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Label acceptance based label propagation algorithm for community detection 基于标签接受度的标签传播社区检测算法
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-22 DOI: 10.1016/j.ipm.2025.104573
Xunlian Wu , Anqi Zhang , Jingqi Hu , Han Zhang , Yining Quan , Qiguang Miao , Peng Gang Sun
Community detection plays a crucial role in network analysis. While the Label Propagation Algorithm (LPA) is known for its efficiency, it suffers from unstable results due to random label updates and the inability to capture higher-order structural information. To address these limitations, we propose LALPA (Label Acceptance-based Label Propagation Algorithm) for community detection. LALPA introduces a node importance measure based on neighbor similarity to guide a stable, ordered label update process. To better capture structural information, we reconstruct the network topology by integrating both low-order (adjacent links) and high-order (motif-based) interactions, modeling node influence acceptance. Label acceptance is then determined by combining node importance and influence acceptance. A novel propagation strategy is designed to aggregate labels not only from current neighbors but also from those sharing the same label. Extensive experiments on 10 real-world and 24 synthetic networks show that LALPA consistently outperforms state-of-the-art methods, especially in networks with unobvious community structures. In particular, on all unattributed graphs, LALPA achieves an average performance gain of 2.69 % over the best baseline.
社区检测在网络分析中起着至关重要的作用。虽然标签传播算法(LPA)以其效率而闻名,但由于随机标签更新和无法捕获高阶结构信息,它的结果不稳定。为了解决这些限制,我们提出了LALPA(基于标签接受的标签传播算法)用于社区检测。LALPA引入了一个基于邻居相似度的节点重要性度量来指导一个稳定有序的标签更新过程。为了更好地捕获结构信息,我们通过整合低阶(相邻链接)和高阶(基于图案的)交互来重建网络拓扑,建模节点影响接受度。然后通过结合节点重要性和影响接受度来确定标签接受度。设计了一种新的传播策略,不仅可以聚合当前邻居的标签,还可以聚合共享同一标签的标签。在10个真实网络和24个合成网络上进行的大量实验表明,LALPA始终优于最先进的方法,特别是在具有不明显社区结构的网络中。特别是,在所有未归属图上,LALPA在最佳基线上实现了2.69%的平均性能增益。
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引用次数: 0
Representation learning for 12-lead ECGs via dual-view conditional diffusion and lead-aware attention 基于双视条件扩散和铅觉注意的12导联脑电图表征学习
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-22 DOI: 10.1016/j.ipm.2025.104569
Fanyi Yang , Xue Li , Wentao Wang , Xiguo Yuan
Recent advances in ECG representation learning have leveraged frequency-domain information to improve representation quality, yet most methods still suffer from inadequate view fusion and coarse-grained modeling of inter-lead structural dependencies. To address these challenges, we propose D2VLA, a novel framework for 12-lead ECG representation learning that integrates dual-view conditional diffusion with a lead-aware dual-attention mechanism. The diffusion module enables semantic alignment between time-domain and frequency-domain views through denoising-based conditional guidance, while the attention module jointly models the temporal dynamics of individual leads and the spatial relationships among leads within a unified encoder. In addition, we introduce a patch-level contrastive objective to further enhance the discriminative capability of the learned representations. Extensive experiments on three real-world ECG datasets demonstrate that D2VLA achieves competitive performance on classification tasks against eight baseline models, improving accuracy by 4.6 % on PTB-XL and by 4.5 % on CPSC, and achieving AUROC improvement of about 4.0 % on Chapman, thereby highlighting its superior structural modeling capability.
心电表征学习的最新进展利用频域信息来提高表征质量,但大多数方法仍然存在视图融合不足和导联间结构依赖性粗粒度建模的问题。为了解决这些挑战,我们提出了D2VLA,这是一种用于12导联ECG表征学习的新框架,它将双视图条件扩散与导联感知双注意机制集成在一起。扩散模块通过基于去噪的条件引导实现时域和频域视图之间的语义对齐,而注意力模块在统一的编码器中联合建模单个导联的时间动态和导联之间的空间关系。此外,我们引入了一个补丁级对比目标来进一步增强学习表征的判别能力。在三个真实心电图数据集上进行的大量实验表明,D2VLA在8个基线模型的分类任务上取得了具有竞争力的性能,在PTB-XL上提高了4.6%,在CPSC上提高了4.5%,在Chapman上实现了约4.0%的AUROC改进,从而突出了其优越的结构建模能力。
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引用次数: 0
Multimodal hierarchical classification using cascade-of-thought 使用思维级联的多模态分层分类
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-21 DOI: 10.1016/j.ipm.2025.104555
Jingrui Hou , Zhihang Tan , Qibiao Hu , Ping Wang , Yan Gong
We propose Cascade-of-Thought (CSOT), a novel prompt-based method for multimodal hierarchical classification (MHC) that requires no training or labeled exemplars. Inspired by the LLM-as-a-Judge (LaaJ) paradigm, CSOT decomposes classification into rationale generation, confidence scoring, and decision ranking–each implemented via structured prompts to a vision-language model (VLM). Experiments on two public MHC benchmarks demonstrate that CSOT yields substantial performance gains, particularly for weaker VLMs, while also enhancing the output quality of near-ceiling models. CSOT offers a flexible, generalizable solution for real-world MHC tasks.
我们提出了一种新的基于提示的多模态分层分类(MHC)方法,该方法不需要训练或标记样本。受LLM-as-a-Judge (LaaJ)范式的启发,CSOT将分类分解为基本原理生成、置信度评分和决策排名——每一个都通过对视觉语言模型(VLM)的结构化提示来实现。在两个公开的MHC基准测试上的实验表明,CSOT产生了显著的性能提升,特别是对于较弱的vlm,同时也提高了接近上限模型的输出质量。CSOT为现实世界的MHC任务提供了一个灵活的、通用的解决方案。
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引用次数: 0
Simulating the people's voice: Leveraging algorithmic fidelity to assess ChatGPT's performance in modeling public opinion on Chinese government policies 模拟人民的声音:利用算法保真度来评估ChatGPT在模拟中国政府政策的公众舆论方面的表现
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-20 DOI: 10.1016/j.ipm.2025.104567
ShaoPeng Che , Min Zhu , Shunan Zhang , Hae Sun Jung , Haein Lee , Zhixiao Wang , Lee Miller
Traditional public opinion surveys face persistent challenges related to cost, sample representativeness, and respondent willingness. These limitations have encouraged growing interest in using large language models (LLMs) to generate silicon samples as synthetic substitutes for human data. Although previous studies report high algorithmic fidelity in Western contexts, much less is known about whether globally trained LLMs can reproduce public attitudes in regulated and non-Western information environments. Using nationally representative data from the Chinese General Social Survey (CGSS 2021), this study evaluates ChatGPT’s ability to simulate Chinese public opinion on ten policy issues by comparing human responses with demographic-conditioned silicon samples. Analyses of response rates, response distributions, and demographic subgroups show that LLM outputs approximate human attitudes on low-sensitivity and consensus-oriented topics, but diverge systematically on culturally embedded and governance-sensitive issues. Silicon samples also produce near-complete response rates, which fails to capture human patterns of strategic non-response, and show larger misalignment among politically embedded and highly educated subgroups. Robustness diagnostics across model generations reveal strong cross-model structural stability but continued limitations when the model is applied in different sociopolitical contexts. These findings reconceptualize algorithmic fidelity as a context-sensitive construct and extend Pattern Correspondence into a multidimensional framework that incorporates response rates, response distributions, and demographic subgroup patterns. Overall, the study highlights both the potential and the limits of using LLMs to simulate public opinion in non-Western settings, emphasizing the need for culturally grounded calibration, transparent reporting, and cautious use in policy-relevant domains.
传统的民意调查面临着成本、样本代表性和受访者意愿等方面的持续挑战。这些限制促使人们对使用大型语言模型(llm)生成硅样品作为人类数据的合成替代品越来越感兴趣。尽管先前的研究报告了西方环境下的高算法保真度,但对于全球培训的法学硕士是否可以在受监管的和非西方信息环境中再现公众态度,人们知之甚少。本研究使用来自中国综合社会调查(CGSS 2021)的具有全国代表性的数据,通过比较人类的反应和人口统计条件下的硅样本,评估ChatGPT在十个政策问题上模拟中国公众舆论的能力。对回复率、回复率分布和人口分组的分析表明,法学硕士在低敏感性和以共识为导向的话题上的产出近似于人类的态度,但在文化嵌入和治理敏感问题上存在系统性分歧。硅样品也产生了近乎完全的回应率,但未能捕捉到人类的战略不回应模式,并显示出政治背景深厚和受过高等教育的子群体之间更大的不一致。跨模型世代的稳健性诊断揭示了强大的跨模型结构稳定性,但当模型应用于不同的社会政治背景时,仍然存在局限性。这些发现将算法保真度重新定义为上下文敏感的结构,并将模式对应扩展为包含回复率、响应分布和人口统计子组模式的多维框架。总体而言,该研究强调了在非西方环境中使用法学硕士模拟公众舆论的潜力和局限性,强调了在政策相关领域中基于文化的校准、透明报告和谨慎使用的必要性。
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引用次数: 0
One for all: A comprehensive graph structure of the account-based blockchain for multi-view analysis 面向所有人:基于帐户的区块链的综合图形结构,用于多视图分析
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-20 DOI: 10.1016/j.ipm.2025.104556
Yuan Gao, Ruibin Yan, Zeyu Zhang, Zhihao Li, Dechun Yin, Yijun Gu
Transactions and addresses on account-based blockchains form highly interconnected networks. However, current methods face several challenges, as incomplete graph structures inadequately support specific analytical tasks and are inefficient for certain time-sensitive analyses. In this paper, we propose a multi-view comprehensive graph structure in account-based blockchains to overcome these challenges. Specifically, we deploy archive nodes to extract various raw data from the account-based blockchain and construct the basic graph structure. Meanwhile, we analyze the initiating reasons of transactions to form the intrinsic attribute view. Then, we further analyze the on-chain activities of addresses and annotate the edges within the graph to form a view of common behaviors. Our comprehensive graph structure includes the two views mentioned above, which not only supports analyses within a single view but also enables the exploration of correlations between different views. The proposed graph structure achieves an average speed improvement of 49.08% compared to baselines in experiments. Through multi-view ecosystem analyses, we provide insights into the blockchain characteristics. We demonstrate the application of the comprehensive graph to multi-view analytical tasks on account-based blockchains, including forensics of ”the DAO attack”, phishing detection, and address classification as examples. As a result, we find 13 unreported potential DAO attacker accounts, and outperform existing graph structures in various downstream tasks.
基于账户的区块链上的交易和地址形成了高度互联的网络。然而,目前的方法面临着一些挑战,因为不完整的图结构不能充分支持特定的分析任务,并且对于某些时间敏感的分析效率低下。在本文中,我们提出了基于账户的区块链中的多视图综合图结构来克服这些挑战。具体来说,我们部署归档节点,从基于帐户的区块链中提取各种原始数据,并构造基本的图结构。同时,分析交易产生的原因,形成交易的内在属性观。然后,我们进一步分析了地址的链上活动,并对图中的边缘进行了注释,形成了一个共同行为视图。我们的综合图结构包括上面提到的两个视图,它不仅支持在单个视图内进行分析,而且还允许探索不同视图之间的相关性。本文提出的图结构与实验基线相比,平均速度提高了49.08%。通过多视角生态系统分析,我们对区块链的特征进行了深入的研究。我们演示了综合图在基于账户的区块链上的多视图分析任务中的应用,包括“DAO攻击”的取证、网络钓鱼检测和地址分类。结果,我们发现了13个未报告的潜在DAO攻击者帐户,并且在各种下游任务中优于现有的图结构。
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引用次数: 0
How GenAI tools influence the purchase intention of green products through the mediating role of emotional connection: Evidence from China 基因工具如何通过情感联系的中介作用影响绿色产品购买意愿:来自中国的证据
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-19 DOI: 10.1016/j.ipm.2025.104572
Xingpeng Zheng , Jing Li , Yue Xia , Yingji Li
In the field of green product consumption, consumers tend to seek detailed information to assess product efficacy. In recent years, the advent of Generative Artificial Intelligence (GenAI) tools has significantly streamlined consumers’ access to relevant information on green products. However, as emotional factors are decisive in purchase decision-making, existing studies that predominantly focus on rational decision-making frequently overlook this crucial emotional dimension. Addressing this gap, this study adopts the extended emotion heuristic theory to examine the impact of GenAI tools on green product purchase preferences. Using the partial least squares structural equation model, green product consumption data were collected from multiple regions including Chongqing, Guangdong, Hunan, Hubei, Shanghai, Beijing, and others, between January and March 2025. A total of 717 valid responses were analysed using SPSS 28, Amos 28, and Smart PLS 4.0. The results reveal that certain characteristics of GenAI-generated content—specifically, quality (content relevance, content accuracy), communication style (personalisation, anthropomorphism), and serendipity—positively influence purchase intention for green products. Furthermore, emotional connection plays a partial mediating role. These findings extend the application of emotion heuristic theory in the context of artificial intelligence and highlight the significant role of emotional factors in fostering consumption intentions via GenAI tools. The results offer insights for green product marketers and GenAI tool developers to enhance content quality, communication methods, and additional functions, while also informing regulatory policymaking related to GenAI tools.
在绿色产品消费领域,消费者倾向于寻求详细的信息来评估产品的功效。近年来,生成式人工智能(GenAI)工具的出现大大简化了消费者获取绿色产品相关信息的途径。然而,由于情感因素在购买决策中起决定性作用,现有的研究主要关注理性决策,往往忽视了这一至关重要的情感维度。针对这一空白,本研究采用扩展情感启发式理论来考察GenAI工具对绿色产品购买偏好的影响。利用偏最小二乘结构方程模型,收集了2025年1 - 3月重庆、广东、湖南、湖北、上海、北京等多个地区的绿色产品消费数据。采用SPSS 28、Amos 28和Smart PLS 4.0对717份有效问卷进行分析。结果表明,genai生成的内容的某些特征——特别是质量(内容相关性、内容准确性)、沟通风格(个性化、拟人化)和偶然性——对绿色产品的购买意愿产生积极影响。此外,情感联系起部分中介作用。这些发现扩展了情感启发式理论在人工智能背景下的应用,并强调了情感因素在通过GenAI工具促进消费意愿方面的重要作用。研究结果为绿色产品营销人员和GenAI工具开发人员提供了提高内容质量、沟通方法和其他功能的见解,同时也为与GenAI工具相关的监管政策制定提供了信息。
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引用次数: 0
A smaller model can be better: Domain adaptation for LLM-generated text detection via soft prompt-tuning 较小的模型可以更好:通过软提示调优对llm生成的文本检测进行域适应
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-18 DOI: 10.1016/j.ipm.2025.104566
Shuqin Wang , Yi Zhu , Peipei Li
The widespread application of Large Language Models (LLMs) has recently raised social concerns regarding potential misuse, which accentuates both the importance and challenges of identifying LLM-generated texts. However, existing advanced zero-shot black-box methods rely on LLMs for LLM-generated text detection, which leads to hallucinations in classification tasks characterized by unclear decision boundaries. On the other hand, they only focus on exploiting inherent text features, which is essentially the idea of hand-crafted feature engineering but results in poor robustness and generality when faced with different data distributions. Therefore, in this paper, we propose a novel few-shot black-box method via prompt-tuning based on the Pre-trained Language Models (PLMs), which is a smaller language model than LLM. Specifically, in our method, a few labeled data are considered as the source domain, while the unlabeled test data are treated as the target domain, correspondingly the LLM-generated text detection is firstly reformulated as the cross-domain text classification task. Secondly, the soft prompt-tuning model is learned in the source domain and converted into an iterative model to find the true label information in the target domain. By voting for predicted labels that are generated with the iterative model, soft prompt-tuning is trained for LLM-generated text detection tasks. Finally, extensive experimental results demonstrate that our method outperforms current SOTA baselines.
大型语言模型(llm)的广泛应用最近引起了社会对潜在滥用的关注,这突出了识别llm生成文本的重要性和挑战。然而,现有先进的零射击黑盒方法依赖于llm生成的文本检测,这导致在决策边界不明确的分类任务中产生幻觉。另一方面,它们只关注挖掘固有的文本特征,这本质上是手工特征工程的思想,但在面对不同的数据分布时,其鲁棒性和通用性较差。因此,在本文中,我们提出了一种新的基于预训练语言模型(PLMs)的基于提示调优的少镜头黑盒方法,这是一种比LLM更小的语言模型。具体来说,在我们的方法中,将少量标记数据作为源域,将未标记的测试数据作为目标域,相应地,首先将llm生成的文本检测重新表述为跨域文本分类任务。其次,在源域学习软提示调整模型,并将其转化为迭代模型,在目标域找到真实的标签信息;通过对迭代模型生成的预测标签进行投票,可以为llm生成的文本检测任务训练软提示调优。最后,大量的实验结果表明,我们的方法优于当前的SOTA基线。
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引用次数: 0
EMLC: An extensible multi-level correction framework for text-to-SQL EMLC:用于文本到sql的可扩展多级校正框架
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-18 DOI: 10.1016/j.ipm.2025.104560
Jianjun Lei , Yijie Tan , Ying Wang
To address three key challenges of Text-to-SQL self-correction, including schema mismatch, structural incompleteness, and semantic validation weakness, this paper proposes EMLC, an extensible multi-level correction framework that hierarchically integrates schema, skeleton, and execution corrections. EMLC incorporates a dual-validation schema correction mechanism that combines large language model (LLM)-based prediction with token-level mapping for precise schema alignment. Moreover, it employs supervised fine-tuning skeleton generation to detect and correct keyword-level errors through abstract skeleton comparison, while the executability verification strategy is designed to further ensure both syntactic integrity and semantic fidelity of generated queries. EMLC supports plug-and-play integration with mainstream LLMs and flexible scalability. Experiments on the SPIDER and BIRD datasets show that EMLC achieves state-of-the-art execution accuracy, outperforming baseline methods by 2–4 %. Ablation studies further validate the individual contributions of each component and their synergistic effects.
为了解决文本到sql自校正的三个关键挑战,包括模式不匹配、结构不完整和语义验证缺陷,本文提出了EMLC,这是一个可扩展的多级校正框架,它分层地集成了模式、骨架和执行校正。EMLC集成了双重验证模式校正机制,该机制结合了基于大型语言模型(LLM)的预测和用于精确模式对齐的标记级映射。此外,它采用监督微调骨架生成,通过抽象骨架比较来检测和纠正关键字级错误,同时设计了可执行性验证策略,进一步确保生成查询的语法完整性和语义保真度。EMLC支持与主流llm的即插即用集成和灵活的可扩展性。在SPIDER和BIRD数据集上的实验表明,EMLC达到了最先进的执行精度,比基线方法高出2 - 4%。消融研究进一步验证了每个组成部分的个体贡献及其协同效应。
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引用次数: 0
Counterfactual samples constructing and training for commonsense statements estimation 常识性陈述估计的反事实样本构造与训练
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-18 DOI: 10.1016/j.ipm.2025.104563
Chong Liu , Zaiwen Feng , Zhenyun Deng , Lin Liu , Jiuyong Li , Ruifang Zhai , Debo Cheng , Li Qin
Plausibility Estimation (PE) plays a crucial role for enabling language models to objectively comprehend the real world. While large language models (LLMs) demonstrate remarkable capabilities in PE tasks but sometimes produce trivial commonsense errors due to the complexity of commonsense knowledge. They lack two key traits of an ideal PE model: a) Language-explainable: relying on critical word segments for decisions, b) Commonsense-sensitive: detecting subtle linguistic variations in commonsense. To address these issues, we propose a novel model-agnostic method, referred to as Commonsense Counterfactual Samples Generating (CCSG). By training PE models with CCSG, we encourage them to focus on critical words, thereby enhancing both their language-explainable and commonsense-sensitive capabilities. Specifically, CCSG generates counterfactual samples by strategically replacing key words and introducing low-level dropout within sentences. These counterfactual samples are then incorporated into a sentence-level contrastive training framework to further enhance the model’s learning process. Experimental results across nine diverse datasets demonstrate the effectiveness of CCSG in addressing commonsense reasoning challenges, with our CCSG method showing 3.07% improvement against the SOTA methods.
可信性估计(PE)对于语言模型客观地理解现实世界起着至关重要的作用。虽然大型语言模型(llm)在PE任务中表现出卓越的能力,但由于常识知识的复杂性,有时会产生微不足道的常识性错误。它们缺乏理想PE模型的两个关键特征:a)语言可解释:依靠关键的词段来做决定;b)常识敏感:在常识中发现微妙的语言变化。为了解决这些问题,我们提出了一种新的模型不可知论方法,称为常识反事实样本生成(CCSG)。通过使用CCSG训练PE模型,我们鼓励他们关注关键词,从而提高他们的语言可解释性和常识性能力。具体而言,CCSG通过战略性地替换关键词和在句子中引入低水平dropout来生成反事实样本。然后将这些反事实样本纳入句子级对比训练框架,以进一步增强模型的学习过程。在9个不同数据集上的实验结果证明了CCSG在解决常识推理挑战方面的有效性,我们的CCSG方法比SOTA方法提高了3.07%。
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引用次数: 0
INKER: Adaptive dynamic retrieval augmented generation with internal-external knowledge integration INKER:基于内外知识集成的自适应动态检索增强生成
IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2025-12-18 DOI: 10.1016/j.ipm.2025.104534
Mingjun Zhou, Jiuyang Tang, Weixin Zeng, Xiang Zhao
Adaptive dynamic retrieval-augmented generation (RAG) paradigm dynamically determines whether the large language model (LLM) needs to activate the retrieval step during the generation process, and accordingly formulates appropriate queries for retrieval. This paradigm has two key components: determining the optimal moment to activate the retrieval module (when to retrieve) and formulating the appropriate query after retrieval is triggered (what to retrieve). However, existing adaptive dynamic RAG methods rely on the internal knowledge of the LLM to trigger the retrieval process and formulate retrieval queries, largely neglecting the significance of the external query knowledge. This leads to unreliable retrieval timing and the inability to retrieve truly relevant documents. To overcome these limitations, we introduce a new adaptive dynamic RAG framework, Internal-External Knowledge Integration based Retrieval (INKER), which integrates both internal and external knowledge involved in the LLM text generation process to decide when and what to retrieve. Experiments on 2WikiMultihopQA, HotpotQA, StrategyQA, and Natural Questions (NQ) demonstrate that INKER outperforms six advanced RAG methods in terms of accuracy, while also reducing retrieval frequency by approximately 40 % on average, verifying the effectiveness of INKER and its components.
自适应动态检索增强生成(RAG)范式动态确定大语言模型(LLM)在生成过程中是否需要激活检索步骤,并相应地制定合适的检索查询。此范式有两个关键组件:确定激活检索模块的最佳时机(何时检索),以及在触发检索后制定适当的查询(检索什么)。然而,现有的自适应动态RAG方法依赖于LLM的内部知识来触发检索过程并制定检索查询,很大程度上忽略了外部查询知识的重要性。这将导致不可靠的检索时间和无法检索真正相关的文档。为了克服这些限制,我们引入了一种新的自适应动态RAG框架——基于内外部知识集成的检索(INKER),它集成了法学硕士文本生成过程中涉及的内部和外部知识,以决定何时检索和检索什么。在2WikiMultihopQA、HotpotQA、StrategyQA和Natural Questions (NQ)上的实验表明,INKER在准确率方面优于六种先进的RAG方法,同时平均降低了约40%的检索频率,验证了INKER及其组件的有效性。
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引用次数: 0
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Information Processing & Management
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