LMFingerprints: Visual Explanations of Language Model Embedding Spaces through Layerwise Contextualization Scores.

Publication date

2022-06

Authors

Sevastjanova, Rita
Kalouli, Aikaterini-Lida
Beck, Christin
Hauptmann, HannaORCID 0000-0002-6840-5341ISNI 0000000507309761
El-Assady, Mennatallah

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by_nc_nd

Abstract

Language models, such as BERT, construct multiple, contextualized embeddings for each word occurrence in a corpus. Understanding how the contextualization propagates through the model's layers is crucial for deciding which layers to use for a specific analysis task. Currently, most embedding spaces are explained by probing classifiers; however, some findings remain inconclusive. In this paper, we present LMFingerprints, a novel scoring-based technique for the explanation of contextualized word embeddings. We introduce two categories of scoring functions, which measure (1) the degree of contextualization, i.e., the layerwise changes in the embedding vectors, and (2) the type of contextualization, i.e., the captured context information. We integrate these scores into an interactive explanation workspace. By combining visual and verbal elements, we provide an overview of contextualization in six popular transformer-based language models. We evaluate hypotheses from the domain of computational linguistics, and our results not only confirm findings from related work but also reveal new aspects about the information captured in the embedding spaces. For instance, we show that while numbers are poorly contextualized, stopwords have an unexpected high contextualization in the models' upper layers, where their neighborhoods shift from similar functionality tokens to tokens that contribute to the meaning of the surrounding sentences.

Keywords

CCS Concepts, Information visualization, Human-centered computing → Visual analytics, Computer Graphics and Computer-Aided Design

Citation

Sevastjanova, R, Kalouli, A-L, Beck, C, Hauptmann, H & El-Assady, M 2022, 'LMFingerprints: Visual Explanations of Language Model Embedding Spaces through Layerwise Contextualization Scores.', Computer Graphics Forum, vol. 41, no. 3, pp. 295-307. https://doi.org/10.1111/cgf.14541