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Autores principales: Cho, Hakaze, Inoue, Naoya
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2501.15708
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author Cho, Hakaze
Inoue, Naoya
author_facet Cho, Hakaze
Inoue, Naoya
contents Classification tasks are widely investigated in the In-Context Learning (ICL) paradigm. However, current efforts are evaluated on disjoint benchmarks and settings, while their performances are significantly influenced by some trivial variables, such as prompt templates, data sampling, instructions, etc., which leads to significant inconsistencies in the results reported across various literature, preventing fair comparison or meta-analysis across different papers. Therefore, this paper proposes a standardized and easy-to-use evaluation toolkit (StaICC) for in-context classification. Including, for the normal classification task, we provide StaICC-Normal, selecting 10 widely used datasets, and generating prompts with a fixed form, to mitigate the variance among the experiment implementations. To enrich the usage of our benchmark, we also provide a sub-benchmark StaICC-Diag for diagnosing ICL from several aspects, aiming for a more robust inference processing.
format Preprint
id arxiv_https___arxiv_org_abs_2501_15708
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publishDate 2025
record_format arxiv
spellingShingle StaICC: Standardized Evaluation for Classification Task in In-context Learning
Cho, Hakaze
Inoue, Naoya
Computation and Language
Artificial Intelligence
Classification tasks are widely investigated in the In-Context Learning (ICL) paradigm. However, current efforts are evaluated on disjoint benchmarks and settings, while their performances are significantly influenced by some trivial variables, such as prompt templates, data sampling, instructions, etc., which leads to significant inconsistencies in the results reported across various literature, preventing fair comparison or meta-analysis across different papers. Therefore, this paper proposes a standardized and easy-to-use evaluation toolkit (StaICC) for in-context classification. Including, for the normal classification task, we provide StaICC-Normal, selecting 10 widely used datasets, and generating prompts with a fixed form, to mitigate the variance among the experiment implementations. To enrich the usage of our benchmark, we also provide a sub-benchmark StaICC-Diag for diagnosing ICL from several aspects, aiming for a more robust inference processing.
title StaICC: Standardized Evaluation for Classification Task in In-context Learning
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2501.15708