Papers by Yuqi Luo

8 papers
LightThinker: Thinking Step-by-Step Compression (2025.emnlp-main)

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Challenge: Recent advances in Large Language Models have demonstrated their remarkable capabilities in complex reasoning tasks, but their efficiency is hindered by the substantial memory and computational costs associated with generating lengthy tokens.
Approach: They propose a method that dynamically compresses verbose thought steps into compact representations and discards original reasoning chains.
Outcome: The proposed method reduces peak memory usage and inference time while maintaining competitive accuracy.
What Makes AI Research Replicable? Executable Knowledge Graphs as Scientific Knowledge Representations (2026.acl-short)

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Challenge: Existing approaches to replicate AI research are limited by insufficient background knowledge and the limitations of retrieval-augmented generation methods.
Approach: They propose a pluggable, paper-centric knowledge base that integrates code snippets and technical insights extracted from scientific literature into a verifiable, executable representation.
Outcome: The proposed knowledge base shows significant performance gains on paperBench when integrated into three agent frameworks with two different LLMs.
D-Artemis: A Deliberative Cognitive Framework for Mobile GUI Multi-Agents (2026.findings-acl)

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Challenge: Graphical User Interface (GUI) agents aim to automate a wide spectrum of human tasks by emulating user interaction.
Approach: They propose a deliberative framework that leverages a fine-grained tip retrieval mechanism to inform its decision-making process.
Outcome: The proposed framework achieves SOTA among open-source general models on AndroidWorld and ScreenSpot-V2 . it leverages a fine-grained, app-specific tip retrieval mechanism to inform its decision-making process .
Parallelism and Generation Order in Masked Diffusion Language Models: Limits Today, Potential Tomorrow (2026.findings-acl)

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Challenge: Autoregressive (AR) language models dominate modern natural language processing due to strong likelihood-based training objectives and reliable left-to-right decoding.
Approach: They characterize MDLM behavior along two dimensions: parallelism strength and generation order . authors propose a Generate-then-Edit paradigm that mitigates dependency loss .
Outcome: The proposed model improves on tasks that require "backward information" the Generate-then-Edit paradigm improves parallel decoding efficiency while reducing dependency loss.
Cross-Lingual Contrastive Learning for Fine-Grained Entity Typing for Low-Resource Languages (2022.acl-long)

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Challenge: Experimental results show that by applying our framework, we can easily learn effective FGET models for low-resource languages.
Approach: They propose a cross-lingual contrastive learning framework to learn FGET models for low-resource languages.
Outcome: The proposed framework can learn effective FGET models for low-resource languages even without human-labeled data.
Variator: Accelerating Pre-trained Models with Plug-and-Play Compression Modules (2023.findings-emnlp)

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Challenge: Large language models (LLMs) have been successful on NLP tasks but require huge parameter sizes and computational resources.
Approach: They propose a parameter-efficient acceleration method that enhances computational efficiency through plug-and-play compression plugins.
Outcome: The proposed method saves 53% computational costs using only 0.9% additional parameters with a performance drop of less than 2%.
Cognitive Alpha Mining via LLM-Driven Code-Based Evolution (2026.acl-long)

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Challenge: Existing approaches to finding effective predictive signals from financial data are limited by their complexity and low signal-to-noise ratio.
Approach: They propose a framework that combines code-level alpha representation with LLM-driven reasoning and evolutionary search.
Outcome: The proposed framework combines code-level alpha representation with LLM-driven reasoning and evolutionary search.
SessionIntentBench: A Multi-task Inter-session Intention-shift Modeling Benchmark for E-commerce Customer Behavior Understanding (2026.findings-acl)

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Challenge: Existing models fail to capture and model customer intention effectively because of insufficient information exploitation and only apparent information like descriptions and titles are used.
Approach: They propose to exploit existing session data to capture and model intention in E-commerce product purchase sessions using a multimodal benchmark.
Outcome: The proposed framework can bridge the gap between intention understanding in simplified research cases like co-buy intention and more complex yet practical scenarios like session history.

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