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KIT-19: A Comprehensive Korean Instruction Toolkit on 19 Tasks for Fine-Tuning Korean Large Language Models

Introduction

In the current landscape of language models, achieving high performance in Korean NLP tasks requires specialized instruction datasets tailored to the unique aspects of the Korean language. To address the scarcity of such datasets, we introduce KIT-19, a comprehensive Korean Instruction Toolkit that encompasses 19 distinct tasks for fine-tuning Korean Large Language Models (LLMs). Unlike existing datasets that largely rely on translated instructions or outputs from models like ChatGPT, KIT-19 is meticulously crafted to capture the nuances of Korean language and culture, offering a robust foundation for advancing Korean LLMs.

Overview of KIT-19 Datasets

KIT-19 amalgamates 19 existing open-source datasets, each converted into an instruction format to facilitate instruction tuning for Korean LLMs. Here's a brief overview of the datasets included in KIT-19:

Task Category Datasets Included
Hate Speech Detection APEACH, UnSmile, HateScore
Boolean Question Answering (QA) KoBEST_BoolQ
Natural Language Inference (NLI) KoBEST_COPA, korNLI
Text Generation KoBEST_HellaSwag, kowiki_text
Semantic Textual Similarity (STS) korSTS, pawsx_paraphr, ParaKQC, KoBEST_WIC, Style_KQC, Question_Pair
Sentiment Analysis (SA) NSMC
Intent Argument Extraction sae4k_sum, petitions_archive
Math math_korean
Closed Book QA kowiki_text (utilized differently for Closed Book QA and Text Generation)
Summarization lbox_summarization

Each dataset is selected and formated to ensure a wide coverage of tasks and scenarios relevant to the Korean language, making KIT-19 an exhaustive resource for developing and fine-tuning Korean LLMs.

Fine-Tuned Models

To demonstrate the effectiveness of KIT-19, we have fine-tuned representative Korean Pretrained LLMs, including Polyglot-Ko-5.8b and Polyglot-Ko-1.3b. The fine-tuned models showcase significant performance improvements across a variety of benchmark datasets:

  • KoBEST_COPA
  • KoBEST_BoolQ
  • KoBEST_HellaSwag
  • KLUE_STS
  • KoBEST_SentiNeg
  • KLUE_YNAT

The experimental results affirm that models trained with KIT-19 significantly outperform existing Korean LLMs, highlighting the potency and necessity of instruction datasets crafted specifically for the Korean language.

Benchmark Performance

Below is the performance comparison of different models on various benchmark datasets. The models trained with KIT-19 (KIT-5.8b and KIT-1.3b) are compared against Polyglot-Ko-1.3b, Polyglot-Ko-5.8b, KoAlpaca-5.8b, and Kullm-polyglot-5.8b-v2.

Benchmark Dataset Metric Polyglot-ko-1.3b Polyglot-ko-5.8b KoAlpaca-5.8B kullm-polyglot-5.8b-v2 KIT-5.8b KIT-1.3b
KoBEST_COPA ACC 72.00% 77.60% 69.80% 76.60% 91.60% 83.80%
F1 (macro) 71.96% 77.55% 69.77% 76.53% 91.59% 83.78%
KoBEST_BoolQ ACC 49.86% 53.63% 56.34% 50.28% 66.24% 50.71%
F1 (macro) 35.52% 43.56% 50.64% 33.71% 66.14% 34.78%
KoBEST_HellaSwag ACC 40.60% 48.80% 38.20% 44.40% 97.60% 81.60%
ACC_Norm 53.00% 59.80% 46.20% 55.20% 98.20% 89.80%
F1 (macro) 40.13% 48.53% 38.15% 44.25% 97.61% 81.49%
KLUE_STS ACC 42.39% 45.28% 51.83% 42.39% 65.51% 42.20%
F1 59.54% 60.34% 33.86% 59.54% 69.71% 56.52%
KoBEST_SentiNeg ACC 69.27% 50.38% 38.79% 50.38% 71.54% 80.86%
F1 68.19% 33.95% 38.48% 33.50% 68.98% 80.86%
KLUE_YNAT F1 33.24% 33.62% 20.91% 32.20% 28.15% 38.34%

Bold results indicate the best performance in each category.

Conclusion and Future Work

KIT-19 stands as a pivotal development in the Korean NLP landscape, addressing the critical need for comprehensive instruction datasets that encapsulate the linguistic and cultural intricacies of the Korean language. With KIT-19, we aim to push the boundaries of what's possible with Korean LLMs, laying a solid foundation for future advancements in the field.

We are committed to continuously expanding KIT-19 to cover more domains and further enhance the generability of Korean LLMs. Our hope is that KIT-19 not only serves as a valuable resource for NLP practitioners but also inspires further research and development within the Korean NLP community.

The KIT-19 dataset and the fine-tuned models are publicly available for research and development purposes, fueling advancements in Korean language modeling and applications.


For more information, access to the datasets, and models, please visit our GitHub repository.

Contributors: Dongjun Jang, Sungjoo Byun, Hyemi Jo, Hyopil Shin from the Department of Linguistics, Seoul National University

This work is supported by the linguistic insights and technological advances in NLP and aims to contribute to the broader academic and practical applications of language models.