HammerBench: Fine-Grained Function-Calling Evaluation in Real Mobile Device Scenarios
- URL: http://arxiv.org/abs/2412.16516v2
- Date: Mon, 17 Feb 2025 08:46:24 GMT
- Title: HammerBench: Fine-Grained Function-Calling Evaluation in Real Mobile Device Scenarios
- Authors: Jun Wang, Jiamu Zhou, Muning Wen, Xiaoyun Mo, Haoyu Zhang, Qiqiang Lin, Cheng Jin, Xihuai Wang, Weinan Zhang, Qiuying Peng, Jun Wang,
- Abstract summary: HammerBench is a novel framework for assessing mobile assistant function-calling capabilities in real-world, multi-turn dialogues.
Our experiments reveal that different types of parameter name errors are a significant source of failure across different interaction scenarios.
- Score: 31.43638572775755
- License:
- Abstract: Evaluating the performance of LLMs in multi-turn human-agent interactions presents significant challenges, particularly due to the complexity and variability of user behavior. In this paper, we introduce HammerBench, a novel benchmark framework for assessing LLMs' function-calling capabilities in real-world, multi-turn dialogues. HammerBench simulates diverse mobile assistant use cases, incorporating imperfect instructions, dynamic question-answer trajectories, intent and argument shifts, and the indirect use of external information through pronouns. To construct this benchmark, we curate a comprehensive dataset derived from popular mobile app functionalities and anonymized user logs, complemented by a cost-effective data generation pipeline leveraging open-source models. HammerBench is further augmented with fine-grained interaction snapshots and metrics, enabling detailed evaluation of function-calling performance across individual conversational turns. We demonstrate the effectiveness of HammerBench by evaluating several leading LLMs and uncovering key performance trends. Our experiments reveal that different types of parameter name errors are a significant source of failure across different interaction scenarios, highlighting critical areas for further improvement in LLM robustness for mobile assistant applications.
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