Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Exploiting Correlations Between Contexts and Definitions with Multiple Definition Modeling

About

Definition modeling is an important task in advanced natural language applications such as understanding and conversation. Since its introduction, it focus on generating one definition for a target word or phrase in a given context, which we refer to as Single Definition Modeling (SDM). However, this approach does not adequately model the correlations and patterns among different contexts and definitions of words. In addition, the creation of a training dataset for SDM requires significant human expertise and effort. In this paper, we carefully design a new task called Multiple Definition Modeling (MDM) that pool together all contexts and definition of target words. We demonstrate the ease of creating a model as well as multiple training sets automatically. % In the experiments, we demonstrate and analyze the benefits of MDM, including improving SDM's performance by using MDM as the pretraining task and its comparable performance in the zero-shot setting.

Linhan Zhang, Qian Chen, Wen Wang, Yuxin Jiang, Bing Li, Wei Wang, Xin Cao• 2023

Related benchmarks

TaskDatasetResultRank
Definition GenerationOxford
BLEU24.16
23
Definition Generationwordnet
BLEU31.18
23
Definition ModelingWiki
BLEU54.33
18
Definition ModelingUrban
BLEU17.53
18
Definition Modeling3D-EX
BLEU Score32.67
18
Showing 5 of 5 rows

Other info

Follow for update