Challenge: Recent studies focus on optimizing the agent team or employing self-reflection to iteratively solve complex tasks.
Approach: They propose a hierarchical multi-agent framework that uses 360 assessment to accumulate experience through fine-grained assessment.
Outcome: The proposed framework is based on corporate organizational practices and employs a dual-level experience pool for agents to accumulate experience through fine-grained assessment.

Similar Papers

Benchmark Self-Evolving: A Multi-Agent Framework for Dynamic LLM Evaluation (2025.coling-main)

Copied to clipboard

Challenge: Recent advances in Large Language Models have demonstrated remarkable performance across tasks.
Approach: They propose a benchmark self-evolving framework to dynamically evaluate rapidly advancing Large Language Models.
Outcome: The proposed framework extends existing benchmarks to extend models across tasks and tasks.
AgentGym: Evaluating and Training Large Language Model-based Agents across Diverse Environments (2025.acl-long)

Copied to clipboard

Challenge: Large language models (LLMs) are promising foundations to build generally-capable agents . however, the community lacks a unified interactive framework that covers diverse environments for comprehensive evaluation of agents.
Approach: They propose a framework that features 7 real-world scenarios, 14 environments, and 89 tasks for unified, real-time, and concurrent agent interaction.
Outcome: The proposed framework features 7 real-world scenarios, 14 environments, and 89 tasks for unified, real-time, and concurrent agent interaction.
An Evaluation Mechanism of LLM-based Agents on Manipulating APIs (2024.findings-emnlp)

Copied to clipboard

Challenge: Large Language Models (LLMs) have remarkable capabilities across a variety of tasks, such as language, mathematics, coding, and etc.
Approach: They propose to decompose tool use capability into seven aspects and form a thorough evaluation schema for generic agents.
Outcome: The proposed agent acts like a super-APP and can manipulate API-based tools.
Agentic CLEAR: Automating Multi-Level Evaluation of LLM Agents (2026.acl-demo)

Copied to clipboard

Challenge: Agentic systems are becoming more capable of defining strategies, taking actions, and solving complex, multi-step tasks.
Approach: They propose an automatic, dynamic, and easy-to-use evaluation framework that provides textual insights into agent behavior on three levels of granularity: system, trace, and node.
Outcome: The proposed framework produces high-quality, data-driven, insightful feedback on system, trace, and node.
From Storage to Experience: A Survey on the Evolution of LLM Agent Memory Mechanisms (2026.findings-acl)

Copied to clipboard

Challenge: Large Language Models (LLMs)-based agents have fundamentally reshaped artificial intelligence . however, the inherent statelessness of LLMs hinders their ability to maintain logical consistency across complex, multi-step tasks .
Approach: They propose a framework for LLM agent memory mechanisms that formalizes the development process into three stages: storage, reflection, and experience.
Outcome: The proposed framework breaks the development process into three stages . it analyzes the need for long-range consistency, challenges in dynamic environments, and the ultimate goal of continual learning.
MMAU: A Holistic Benchmark of Agent Capabilities Across Diverse Domains (2025.findings-naacl)

Copied to clipboard

Challenge: Existing benchmarks focus on specific application scenarios, emphasizing task completion but failing to dissect the underlying skills that drive these outcomes.
Approach: They propose a Massive Multitask Agent Understanding benchmark that evaluates LLMs across five domains and offline tasks.
Outcome: The Massive Multitask Agent Understanding (MMAU) benchmark evaluates models across five domains including Tool-use, Directed Acyclic Graph (DAG) QA, Data Science and Machine Learning coding, Contest-level programming and Mathematics.
A Survey on Evaluation of LLM-based Agents (2026.findings-acl)

Copied to clipboard

Challenge: This paper provides the first comprehensive survey of evaluation methods for LLM-based agents . LLMs are static, having fixed knowledge, and confined to text-to-text interaction.
Approach: They analyze the evaluation of LLM-based agents across five perspectives . they identify current trends and key gaps in evaluation methods .
Outcome: The proposed evaluation frameworks and tools are based on five perspectives . the results highlight current trends and identify gaps in future research .
Creativity in LLM-based Multi-Agent Systems: A Survey (2025.emnlp-main)

Copied to clipboard

Challenge: Large language model (LLM)-driven multi-agent systems (MAS) are transforming how humans and AIs collaboratively generate ideas and artifacts.
Approach: They present a taxonomy of agent proactivity and persona design and an overview of generation techniques.
Outcome: The proposed framework and roadmap offers a roadmap for advancing the development, evaluation, and standardization of creative MAS.
COMPASS: Enhancing Agent Long-Horizon Reasoning with Evolving Context (2026.acl-long)

Copied to clipboard

Challenge: Long-horizon tasks that require sustained reasoning and multiple tool interactions remain challenging for LLM agents.
Approach: They propose a framework that separates tactical execution, strategic oversight, and context organization into three specialized components.
Outcome: The proposed framework improves accuracy by 20% relative to baselines on GAIA, BrowseComp, and Humanity’s Last Exam tasks.
LLM Agents at the Roundtable: A Multi-Perspective and Dialectical Reasoning Framework for Essay Scoring (2025.findings-emnlp)

Copied to clipboard

Challenge: a new framework for automated essay scoring is needed to achieve multi-perspective understanding and judgment.
Approach: They propose a roundtable essay scoring framework that performs precise and human-aligned scoring under a zero-shot setting.
Outcome: The proposed framework outperforms previous zero-shot AES approaches by enabling collaboration among agents with diverse evaluation perspectives.

What is GenGO?

GenGO is an NLP powered publication search system. It currenctly indexes 30k+ papers from ACL Anthology, and implements multi-aspect summarization, semantic search, and more!

Information

About
Limitations