paper tackled the problem of learning distributed document representations by incorporating document coherence, specifically for scientific documents, and proposed a coupled text pair embedding (CTPE) model that improved performance on information retrieval and recommendation tasks.

Distributed document representation is one of the basic problems in natural language processing. Currently distributed document representation methods mainly consider the context information of words or sentences. These methods do not take into account the coherence of the document as a whole, e.g., a relation between the paper title and abstract, headline and description, or adjacent bodies in the document. The coherence shows whether a document is meaningful, both logically and syntactically, especially in scientific documents (papers or patents, etc.). In this paper, we propose a coupled text pair embedding (CTPE) model to learn the representation of scientific documents, which maintains the coherence of the document with coupled text pairs formed by segmenting the document. First, we divide the document into two parts (e.g., title and abstract, etc) which construct a coupled text pair. Then, we adopt negative sampling to construct uncoupled text pairs whose two parts are from different documents. Finally, we train the model to judge whether the text pair is coupled or uncoupled and use the obtained embedding of coupled text pairs as the embedding of documents. We perform experiments on three datasets for one information retrieval task and two recommendation tasks. The experimental results verify the effectiveness of the proposed CTPE model.

Code Implementations1 repo
Foundations

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