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Main Authors: Liu, Zhu, Hu, Zhen, Liu, Ying
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.12147
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author Liu, Zhu
Hu, Zhen
Liu, Ying
author_facet Liu, Zhu
Hu, Zhen
Liu, Ying
contents We present the results of our system for the CoMeDi Shared Task, which predicts majority votes (Subtask 1) and annotator disagreements (Subtask 2). Our approach combines model ensemble strategies with MLP-based and threshold-based methods trained on pretrained language models. Treating individual models as virtual annotators, we simulate the annotation process by designing aggregation measures that incorporate continuous relatedness scores and discrete classification labels to capture both majority and disagreement. Additionally, we employ anisotropy removal techniques to enhance performance. Experimental results demonstrate the effectiveness of our methods, particularly for Subtask 2. Notably, we find that standard deviation on continuous relatedness scores among different model manipulations correlates with human disagreement annotations compared to metrics on aggregated discrete labels. The code will be published at https://github.com/RyanLiut/CoMeDi_Solution.
format Preprint
id arxiv_https___arxiv_org_abs_2411_12147
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle JuniperLiu at CoMeDi Shared Task: Models as Annotators in Lexical Semantics Disagreements
Liu, Zhu
Hu, Zhen
Liu, Ying
Computation and Language
We present the results of our system for the CoMeDi Shared Task, which predicts majority votes (Subtask 1) and annotator disagreements (Subtask 2). Our approach combines model ensemble strategies with MLP-based and threshold-based methods trained on pretrained language models. Treating individual models as virtual annotators, we simulate the annotation process by designing aggregation measures that incorporate continuous relatedness scores and discrete classification labels to capture both majority and disagreement. Additionally, we employ anisotropy removal techniques to enhance performance. Experimental results demonstrate the effectiveness of our methods, particularly for Subtask 2. Notably, we find that standard deviation on continuous relatedness scores among different model manipulations correlates with human disagreement annotations compared to metrics on aggregated discrete labels. The code will be published at https://github.com/RyanLiut/CoMeDi_Solution.
title JuniperLiu at CoMeDi Shared Task: Models as Annotators in Lexical Semantics Disagreements
topic Computation and Language
url https://arxiv.org/abs/2411.12147