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Integration of AHP and fuzzy inference systems for empowering transformative journeys in organizations: Assessing the implementation of Industry 4.0 in SMEs 整合 AHP 和模糊推理系统,增强组织转型历程的能力:评估中小企业实施工业 4.0 的情况
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-13 DOI: 10.1007/s10489-024-05816-0
Isabel Fernández, Javier Puente, Borja Ponte, Alberto Gómez

The combined use of the Analytical Hierarchy Process (AHP) and Fuzzy Inference Systems (FISs) can significantly enhance the effectiveness of transformative projects in organizations by better managing their complexities and uncertainties. This work develops a novel multicriteria model that integrates both methodologies to assist organizations in these projects. To demonstrate the value of the proposed approach, we present an illustrative example focused on the implementation of Industry 4.0 in SMEs. First, through a review of relevant literature, we identify the key barriers to improving SMEs' capability to implement Industry 4.0 effectively. Subsequently, the AHP, enhanced through Dong and Saaty’s methodology, establishes a consensus-based assessment of the importance of these barriers, using the judgments of five experts. Next, a FIS is utilized, with rule bases automatically derived from the preceding weights, eliminating the need for another round of expert input. This paper shows and discusses how SMEs can use this model to self-assess their adaptability to the Industry 4.0 landscape and formulate improvement strategies to achieve deeper alignment with this transformative paradigm.

结合使用层次分析法(AHP)和模糊推理系统(FIS)可以更好地管理项目的复杂性和不确定性,从而显著提高组织转型项目的成效。这项工作开发了一种新颖的多标准模型,将这两种方法整合在一起,以协助组织开展这些项目。为了证明所提方法的价值,我们以中小企业实施工业 4.0 为例进行了说明。首先,通过回顾相关文献,我们确定了提高中小企业有效实施工业 4.0 能力的关键障碍。随后,通过 Dong 和 Saaty 的方法改进的 AHP,利用五位专家的判断,对这些障碍的重要性进行了基于共识的评估。接着,利用 FIS,从前面的权重中自动得出规则基础,从而消除了另一轮专家输入的需要。本文展示并讨论了中小型企业如何利用这一模型来自我评估其对工业 4.0 环境的适应性,并制定改进战略,以更深入地与这一变革范式保持一致。
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引用次数: 0
Affinity adaptive sparse subspace clustering via constrained Laplacian rank 通过受限拉普拉斯秩进行亲和自适应稀疏子空间聚类
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-13 DOI: 10.1007/s10489-024-05812-4
Ting Yang, Shuisheng Zhou, Zhuan Zhang

Subspace clustering typically clusters data by performing spectral clustering to an affinity matrix constructed in some deterministic ways of self-representation coefficient matrix. Therefore, the quality of the affinity matrix is vital to their performance. However, traditional deterministic ways only provide a feasible affinity matrix but not the most suitable one for showing data structures. Besides, post-processing commonly on the coefficient matrix also affects the affinity matrix’s quality. Furthermore, constructing the affinity matrix is separate from optimizing the coefficient matrix and performing spectral clustering, which can not guarantee the optimal overall result. To this end, we propose a new method, affinity adaptive sparse subspace clustering (AASSC), by adding Laplacian rank constraint into a subspace sparse-representation model to adaptively learn a high-quality affinity matrix having accurate p-connected components from a sparse coefficient matrix without post-processing, where p represents categories. In addition, by relaxing the Laplacian rank constraint into a trace minimization, AASSC naturally combines the operations of the coefficient matrix, affinity matrix, and spectral clustering into a unified optimization, guaranteeing the overall optimal result. Extensive experimental results verify the proposed method to be effective and superior.

子空间聚类通常是通过对以某种确定性方式构建的自表示系数矩阵的亲和矩阵进行频谱聚类,从而对数据进行聚类。因此,亲和矩阵的质量对其性能至关重要。然而,传统的确定性方法只能提供可行的亲和矩阵,却不能提供最适合显示数据结构的亲和矩阵。此外,通常对系数矩阵进行的后处理也会影响亲和矩阵的质量。而且,构建亲和矩阵与优化系数矩阵和进行频谱聚类是分开的,不能保证整体结果最优。为此,我们提出了一种新方法--亲和力自适应稀疏子空间聚类(AASSC),即在子空间稀疏表示模型中加入拉普拉斯秩约束,从而无需后处理即可从稀疏系数矩阵中自适应地学习出具有精确 p 个连接分量的高质量亲和力矩阵,其中 p 代表类别。此外,通过将拉普拉斯秩约束放宽为迹线最小化,AASSC 自然而然地将系数矩阵、亲和矩阵和谱聚类的操作结合为统一的优化,保证了整体最优结果。大量实验结果验证了所提方法的有效性和优越性。
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引用次数: 0
Evolving routing policies for electric vehicles by means of genetic programming 通过遗传编程改进电动汽车的路由选择政策
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-13 DOI: 10.1007/s10489-024-05803-5
Francisco J. Gil-Gala, Marko Đurasević, Domagoj Jakobović

In recent years, the growing interest in environmental sustainability has led to Electric Vehicle Routing Problems (EVRPs) attracting more and more attention. EVRPs involve the use of electric vehicles, which have additional constraints, such as range and recharging time, compared to conventional Vehicle Routing Problems (VRPs). The complexity and dynamic nature of solving VRPs often lead to the introduction of Routing Policies (RPs), simple heuristics that incrementally build routes. However, manually designing efficient RPs proves to be a challenging and time-consuming task. Therefore, there is a pressing need to explore the application of hyper-heuristics, in particular Genetic Programming (GP), to automatically generate new RPs. Since this method has not yet been investigated in the literature in the context of EVRPs, this study explores the applicability of GP to automatically generate new RPs for EVRP. To this end, three RP variants (serial, semiparallel, and parallel) are introduced in this study, along with a set of domain-specific terminal nodes to optimise three criteria: the number of vehicles, energy consumption, and total tardiness. The experimental analysis shows that the serial variant performs best in terms of energy consumption and number of vehicles, while the parallel variant is most effective in minimising the total tardiness. A comprehensive analysis of the proposed method is conducted to determine its convergence properties and the impact of the proposed terminal nodes on performance and to describe several generated RPs. The results show that the automatically generated RPs perform commendably compared to traditional methods such as metaheuristics and exact methods, which usually require significantly more runtime. More specifically, depending on the scenario in which they are used, the generated RPs achieve results that are about 20%-37% worse compared to the best known results for the number of vehicles in almost negligible time, in just some milliseconds.

近年来,人们对环境可持续发展的兴趣与日俱增,电动汽车路由问题(EVRP)也因此受到越来越多的关注。与传统的车辆路由问题(VRP)相比,电动车辆路由问题涉及电动汽车的使用,而电动汽车又有额外的限制,如续航里程和充电时间。由于解决 VRP 的复杂性和动态性,通常需要引入路由策略 (RP),这种简单的启发式方法可以逐步建立路由。然而,手动设计高效的路由策略被证明是一项具有挑战性且耗时的任务。因此,迫切需要探索超启发式方法的应用,特别是遗传编程(GP),以自动生成新的 RP。由于该方法尚未在有关 EVRP 的文献中得到研究,本研究探讨了 GP 在自动生成 EVRP 新 RP 方面的适用性。为此,本研究引入了三种 RP 变体(串行、半并行和并行)以及一组特定领域的终端节点,以优化三个标准:车辆数量、能耗和总迟到时间。实验分析表明,串行变量在能源消耗和车辆数量方面表现最佳,而并行变量在最大限度地减少总延迟方面最为有效。对所提出的方法进行了全面分析,以确定其收敛特性和所提出的终端节点对性能的影响,并描述了几个生成的 RP。结果表明,与元启发式和精确法等传统方法相比,自动生成的 RP 性能值得称赞,因为传统方法通常需要更多的运行时间。更具体地说,根据使用场景的不同,生成的 RPs 在几乎可以忽略不计的时间内(仅需几毫秒),与已知的最佳结果相比,在车辆数量上取得了差 20%-37% 的结果。
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引用次数: 0
Temporal graphs anomaly emergence detection: benchmarking for social media interactions 时态图异常出现检测:社交媒体互动的基准测试
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1007/s10489-024-05821-3
Teddy Lazebnik, Or Iny

Temporal graphs have become an essential tool for analyzing complex dynamic systems with multiple agents. Detecting anomalies in temporal graphs is crucial for various applications, including identifying emerging trends, monitoring network security, understanding social dynamics, tracking disease outbreaks, and understanding financial dynamics. In this paper, we present a comprehensive benchmarking study that compares 12 data-driven methods for anomaly detection in temporal graphs. We conduct experiments on two temporal graphs extracted from Twitter and Facebook, aiming to identify anomalies in group interactions. Surprisingly, our study reveals an unclear pattern regarding the best method for such tasks, highlighting the complexity and challenges involved in anomaly emergence detection in large and dynamic systems. The results underscore the need for further research and innovative approaches to effectively detect emerging anomalies in dynamic systems represented as temporal graphs.

时态图已经成为分析具有多个代理的复杂动态系统的重要工具。检测时序图中的异常对于各种应用都至关重要,包括识别新兴趋势、监控网络安全、了解社会动态、跟踪疾病爆发以及了解金融动态。在本文中,我们介绍了一项综合基准研究,比较了 12 种数据驱动的时序图异常检测方法。我们对从 Twitter 和 Facebook 中提取的两个时间图进行了实验,旨在识别群体互动中的异常情况。出乎意料的是,我们的研究揭示了此类任务最佳方法的不明确模式,凸显了大型动态系统中异常出现检测的复杂性和挑战性。研究结果强调了进一步研究和创新方法的必要性,以有效检测以时间图表示的动态系统中新出现的异常情况。
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引用次数: 0
Multi-view denoising contrastive learning for bundle recommendation 用于捆绑推荐的多视角去噪对比学习
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1007/s10489-024-05825-z
Lei Sang, Yang Hu, Yi Zhang, Yiwen Zhang

The goal of bundle recommendation is to offer users a set of items that match their preferences. Current methods mainly categorize user preferences into bundle and item levels, and then use graph neural networks to obtain representations of users and bundles at both levels. However, real-world interaction data often contains irrelevant and uninformative noise connections, leading to inaccurate representations of user interests and bundle content. In this paper, we introduce a Multi-view Denoising Contrastive Learning approach for Bundle Recommendation (MDCLBR), aiming to reduce the negative effects of noisy data on users’ and bundles’ representations. We use the original view, which includes bundle and item levels, to guide data augmentation for creating augmented views. Then, we apply the multi-view contrastive learning paradigm to enhance collaboration within the original view, the augmented views, and between them. This leads to more accurate representations of users and bundles, reducing the impact of noisy data. Our method outperforms previous approaches in extensive experiments on three real-world public datasets.

捆绑推荐的目标是向用户提供一组符合其偏好的项目。目前的方法主要是将用户偏好分为捆绑和项目两个层次,然后使用图神经网络在这两个层次上获得用户和捆绑的表征。然而,现实世界中的交互数据往往包含无关和无信息的噪声连接,从而导致用户兴趣和捆绑内容的表征不准确。本文介绍了一种用于捆绑推荐的多视图去噪对比学习方法(MDCLBR),旨在减少噪声数据对用户和捆绑内容表征的负面影响。我们使用原始视图(包括捆绑和项目级别)来指导数据增强,从而创建增强视图。然后,我们应用多视图对比学习范式来加强原始视图、增强视图以及它们之间的协作。这样就能更准确地表示用户和数据集,减少噪声数据的影响。在对三个真实世界公共数据集进行的大量实验中,我们的方法优于之前的方法。
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引用次数: 0
Adaptive structural enhanced representation learning for deep document clustering 用于深度文档聚类的自适应结构增强表示学习
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-12 DOI: 10.1007/s10489-024-05791-6
Jingjing Xue, Ruizhang Huang, Ruina Bai, Yanping Chen, Yongbin Qin, Chuan Lin

Structural deep document clustering methods, which leverage both structural information and inherent data properties to learn document representations using deep neural networks for clustering, have recently garnered increased research interest. However, the structural information used in these methods is usually static and remains unchanged during the clustering process. This can negatively impact the clustering results if the initial structural information is inaccurate or noisy. In this paper, we present an adaptive structural enhanced representation learning network for document clustering. This network can adjust the structural information with the help of clustering partitions and consists of two components: an adaptive structure learner, which automatically evaluates and adjusts structural information at both the document and term levels to facilitate the learning of more effective structural information, and a structural enhanced representation learning network. The latter incorporates integrates this adjusted structural information to enhance text document representations while reducing noise, thereby improving the clustering results. The iterative process between clustering results and the adaptive structural enhanced representation learning network promotes mutual optimization, progressively enhancing model performance. Extensive experiments on various text document datasets demonstrate that the proposed method outperforms several state-of-the-art methods.

The overall framework of adaptive structural enhanced representation learning network

摘要结构性深度文档聚类方法利用结构信息和固有数据属性,通过深度神经网络学习文档表征进行聚类,这种方法最近引起了越来越多的研究兴趣。然而,这些方法中使用的结构信息通常是静态的,在聚类过程中保持不变。如果初始结构信息不准确或存在噪声,就会对聚类结果产生负面影响。在本文中,我们提出了一种用于文档聚类的自适应结构增强表示学习网络。该网络可以在聚类分区的帮助下调整结构信息,由两个部分组成:一个是自适应结构学习器,它可以自动评估和调整文档和术语层面的结构信息,以促进学习更有效的结构信息;另一个是结构增强表示学习网络。后者将调整后的结构信息整合在一起,在增强文本文档表征的同时减少噪音,从而改善聚类结果。聚类结果与自适应结构增强表征学习网络之间的迭代过程促进了相互优化,逐步提高了模型性能。在各种文本文档数据集上的广泛实验表明,所提出的方法优于几种最先进的方法。 图式摘要自适应结构增强表征学习网络的总体框架
{"title":"Adaptive structural enhanced representation learning for deep document clustering","authors":"Jingjing Xue,&nbsp;Ruizhang Huang,&nbsp;Ruina Bai,&nbsp;Yanping Chen,&nbsp;Yongbin Qin,&nbsp;Chuan Lin","doi":"10.1007/s10489-024-05791-6","DOIUrl":"10.1007/s10489-024-05791-6","url":null,"abstract":"<p>Structural deep document clustering methods, which leverage both structural information and inherent data properties to learn document representations using deep neural networks for clustering, have recently garnered increased research interest. However, the structural information used in these methods is usually static and remains unchanged during the clustering process. This can negatively impact the clustering results if the initial structural information is inaccurate or noisy. In this paper, we present an adaptive structural enhanced representation learning network for document clustering. This network can adjust the structural information with the help of clustering partitions and consists of two components: an adaptive structure learner, which automatically evaluates and adjusts structural information at both the document and term levels to facilitate the learning of more effective structural information, and a structural enhanced representation learning network. The latter incorporates integrates this adjusted structural information to enhance text document representations while reducing noise, thereby improving the clustering results. The iterative process between clustering results and the adaptive structural enhanced representation learning network promotes mutual optimization, progressively enhancing model performance. Extensive experiments on various text document datasets demonstrate that the proposed method outperforms several state-of-the-art methods.</p><p>The overall framework of adaptive structural enhanced representation learning network</p>","PeriodicalId":8041,"journal":{"name":"Applied Intelligence","volume":"54 23","pages":"12315 - 12331"},"PeriodicalIF":3.4,"publicationDate":"2024-09-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142220573","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":2,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
A novel approach for predicting the spread of APT malware in the network 预测 APT 恶意软件在网络中传播的新方法
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1007/s10489-024-05750-1
Xuan Cho Do, Hai Anh Tran, Thi Lan Phuong Nguyen

Advanced Persistent Threat (APT) attack is one of the most dangerous cyber-attack techniques nowadays. Therefore, the issue of detecting and predicting the spread of APT malware in the network is a very urgent issue to help the process of preventing this attack effectively. In this paper, we propose a new approach that is capable of predicting the spread of APT malware in the network based on the APT's own behaviors. Accordingly, to predict the spread of APT malicious code in the system, we propose to use a combination of two single Susceptible‐Infected‐Recovered (SIR) models. Specifically, the first SIR model was built to predict the spread of APT malicious code to devices and computers within the organization. These devices and computers are often used by APT malicious code as a basis to escalate privileges to devices or computers containing important and sensitive information of the organization. The second SIR model has the function of predicting the spread of APT malware to a group of computers containing sensitive information or potentially causing high risks to the organization. The two SIR models will provide information about infections between computer groups in the system to help accurately predict the spread of APT malware in the system. The proposal to combine two SIR models in the article is a new proposal based on the behavior of APT malware in practice. By combining two SIR models, the proposal in this article has opened up a new approach for a number of problems predicting the spread in the internet such as malicious code in wireless sensor networks or malicious information on the social network.

高级持续威胁(APT)攻击是当今最危险的网络攻击技术之一。因此,检测和预测 APT 恶意软件在网络中的传播是一个非常紧迫的问题,有助于有效预防这种攻击。本文提出了一种新方法,能够根据 APT 自身的行为预测 APT 恶意软件在网络中的传播。因此,为了预测 APT 恶意代码在系统中的传播,我们建议使用两个单一的易感-感染-恢复(SIR)模型组合。具体来说,建立第一个 SIR 模型是为了预测 APT 恶意代码在组织内的设备和计算机上的传播。APT 恶意代码通常会利用这些设备和计算机,将权限升级到包含组织重要敏感信息的设备或计算机。第二个 SIR 模型的功能是预测 APT 恶意软件向包含敏感信息或可能对组织造成高风险的计算机群传播的情况。两个 SIR 模型将提供系统中计算机组之间的感染信息,以帮助准确预测 APT 恶意软件在系统中的传播。文章中结合两个 SIR 模型的建议是根据 APT 恶意软件在实践中的行为提出的新建议。通过结合两个 SIR 模型,本文中的建议为预测互联网中的恶意代码或社交网络中的恶意信息等一系列传播问题开辟了一种新的方法。
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引用次数: 0
An offline-to-online reinforcement learning approach based on multi-action evaluation with policy extension 基于政策扩展的多行动评估的离线到在线强化学习方法
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1007/s10489-024-05806-2
Xuebo Cheng, Xiaohui Huang, Zhichao Huang, Nan Jiang

Offline Reinforcement Learning (Offline RL) is able to learn from pre-collected offline data without real-time interaction with the environment by policy regularization via distributional constraints or support set constraints. However, since the policy learned from offline data under the constrains of support set is usually similar to the behavioral policy due to the overly conservative constraints, offline RL confronts challenges in active behavioral exploration. Moreover, without online interaction, policy evaluation becomes prone to inaccuracy, and the learned policy may lack robustness in the presence of sub-optimal state-action pairs or noise in a dataset. In this paper, we propose an Offline-to-Online Reinforcement Learning Approach based on Multi-action Evaluation with Policy Extension(MAERL) for improving the ability of the policy exploration and the effective value evaluation of state-action in offline RL. In MAERL, we develop four modules: (1) in the policy extension module, we design a policy extension method, which uses the online policy to extend the offline policy; (2) in the multi-action evaluation module, we present an adaptive manner to merge the offline and online policies to generate an action of the agent; (3) in the action-oriented module, we learn the action trajectories of the agent from the dataset, mitigating the issue of actions deviating excessively during environmental exploration; (4) to maintain the consistency in the agent’s actions, we propose an action temporally-aligned representation learning method to maintain the trend of actions of agents. This approach ensures that the agent’s actions align with the learned trajectories, preventing significant deviations during exploration. Extensive experiments are conducted on 15 scenarios of the D4RL/mujoco environment. Results demonstrate that our proposed methods achieve the best performance in 12 scenarios and the second-best performance in 3 scenarios compared to state-of-the-art methods. The project’s code can be found at https://github.com/FrankGod111/Policy-Expansion.git

离线强化学习(Offline Reinforcement Learning,简称 Offline RL)能够通过分布约束或支持集约束进行策略正则化,从而从预先收集的离线数据中学习,而无需与环境进行实时交互。然而,由于过于保守的约束条件,在支持集约束下从离线数据中学习到的策略通常与行为策略相似,因此离线 RL 在主动行为探索方面面临挑战。此外,如果没有在线交互,策略评估就很容易变得不准确,而且在数据集中存在次优状态-行动对或噪声的情况下,学习到的策略可能缺乏鲁棒性。在本文中,我们提出了一种基于多行为评估与策略扩展(MAERL)的离线到在线强化学习方法,以提高离线 RL 中的策略探索能力和状态-行为的有效值评估。在 MAERL 中,我们开发了四个模块:(1) 在策略扩展模块中,我们设计了一种策略扩展方法,利用在线策略来扩展离线策略;(2) 在多行动评估模块中,我们提出了一种自适应方式来合并离线策略和在线策略,从而生成代理的行动;(3) 在行动导向模块中,我们从数据集中学习代理的行动轨迹,缓解了环境探索过程中行动偏差过大的问题;(4) 为了保持代理行动的一致性,我们提出了一种行动时间对齐表征学习方法,以保持代理行动的趋势。这种方法可确保代理的行动与学习到的轨迹保持一致,防止在探索过程中出现重大偏差。我们在 D4RL/mujoco 环境的 15 个场景中进行了广泛的实验。结果表明,与最先进的方法相比,我们提出的方法在 12 个场景中取得了最佳性能,在 3 个场景中取得了次佳性能。项目代码见 https://github.com/FrankGod111/Policy-Expansion.git
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引用次数: 0
Improving the transferability of adversarial examples with path tuning 通过路径调整提高对抗性示例的可移植性
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1007/s10489-024-05820-4
Tianyu Li, Xiaoyu Li, Wuping Ke, Xuwei Tian, Desheng Zheng, Chao Lu

Adversarial attacks pose a significant threat to real-world applications based on deep neural networks (DNNs), especially in security-critical applications. Research has shown that adversarial examples (AEs) generated on a surrogate model can also succeed on a target model, which is known as transferability. Feature-level transfer-based attacks improve the transferability of AEs by disrupting intermediate features. They target the intermediate layer of the model and use feature importance metrics to find these features. However, current methods overfit feature importance metrics to surrogate models, which results in poor sharing of the importance metrics across models and insufficient destruction of deep features. This work demonstrates the trade-off between feature importance metrics and feature corruption generalization, and categorizes feature destructive causes of misclassification. This work proposes a generative framework named PTNAA to guide the destruction of deep features across models, thus improving the transferability of AEs. Specifically, the method introduces path methods into integrated gradients. It selects path functions using only a priori knowledge and approximates neuron attribution using nonuniform sampling. In addition, it measures neurons based on the attribution results and performs feature-level attacks to remove inherent features of the image. Extensive experiments demonstrate the effectiveness of the proposed method. The code is available at https://github.com/lounwb/PTNAA.

摘要 对抗性攻击对基于深度神经网络(DNN)的现实世界应用构成重大威胁,尤其是在安全关键型应用中。研究表明,在代理模型上生成的对抗性示例(AE)也能在目标模型上成功,这就是所谓的可转移性。基于特征层的转移攻击通过破坏中间特征来提高 AE 的可转移性。它们以模型的中间层为目标,并使用特征重要性度量来查找这些特征。然而,目前的方法过度拟合了代用模型的特征重要性度量,导致模型间的重要性度量共享性差,对深层特征的破坏不足。这项工作展示了特征重要性度量与特征破坏泛化之间的权衡,并对造成误分类的特征破坏原因进行了分类。这项工作提出了一个名为 PTNAA 的生成框架,用于指导跨模型的深度特征破坏,从而提高 AE 的可转移性。具体来说,该方法将路径方法引入集成梯度。它仅使用先验知识选择路径函数,并使用非均匀采样近似神经元归属。此外,它还能根据归因结果测量神经元,并执行特征级攻击以去除图像的固有特征。大量实验证明了所提方法的有效性。代码见 https://github.com/lounwb/PTNAA.Graphical 摘要
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引用次数: 0
GEML: a graph-enhanced pre-trained language model framework for text classification via mutual learning GEML:通过相互学习进行文本分类的图增强预训练语言模型框架
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-11 DOI: 10.1007/s10489-024-05831-1
Tao Yu, Rui Song, Sandro Pinto, Tiago Gomes, Adriano Tavares, Hao Xu

Large-scale Pre-trained Language Models (PLMs) have become the backbones of text classification due to their exceptional performance. However, they treat input documents as independent and uniformly distributed, thereby disregarding potential relationships among the documents. This limitation could lead to some miscalculations and inaccuracies in text classification. To address this issue, some recent work explores the integration of Graph Neural Networks (GNNs) with PLMs, as GNNs can effectively model document relationships. Yet, combining graph-based methods with PLMs is challenging due to the structural incompatibility between graphs and sequences. To tackle this challenge, we propose a graph-enhanced text mutual learning framework that integrates graph-based models with PLMs to boost classification performance. Our approach separates graph-based methods and language models into two independent channels and allows them to approximate each other through mutual learning of probability distributions. This probability-distribution-guided approach simplifies the adaptation of graph-based models to PLMs and enables seamless end-to-end training of the entire architecture. Moreover, we introduce Asymmetrical Learning, a strategy that enhances the learning process, and incorporate Uncertainty Weighting loss to achieve smoother probability distribution learning. These enhancements significantly improve the performance of mutual learning. The practical value of our research lies in its potential applications in various industries, such as social network analysis, information retrieval, and recommendation systems, where understanding and leveraging document relationships are crucial. Importantly, our method can be easily combined with different PLMs and consistently achieves state-of-the-art results on multiple public datasets.

大规模预训练语言模型(PLM)因其卓越的性能已成为文本分类的支柱。然而,它们将输入文档视为独立且均匀分布的文档,从而忽略了文档之间的潜在关系。这一局限性可能会导致文本分类中的一些误判和不准确。为了解决这个问题,最近的一些研究探索了图神经网络(GNN)与 PLM 的整合,因为 GNN 可以有效地为文档关系建模。然而,由于图和序列在结构上不兼容,将基于图的方法与 PLMs 结合起来具有挑战性。为了应对这一挑战,我们提出了一种图增强文本互学框架,该框架将基于图的模型与 PLM 相结合,以提高分类性能。我们的方法将基于图的方法和语言模型分为两个独立的通道,并允许它们通过概率分布的相互学习来近似彼此。这种以概率分布为导向的方法简化了基于图的模型与 PLM 的适配,并实现了整个架构的无缝端到端训练。此外,我们还引入了非对称学习(Asymmetrical Learning)这一增强学习过程的策略,并纳入了不确定性加权损失(Uncertainty Weighting loss),以实现更平滑的概率分布学习。这些改进大大提高了相互学习的性能。我们研究的实用价值在于它在各行各业的潜在应用,如社交网络分析、信息检索和推荐系统,在这些领域,理解和利用文档关系至关重要。重要的是,我们的方法可以轻松地与不同的 PLM 相结合,并在多个公共数据集上持续取得最先进的结果。
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引用次数: 0
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