在嵌入中寻找意义:概念分离曲线 / Finding Meaning in Embeddings: Concept Separation Curves
1️⃣ 一句话总结
本文提出了一种无需额外分类器的方法,通过向句子中引入语法噪声和语义否定,并绘制“概念分离曲线”来可视化评估句子嵌入模型区分句子核心含义与表面变化的能力。
Sentence embedding techniques aim to encode key concepts of a sentence's meaning in a vector space. However, the majority of evaluation approaches for sentence embedding quality rely on the use of additional classifiers or downstream tasks. These additional components make it unclear whether good results stem from the embedding itself or from the classifier's behaviour. In this paper, we propose a novel method for evaluating the effectiveness of sentence embedding methods in capturing sentence-level concepts. Our approach is classifier-independent, allowing for an objective assessment of the model's performance. The approach adopted in this study involves the systematic introduction of syntactic noise and semantic negations into sentences, with the subsequent quantification of their relative effects on the resulting embeddings. The visualisation of these effects is facilitated by Concept Separation Curves, which show the model's capacity to differentiate between conceptual and surface-level variations. By leveraging data from multiple domains, employing both Dutch and English languages, and examining sentence lengths, this study offers a compelling demonstration that Concept Separation Curves provide an interpretable, reproducible, and cross-model approach for evaluating the conceptual stability of sentence embeddings.
在嵌入中寻找意义:概念分离曲线 / Finding Meaning in Embeddings: Concept Separation Curves
本文提出了一种无需额外分类器的方法,通过向句子中引入语法噪声和语义否定,并绘制“概念分离曲线”来可视化评估句子嵌入模型区分句子核心含义与表面变化的能力。
源自 arXiv: 2604.21555