Computer Science ›› 2026, Vol. 53 ›› Issue (7): 101-117.doi: 10.11896/jsjkx.251000089
• Artificial Intelligence • Previous Articles Next Articles
WANG Xinlin1,2, LI Yan1, MA Chaofan3, LI Shuo1
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| [1]SINGHAL K,TU T,GOTTWEIS J,et al.Toward expert-levelmedical question answering with large language models[J].Nature Medicine,2025,31(3):943-950. [2]JI Z,LEE N,FRIESKE R,et al.Survey of hallucination in natural language generation[J].ACM Computing Surveys,2023,55(12):1-38. [3]HUE J,SHEN Y,WALLIS P,et al.LoRA:Low-Rank Adapta-tion of Large Language Models[J].arXiv:2106.09685,2021. [4]GEKHMAN Z,YONA G,AHARONI R,et al.Does Fine-Tuning LLMs on New Knowledge Encourage Hallucinations?[J].arXiv:2405.05904,2024. [5]ZHAI Y,TONG S,LI X,et al.Investigating the Catastrophic Forgetting in Multimodal Large Language Model Fine-Tuning[C]//Proceedings of the Conference on Parsimony and Lear-ning.2024:202-227. [6]LEWIS P,PEREZ E,PIKTUS A,et al.Retrieval-Augmented Generation for Knowledge-Intensive NLP Tasks[J].arXiv:2005.11401,2020. [7]ROBERTSON S,ZARAGOZA H.The Probabilistic Relevance Framework:BM25 and Beyond[J].Foundations and Trends © in Information Retrieval,2009,3(4):333-389. [8]SPÄRCK JONES K.A statistical interpretation of term specificity and its application in retrieval[J].Journal of Documentation,2004,60(5):493-502. [9]KARPUKHIN V,OČUZ B,MIN S,et al.Dense Passage Re-trieval for Open-Domain Question Answering[C]//Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing.ACL,2020:6769-6781. [10]IZACARD G,CARON M,HOSSEINI L,et al.Unsupervised Dense Information Retrieval with Contrastive Learning[J].ar-Xiv:2112.09118,2021. [11]GAO Y,XIONG Y,GAO X,et al.Retrieval-augmented generation for large language models:A survey[J].arXiv:2312.10997,2023. [12]FAN W,DING Y,NING L,et al.A survey on rag meeting llms:Towards retrieval-augmented large language models[C]//Proceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining.2024:6491-6501. [13]ZHAO S,YANG Y,WANG Z,et al.Retrieval augmented generation(rag) and beyond:A comprehensive survey on how to make your llms use external data more wisely[J].arXiv:2409.14924,2024. [14]ZHANG Q,CHEN S,BEI Y,et al.A survey of graph retrieval-augmented generation for customized large language models[J].arXiv:2501.13958,2025. [15]SINGH A,EHTESHAM A,KUMAR S,et al.Agentic retrieval-augmented generation:A survey on agentic rag[J].arXiv:2501.09136,2025. [16]QIAN H,LIU Z,MAO K,et al.Grounding Language Model with Chunking-Free In-Context Retrieval[J].arXiv:2402.09760,2024. [17]LUO K,LIU Z,XIAO S,et al.BGE Landmark Embedding:A Chunking-Free Embedding Method For Retrieval Augmented Long-Context Large Language Models[J].arXiv:2402.11573,2024. [18]ZHONG Z,LIU H,CUI X,et al.Mix-of-Granularity:Optimize the Chunking Granularity for Retrieval-Augmented Generation[J].arXiv:2406.00456,2025. [19]DUARTEA V,MARQUES J,GRAÇA M,et al.Lumber Chun-ker:Long-Form Narrative Document Segmentation[J].arXiv:2406.17526,2024. [20]TRIPATHI V,ODAPALLY T,DAS I,et al.Vision-Guided Chunking Is All You Need:Enhancing RAG with Multimodal Document Understanding[J].arXiv:2506.16035,2025. [21]SHENG B,YAO J,ZHANG M,et al.Dynamic Chunking and Selection for Reading Comprehension of Ultra-Long Context in Large Language Models[J].arXiv:2506.00773,2025. [22]GÜNTHER M,MOHR I,WILLIAMS D J,et al.Late Chunking:Contextual Chunk Embeddings Using Long-Context Embedding Models[J].arXiv:2409.04701,2025. [23]FENG J,TAO C,GENG X,et al.Synergistic Interplay between Search and Large Language Models for Information Retrieval[J].arXiv:2305.07402,2023. [24]WANG K,REIMERS N,GUREVYCH I.DAPR:A Benchmark on Document-Aware Passage Retrieval[J].arXiv:2305.13915,2024. [25]JIANG Z,XU F F,GAO L,et al.Active Retrieval Augmented Generation[J].arXiv:2305.06983,2023. [26]JEONG S,BAEK J,CHO S,et al.Adaptive-RAG:Learning to Adapt Retrieval-Augmented Large Language Models through Question Complexity[J].arXiv:2403.14403,2024. [27]ASAI A,WU Z,WANG Y,et al.Self-RAG:Learning to Re-trieve,Generate,and Critique through Self-Reflection[J].arXiv:2310.11511,2023. [28]WANG L,YANG N,HUANG X,et al.SimLM:Pre-trainingwith Representation Bottleneck for Dense Passage Retrieval[J].arXiv:2207.02578,2023. [29]ZHANG L,YU Y,WANG K,et al.ARL2:Aligning Retrievers for Black-box Large Language Models via Self-guided Adaptive Relevance Labeling[J].arXiv:2402.13542,2024. [30]KE Z,KONG W,LI C,et al.Bridging the Preference Gap between Retrievers and LLMs[J].arXiv:2401.06954,2024. [31]CHENG X,LUO D,CHEN X,et al.Lift Yourself Up:Retrieval-augmented Text Generation with Self Memory[J].arXiv:2305.02437,2023. [32]GUU K,LEE K,TUNG Z,et al.REALM:Retrieval-Augmented Language Model Pre-Training[J].arXiv:2002.08909,2020. [33]CHENG X,WANG X,ZHANG X,et al.xRAG:Extreme Context Compression for Retrieval-augmented Generation with One Token[J].arXiv:2405.13792,2024. [34]CHANG C Y,JIANG Z,RAKESH V,et al.MAIN-RAG:Multi-Agent Filtering Retrieval-Augmented Generation[J].arXiv:2501.00332,2024. [35]ZHU K,FENG X,DU X,et al.An Information Bottleneck Perspective for Effective Noise Filtering on Retrieval-Augmented Generation[J].arXiv:2406.01549,2024. [36]JIANG H,WU Q,LIN C Y,et al.LLMLingua:Compressing Prompts for Accelerated Inference of Large Language Models[C]//Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing.Association for Computational Linguistics,2023:13358-13376. [37]PAN Z,WU Q,JIANG H,et al.LLMLingua-2:Data Distillationfor Efficient and Faithful Task-Agnostic Prompt Compression[J].arXiv:2403.12968,2024. [38]WANG Z,ARAKI J,JIANG Z,et al.Learning to Filter Context for Retrieval-Augmented Generation[J].arXiv:2311.08337,2023. [39]XU F,SHI W,CHOI E.RECOMP:Improving Retrieval-Aug-mented LMs with Compression and Selective Augmentation[J].arXiv:2310.04408,2023. [40]SHI K,SUN X,LI Q,et al.Compressing Long Context for Enhancing RAG with AMR-based Concept Distillation[J].arXiv:2405.03085,2024. [41]JUNG D,LIU Q,HUANG T,et al.Familiarity-Aware Evidence Compression for Retrieval-Augmented Generation[J].arXiv:2409.12468,2024. [42]RAU D,WANG S,DÉJEAN H,et al.Context Embeddings for Efficient Answer Generation in RAG[J].arXiv:2407.09252,2024. [43]HAN H,WANG Y,SHOMER H,et al.Retrieval-Augmented Generation with Graphs(GraphRAG)[J].arXiv:2501.00309,2025. [44]LIANG L,BO Z,GUI Z,et al.Kag:Boosting llms in professional domains via knowledge augmented generation[C]//Companion Proceedings of the ACM on Web Conference 2025.2025:334-343. [45]GUAN X,LIU Y,LIN H,et al.Mitigating large language model hallucinations via autonomous knowledge graph-based retrofitting[C]//Proceedings of the AAAI Conference on Artificial Intelligence.2024:18126-18134. [46]LAIRGI Y,MONCLA L,CAZABET R,et al.iText2KG:Incremental Knowledge Graphs Construction Using Large Language Models[J].arXiv:2409.03284,2024. [47]CAO Y,HAN S,GAO Z,et al.Graph Insight:Unlocking In-sights in Large Language Models for Graph Structure Understanding[J].arXiv:2409.03258,2024. [48]ZHOU C,WANG Z,CHEN S,et al.Large Language Modelsbased Graph Convolution for Text-Attributed Networks [EB/OL].[2026-04-10].https://openreview.net/forum?id=x5FfUvsLIE. [49]CHENG K,AHMED N K,WILLKE T,et al.Structure Guided Prompt:Instructing Large Language Model in Multi-Step Reasoning by Exploring Graph Structure of the Text[J].arXiv:2402.13415,2024. [50]XU D,LI X,ZHANG Z,et al.Harnessing Large Language Mo-dels for Knowledge Graph Question Answering via Adaptive Multi-Aspect Retrieval-Augmentation[J].arXiv:2412.18537,2025. [51]LI S,HE Y,GUO H,et al.GraphReader:Building Graph-based Agent to Enhance Long-Context Abilities of Large Language Models[J].arXiv:2406.14550,2024. [52]SHEN T,CAMBRIA E,WANG J,et al.Insight at the right spot:Provide decisive subgraph information to Graph LLM with reinforcement learning[J].Information Fusion,2025,117:102860. [53]LIU H,WANG S,ZHU Y,et al.Knowledge Graph-EnhancedLarge Language Models via Path Selection[C]//Findings of the Association for Computational Linguistics:ACL 2024.Bangkok,Association for Computational Linguistics,2024:6311-6321. [54]THAKUR N,REIMERS N,RÜCKLÉ A,et al.Beir:A heterogenous benchmark for zero-shot evaluation of information retrieval models[J].arXiv:2104.08663,2021. [55]NGUYEN T,ROSENBERG M,SONG X,et al.Ms marco:Ahuman-generated machine reading comprehension dataset[J].arXiv:1611.09268,2016. [56]CRASWELL N,MITRA B,YILMAZ E,et al.Overview of theTREC 2022 deep learning track[J].arXiv:2507.10865,2025. [57]TRIVEDI H,BALASUBRAMANIAN N,KHOT T,et al.MuSiQue:Multihop Questions via Single-hop Question Composition[J].Transactions of the Association for Computational Linguistics,2022,10:539-554. [58]HO X,NGUYEN A K D,SUGAWARA S,et al.Constructing a multi-hop qa dataset for comprehensive evaluation of reasoning steps[J].arXiv:2011.01060,2020. [59]YANG Z,QI P,ZHANG S,et al.HotpotQA:A dataset for diverse,explainable multi-hop question answering[C]//Procee-dings of the 2018 Conference on Empirical Methods in Natural Language Processing.2018:2369-2380. [60]FRIEL R,BELYI M,SANYAL A.Ragbench:Explainablebenchmark for retrieval-augmented generation systems[J].ar-Xiv:2407.11005,2024. [61]KWIATKOWSKI T,PALOMAKI J,REDFIELD O,et al.Natural questions:a benchmark for question answering research[J].Transactions of the Association for Computational Linguistics,2019,7:453-466. [62]JOSHI M,CHOI E,WELD D S,et al.Triviaqa:A large scaledistantly supervised challenge dataset for reading comprehension[J].arXiv:1705.03551,2017. [63]RAJPURKA R P,ZHANG J,LOPYREV K,et al.Squad:100 000+ questions for machine comprehension of text[J].arXiv:1606.05250,2016. [64]BERANT J,CHOU A,FROSTIG R,et al.Semantic parsing on freebase from question-answer pairs[C]//Proceedings of the 2013 Conference on Empirical Methods in Natural Language Processing.2013:1533-1544. [65]MALLEN A,ASAI A,ZHONG V,et al.When not to trust lan-guage models:Investigating effectiveness of parametric and non-parametric memories[C]//Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics.2023:9802-9822. [66]FAN A,JERNITE Y,PEREZ E,et al.ELI5:Long form question answering[J].arXiv:1907.09190,2019. [67]KOČISKÝT,SCHWARZ J,BLUNSOM P,et al.The narrativeqa reading comprehension challenge[J].Transactions of the Association for Computational Linguistics,2018,6:317-328. [68]STELMAKH I,LUAN Y,DHINGRA B,et al.ASQA:Factoid questions meet long-form answers[J].arXiv:2204.06092,2022. [69]ZHONG M,YIN D,YU T,et al.QMSum:A new benchmark for query-based multi-domain meeting summarization[C]//Procee-dings of the 2021 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies.2021:5905-5921. [70]DASIGI P,LO K,BELTAGY I,et al.A dataset of information-seeking questions and answers anchored in research papers[J].arXiv:2105.03011,2021. [71]MÖLLER T,REINA A,JAYAKUMAR R,et al.COVID-QA:A question answering dataset for COVID-19[C]//Proceedings of the 1st Workshop on NLP for COVID-19 at ACL 2020.2020. [72]WANG X,CHEN G,DINGJIE S,et al.Cmb:A comprehensive medical benchmark in chinese[C]//Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies.2024:6184-6205. [73]PANGR Y,PARRISH A,JOSHI N,et al.QuALITY:Question answering with long input texts,yes![C]//Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies.2022:5336-5358. [74]TALMOR A,HERZIG J,LOURIE N,et al.Commonsenseqa:A question answering challenge targeting commonsense knowledge[C]//Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics:Human Language Technologies.2019:4149-4158. [75]HE X,TIAN Y,SUN Y,et al.G-retriever:Retrieval-augmented generation for textual graph understanding and question answe-ring[J].Advances in Neural Information Processing Systems,2024,37:132876-132907. [76]LI S,JI H,HAN J.Document-level event argument extractionby conditional generation[J].arXiv:2104.05919,2021. [77]EBNER S,XIA P,CULKIN R,et al.Multi-sentence argument linking[C]//Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics.2020:8057-8077. [78]DINAN E,ROLLER S,SHUSTER K,et al.Wizard of wikipedia:Knowledge-powered conversational agents[J].arXiv:1811.01241,2018. [79]WANG H,HU M,DENG Y,et al.Large language models assource planner for personalized knowledge-grounded dialogue[J].arXiv:2310.08840,2023. [80]XU X,GOU Z,WU W,et al.Long time no see! open-domain conversation with long-term persona memory[J].arXiv:2203.05797,2022. [81]WENT H,GASIC M,MRKIĆ N,et al.Conditional generation and snapshot learning in neural dialogue systems[C]//Procee-dings of the 2016 Conference on Empirical Methods in Natural Language Processing.2016:2153-2162. [82]HAYASHI H,BUDANIA P,WANG P,et al.Wikiasp:A dataset for multi-domain aspect-based summarization[J].Transactions of the Association for Computational Linguistics,2021,9:211-225. [83]NARAYAN S,COHEN S B,LAPATA M.Don’t give me the details,just the summary! topic-aware convolutional neural networks for extreme summarization[J].arXiv:1808.08745,2018. [84]THORNE J,VLACHOS A,CHRISTODOULOPOULOS C,et al.FEVER:a large-scale dataset for fact extraction and VERification[J].arXiv:1803.05355,2018. [85]KOTONYA N,TONI F.Explainable automated fact-checkingfor public health claims[J].arXiv:2010.09926,2020. [86]GEVA M,KHASHABI D,SEGAL E,et al.Did aristotle use a laptop? a question answering benchmark with implicit reasoning strategies[J].Transactions of the Association for Computational Linguistics,2021,9:346-361. [87]DI PALMA D.Retrieval-augmented Recommender System:Enhancing Recommender Systems with Large Language Models [C]//Proceedings of the 17th ACM Conference on Recommender Systems.Association for Computing Machinery,2023:1-8. [88]LU Y,BAO J,SONG Y,et al.RevCore:Review-augmented Conversational Recommendation[J].arXiv:2106.00957,2021. [89]WU J,CHANG C C,YU T,et al.CoRAL:Collaborative Re-trieval-Augmented Large Language Models Improve Long-tail Recommendation[J].arXiv:2403.06447,2024. [90]PARVEZM R,AHMAD W U,CHAKRABORTY S,et al.Retrieval Augmented Code Generation and Summarization[J].arXiv:2108.11601,2021. [91]POESIA G,POLOZOV O,LE V,et al.Synchromesh:Reliable code generation from pre-trained language models[J].arXiv:2201.11227,2022. [92]ZHOU S,ALON U,XU F F,et al.DocPrompting:Generating Code by Retrieving the Docs[J].arXiv:2207.05987,2023. [93]NASHID N,SINTAHA M,MESBAH A.Retrieval-BasedPrompt Selection for Code-Related Few-Shot Learning[C]//2023 IEEE/ACM 45th International Conference on Software Engineering(ICSE).2023:2450-2462. [94]SHI P,ZHANG R,BAI H,et al.XRICL:Cross-lingual Retrie-val-Augmented In-Context Learning for Cross-lingual Text-to-SQL Semantic Parsing[C]//Findings of the Association for Computational Linguistics:EMNLP 2022.Association for Computational Linguistics,2022:5248-5259. [95]LI H,SU J,CHEN Y,et al.SheetCopilot:Bringing Software Productivity to the Next Level through Large Language Models[J].arXiv:2305.19308,2023. [96]YE Y,HUI B,YANG M,et al.Large Language Models are Ver-satile Decomposers:Decompose Evidence and Questions for Table-based Reasoning[J].arXiv:2301.13808,2023. [97]LI J,LIU Y,FAN W,et al.Empowering Molecule Discovery for Molecule-Caption Translation with Large Language Models:A ChatGPT Perspective[J].IEEE Transactions on Knowledge and Data Engineering,2024,36(11):6071-6083. [98]LIU S,NIE W,WANG C,et al.Multi-modal Molecule Struc-ture-text Model for Text-based Retrieval and Editing[J].arXiv:2212.10789,2024. [99]WANG Z ,NIE W,QIAO Z,et al.Retrieval-based Controllable Molecule Generation[J].arXiv:2208.11126,2023. [100]WANG Z,WANG Z,SRINIVASAN B,et al.BioBridge:Bridging Biomedical Foundation Models via Knowledge Graphs[J].arXiv:2310.03320,2024. [101]YANG L,HUANG Z,ZHOU X,et al.Prompt-based 3d molecular diffusion models for structure-based drug design [EB/OL].[2026-04-10].https://openreview.net/forum?id=FWsGuAFn3n. [102]LI X,LI Z,SHI C,et al.AlphaFin:Benchmarking FinancialAnalysis with Retrieval-Augmented Stock-Chain Framework[J].arXiv:2403.12582,2024. [103]ZHANG B,YANG H,ZHOU T,et al.Enhancing Financial Sentiment Analysis via Retrieval Augmented Large Language Mo-dels[C]//Proceedings of the Fourth ACM International Confe-rence on AI in Finance.New York:ACM,2023:349-356. [104]YEPESA J,YOU Y,MILCZEK J,et al.Financial Report Chunking for Effective Retrieval Augmented Generation[J].arXiv:2402.05131,2024. [105]RADFORD A,KIM J W,HALLACY C,et al.Learning transferable visual models from natural language supervision[C]//International Conference on Machine Learning.PMLR,2021:8748-8763. [106]CHEN W,HU H,CHEN X,et al.Murag:Multimodal retrieval-augmented generator for open question answering over images and text[C]//Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing.2022:5558-5570. [107]DRUSHCHAK N,POLYAKOVSKA N,BAUTINA M,et al.Multimodal Retrieval-Augmented Generation:Unified Information Processing Across Text,Image,Table,and Video Modalities[C]//Proceedings of the 1st Workshop on Multimodal Augmented Generation via Multimodal Retrieval(MAGMaR 2025).2025:59-64. [108]ZHAI W.Self-adaptive Multimodal Retrieval-Augmented Ge-neration[J].arXiv:2410.11321,2024. [109]YASUNAGA M,AGHAJANYAN A,SHI W,et al.Retrieval-Augmented Multimodal Language Modeling[J].arXiv:2211.12561,2022. [110]LI J,LI D,SAVARESE S,et al.BLIP-2:Bootstrapping Language-Image Pre-training with Frozen Image Encoders and Large Language Models[J].arXiv:2301.12597,2023. [111]ZHU W,YAN A,LU Y,et al.Visualize before you write:Imagination-guided open-ended text generation[C]//Findings of the Association for Computational Linguistics:EACL 2023.2023:78-92. [112]CHAND M,GHOSH S,RASTROW A,et al.Using External Off-Policy Speech-To-Text Mappings in Contextual End-To-End Automated Speech Recognition[J].arXiv:2301.02736,2023. [113]ZHAO J,HAFFARI G,SHAREGHI E.Generating synthetic speech from SpokenVocab for speech translation[C]//Findings of the Association for Computational Linguistics:EACL 2023.2023:1975-1981. [114]YANG A,NAGRANI A,SEO P H,et al.Vid2seq:Large-scale pretraining of a visual language model for dense video captioning[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition.2023:10714-10726. [115]Building Effective Agents [EB/OL].[2025-02-02].https://www.anthropic.com/research/building-effective-agents. [116]WANG Z,LIU A,LIN H,et al.RAT:Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Horizon Generation[J].arXiv:2403.05313,2024. [117]LIANG T,HE Z,JIAO W,et al.Encouraging Divergent Thinking in Large Language Models through Multi-Agent Debate[J].arXiv:2305.19118,2023. [118]CHEN J,SAHA S,BANSAL M.Reconcile:Round-table conference improves reasoning via consensus among diverse llms[C]//Proceedings of the 62nd Annual Meeting of the Association for Computational Linguistics.2024:7066-7085. [119]DU Y,LI S,TORRALBA A,et al.Improving factuality and reasoning in language models through multiagent debate[C]//Forty-first International Conference on Machine Learning.2023. [120]WEI J,WANG X,SCHUURMANS D,et al.Chain-of-thought prompting elicits reasoning in large language models[J].Advances in Neural Information Processing Systems,2022,35:24824-24837. [121]RAVURU C,SAKHINANA S S,RUNKANA V.Agentic retrieval-augmented generation for time series analysis[J].arXiv:2408.14484,2024. [122]SHEN Z,DIAO C,VOUGIOUKLIS P,et al.GeAR:Graph-enhanced Agent for Retrieval-augmented Generation[J].arXiv:2412.18431,2024. |
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