Search Results for author: Takyoung Kim

Found 8 papers, 3 papers with code

Premise-Augmented Reasoning Chains Improve Error Identification in Math reasoning with LLMs

no code implementations4 Feb 2025 Sagnik Mukherjee, Abhinav Chinta, Takyoung Kim, Tarun Anoop Sharma, Dilek Hakkani Tur

We restructure conventional linear reasoning chains into Premise Augmented Reasoning Chains (PARC) by introducing premise links, resulting in a directed acyclic graph where the nodes are the steps and the edges are the premise links.

Math Mathematical Reasoning

Learning to Explore and Select for Coverage-Conditioned Retrieval-Augmented Generation

1 code implementation1 Jul 2024 Takyoung Kim, Kyungjae Lee, Young Rok Jang, Ji Yong Cho, Gangwoo Kim, Minseok Cho, Moontae Lee

To systematically create and evaluate these outlines, we introduce QTree, a dataset of 10K hierarchical sets of information-seeking subqueries that define structured boundaries for outline creation and evaluation in $C^2$ scenarios.

Language Modeling Language Modelling +2

KoSBi: A Dataset for Mitigating Social Bias Risks Towards Safer Large Language Model Application

1 code implementation28 May 2023 Hwaran Lee, Seokhee Hong, Joonsuk Park, Takyoung Kim, Gunhee Kim, Jung-Woo Ha

Large language models (LLMs) learn not only natural text generation abilities but also social biases against different demographic groups from real-world data.

Language Modeling Language Modelling +2

Revealing User Familiarity Bias in Task-Oriented Dialogue via Interactive Evaluation

no code implementations23 May 2023 Takyoung Kim, Jamin Shin, Young-Ho Kim, Sanghwan Bae, Sungdong Kim

Most task-oriented dialogue (TOD) benchmarks assume users that know exactly how to use the system by constraining the user behaviors within the system's capabilities via strict user goals, namely "user familiarity" bias.

DSTEA: Improving Dialogue State Tracking via Entity Adaptive Pre-training

no code implementations8 Jul 2022 Yukyung Lee, Takyoung Kim, Hoonsang Yoon, Pilsung Kang, Junseong Bang, Misuk Kim

Dialogue State Tracking (DST) is critical for comprehensively interpreting user and system utterances, thereby forming the cornerstone of efficient dialogue systems.

Dialogue State Tracking named-entity-recognition +1

Mismatch between Multi-turn Dialogue and its Evaluation Metric in Dialogue State Tracking

no code implementations ACL 2022 Takyoung Kim, Hoonsang Yoon, Yukyung Lee, Pilsung Kang, Misuk Kim

Dialogue state tracking (DST) aims to extract essential information from multi-turn dialogue situations and take appropriate actions.

Dialogue State Tracking

Oh My Mistake!: Toward Realistic Dialogue State Tracking including Turnback Utterances

no code implementations28 Aug 2021 Takyoung Kim, Yukyung Lee, Hoonsang Yoon, Pilsung Kang, Junseong Bang, Misuk Kim

The primary purpose of dialogue state tracking (DST), a critical component of an end-to-end conversational system, is to build a model that responds well to real-world situations.

Dialogue State Tracking

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