How Well Do Text Embedding Models Understand Syntax?
- URL: http://arxiv.org/abs/2311.07996v1
- Date: Tue, 14 Nov 2023 08:51:00 GMT
- Title: How Well Do Text Embedding Models Understand Syntax?
- Authors: Yan Zhang, Zhaopeng Feng, Zhiyang Teng, Zuozhu Liu, Haizhou Li
- Abstract summary: The ability of text embedding models to generalize across a wide range of syntactic contexts remains under-explored.
Our findings reveal that existing text embedding models have not sufficiently addressed these syntactic understanding challenges.
We propose strategies to augment the generalization ability of text embedding models in diverse syntactic scenarios.
- Score: 50.440590035493074
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Text embedding models have significantly contributed to advancements in
natural language processing by adeptly capturing semantic properties of textual
data. However, the ability of these models to generalize across a wide range of
syntactic contexts remains under-explored. In this paper, we first develop an
evaluation set, named \textbf{SR}, to scrutinize the capability for syntax
understanding of text embedding models from two crucial syntactic aspects:
Structural heuristics, and Relational understanding among concepts, as revealed
by the performance gaps in previous studies. Our findings reveal that existing
text embedding models have not sufficiently addressed these syntactic
understanding challenges, and such ineffectiveness becomes even more apparent
when evaluated against existing benchmark datasets. Furthermore, we conduct
rigorous analysis to unearth factors that lead to such limitations and examine
why previous evaluations fail to detect such ineffectiveness. Lastly, we
propose strategies to augment the generalization ability of text embedding
models in diverse syntactic scenarios. This study serves to highlight the
hurdles associated with syntactic generalization and provides pragmatic
guidance for boosting model performance across varied syntactic contexts.
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