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Online imbalance learning with unpredictable feature evolution and label scarcity 具有不可预测特征演化和标签稀缺性的在线不平衡学习
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128476

Recently, online learning with imbalanced data streams has aroused wide concern, which reflects an uneven distribution of different classes in data streams. Existing approaches have conventionally been conducted on stationary feature space and they assume that we can obtain the entire labels of data streams in the case of supervised learning. However, in many real scenarios, e.g., the environment monitoring task, new features flood in, and old features are partially lost during the changing environment as the different lifespans of different sensors. Besides, each instance needs to be labeled by experts, resulting in expensive costs and scarcity of labels. To address the above problems, this paper proposes a novel Online Imbalance learning with unpredictable Feature evolution and Label scarcity (OIFL) algorithm. First, we utilize margin-based online active learning to selectively label valuable instances. After obtaining the labels, we handle imbalanced class distribution by optimizing F-measure and transforming F-measure optimization into a weighted surrogate loss minimization. When data streams arrive with augmented features, we combine the online passive-aggressive algorithm and structural risk minimization to update the classifier in the divided feature space. When data streams arrive with incomplete features, we leverage variance to identify the most informative features following the empirical risk minimization principle and continue to update the existing classifier as before. Finally, we obtain a sparse but reliable learner by the strategy of projecting truncation. We derive theoretical analyses of OIFL. Also, experiments on the synthetic datasets and real-world data streams to validate the effectiveness of our method.

最近,不平衡数据流的在线学习引起了广泛关注,这反映了数据流中不同类别的不均匀分布。现有的方法通常是在静态特征空间上进行的,它们假定在监督学习的情况下,我们可以获得数据流的全部标签。然而,在许多实际场景中,例如环境监测任务,新特征会大量涌入,而旧特征则会随着环境的变化而部分丢失,因为不同传感器的寿命不同。此外,每个实例都需要专家进行标注,成本高昂且标注稀缺。为解决上述问题,本文提出了一种新颖的具有不可预测特征演化和标签稀缺性的在线不平衡学习(OIFL)算法。首先,我们利用基于边际的在线主动学习来选择性地为有价值的实例贴标签。获得标签后,我们通过优化 F-measure,并将 F-measure 优化转化为加权代理损失最小化,来处理不平衡的类分布。当数据流带有增强特征时,我们结合在线被动攻击算法和结构风险最小化算法,在划分的特征空间中更新分类器。当数据流带着不完整的特征到达时,我们利用方差,按照经验风险最小化原则识别出信息量最大的特征,并像以前一样继续更新现有分类器。最后,我们通过投影截断策略获得稀疏但可靠的学习器。我们得出了 OIFL 的理论分析。此外,我们还在合成数据集和真实世界数据流上进行了实验,以验证我们方法的有效性。
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引用次数: 0
Clustering-based hyper-heuristic algorithm for multi-region coverage path planning of heterogeneous UAVs 基于聚类的异构无人机多区域覆盖路径规划超启发式算法
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128528

In the context of multi-heterogeneous UAV coverage path planning, an effective solution method has been proposed. Firstly, regions are set up as fully connected graphs which are cut into multiple subgraphs by spectral clustering method to assign tasks to multi-heterogeneous UAVs. Additionally, an RL-based hyper-heuristic algorithm is proposed. Heuristic space is parameterized by GNN which is trained with the reward provided by the optimization goal to automate design and enhance the heuristic metrics, avoiding the inefficiency and suboptimality of expert design and manual parameter tuning. Compared with existing methods, the proposed algorithm has a better performance in task completion time, execution time and deviation rate, which shows its potential application in the coverage path planning problem of multi-heterogeneous UAVs.

在多同质无人机覆盖路径规划方面,提出了一种有效的解决方法。首先,将区域设置为全连接图,并通过谱聚类方法将其切割成多个子图,从而为多异构无人机分配任务。此外,还提出了一种基于 RL 的超启发式算法。启发式空间由 GNN 参数化,GNN 根据优化目标提供的奖励进行训练,从而自动设计和增强启发式指标,避免了专家设计和手动参数调整的低效率和次优化性。与现有方法相比,所提出的算法在任务完成时间、执行时间和偏差率方面都有更好的表现,这表明它在多异构无人机的覆盖路径规划问题中具有潜在的应用价值。
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引用次数: 0
Shape-intensity-guided U-net for medical image segmentation 用于医学图像分割的形状密度引导 U 网
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128534

Medical image segmentation has achieved impressive results thanks to U-Net or its alternatives. Yet, most existing methods perform segmentation by classifying individual pixels, tending to ignore the shape-intensity prior information. This may yield implausible segmentation results. Besides, the segmentation performance often drops greatly on unseen datasets. One possible reason is that the model is biased towards texture information, which varies more than shape information across different datasets. In this paper, we introduce a novel Shape-Intensity-Guided U-Net (SIG-UNet) for improving the generalization ability of variants of U-Net in segmenting medical images. Specifically, we adopt the U-Net architecture to reconstruct class-wisely averaged images that only contain the shape-intensity information. We then add an extra similar decoder branch with the reconstruction decoder for segmentation, and apply skip fusion between them. Since the class-wisely averaged image has no any texture information, the reconstruction decoder focuses more on shape and intensity features than the encoder on the original image. Therefore, the final segmentation decoder has less texture bias. Extensive experiments on three segmentation tasks of medical images with different modalities demonstrate that the proposed SIG-UNet achieves promising intra-dataset results while significantly improving the cross-dataset segmentation performance. The source code will be publicly available after acceptance.

由于 U-Net 或其替代方法的出现,医学图像分割取得了令人瞩目的成果。然而,大多数现有方法都是通过对单个像素进行分类来进行分割,往往忽略了形状-强度先验信息。这可能会产生难以置信的分割结果。此外,在未见过的数据集上,分割性能往往会大幅下降。其中一个可能的原因是模型偏向于纹理信息,而纹理信息在不同数据集上的变化比形状信息更大。在本文中,我们引入了一种新的形状-密度引导 U-Net (SIG-UNet),以提高 U-Net 变体在医学图像分割中的泛化能力。具体来说,我们采用 U-Net 架构来重建只包含形状强度信息的类平均图像。然后,我们在重建解码器的基础上额外添加一个相似解码器分支进行分割,并在两者之间进行跳转融合。由于类平均图像没有任何纹理信息,因此重建解码器比原始图像上的编码器更关注形状和强度特征。因此,最终的分割解码器的纹理偏差较小。对不同模态医学图像的三个分割任务进行的大量实验表明,所提出的 SIG-UNet 在显著提高跨数据集分割性能的同时,还取得了良好的数据集内效果。源代码将在通过验收后公开发布。
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引用次数: 0
Semi-supervised segmentation of medical images focused on the pixels with unreliable predictions 医疗图像的半监督分割,侧重于预测不可靠的像素
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128532

Pseudo-labeling is a well-studied approach in semi-supervised learning. However, unreliable or potentially incorrect pseudo-labels can accumulate training errors during iterative self-training steps, leading to unstable performance. Addressing this challenge typically involves either discarding unreliable pseudo-labels, resulting in the loss of important data, or attempting to refine them, risking the possibility of worsening the pseudo-labels in some cases/pixels. In this paper, we propose a novel method based on pseudo-labeling for semi-supervised segmentation of medical images. Unlike existing approaches, our method neither discards any data nor worsens reliable pseudo-labels. Our approach generates uncertainty masks for the predictions, utilizing reliable pixels without any modification as ground truths and modifying the unreliable ones rather than discarding them. Furthermore, we introduce a novel loss function that incorporates both mentioned parts by multiplying each term by its corresponding uncertainty mask, encompassing reliable and unreliable pixels. The reliable pixels are addressed using a masked cross-entropy loss function, while the modification of the unreliable pixels is performed through a deep-learning-based adaptation of active contours. The entire process is solved within a single loss function without the need to solve traditional active contour equations. We evaluated our approach on three publicly available datasets, including MRI and CT images from cardiac structures and lung tissue. Our proposed method outperforms the state-of-the-art semi-supervised learning methods on all three datasets. Implementation of our work is available at https://github.com/behnam-rahmati/Semi-supervised-medical.

在半监督学习中,伪标签是一种被广泛研究的方法。然而,不可靠或可能不正确的伪标签会在迭代自我训练步骤中积累训练误差,导致性能不稳定。要解决这一难题,通常要么放弃不可靠的伪标签,导致重要数据丢失;要么尝试完善伪标签,冒着在某些情况/像素下伪标签可能恶化的风险。在本文中,我们提出了一种基于伪标签的新方法,用于医学图像的半监督分割。与现有方法不同,我们的方法既不会丢弃任何数据,也不会恶化可靠的伪标签。我们的方法为预测生成不确定性掩码,利用可靠的像素作为基本事实而不做任何修改,并修改不可靠的像素而不是丢弃它们。此外,我们还引入了一种新的损失函数,通过将每个项乘以相应的不确定性掩码,将可靠和不可靠像素都包含在内,从而将上述两部分都纳入其中。可靠像素使用掩码交叉熵损失函数来处理,而不可靠像素的修改则通过基于深度学习的主动轮廓自适应来完成。整个过程只需一个损失函数即可解决,无需求解传统的主动轮廓方程。我们在三个公开可用的数据集上评估了我们的方法,包括心脏结构和肺组织的 MRI 和 CT 图像。在所有三个数据集上,我们提出的方法都优于最先进的半监督学习方法。我们工作的实现可在 https://github.com/behnam-rahmati/Semi-supervised-medical 上获得。
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引用次数: 0
Purity Skeleton Dynamic Hypergraph Neural Network 纯净骨架动态超图神经网络
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128539

Recently, in the field of Hypergraph Neural Networks (HGNNs), the effectiveness of dynamic hypergraph construction has been validated, which aims to reduce structural noise within the hypergraph through embeddings. However, the existing dynamic construction methods fail to notice the reduction of information contained in the hypergraphs during dynamic updates. This limitation undermines the quality of hypergraphs. Moreover, dynamic hypergraphs are constructed from graphs. Several key nodes play a crucial role in graph, but they are overlooked in hypergraphs. In this paper, we propose a Purity Skeleton Dynamic Hypergraph Neural Network (PS-DHGNN) to address the above issues. Firstly, we leverage purity skeleton method to dynamically construct hypergraphs via the fusion embeddings of features and topology simultaneously. This method effectively reduces structural noise and prevents the loss of information. Secondly, we employ an incremental training strategy, which implements a batch training strategy based on the importance of nodes. The key nodes, as the skeleton of hypergraph, are still highly valued. In addition, we utilize a novel loss function for learning structure information between hypergraph and graph. We conduct extensive experiments on node classification and clustering tasks, which demonstrate that our PS-DHGNN outperforms state-of-the-art methods. Note on real-world traffic flow datasets, PS-DHGNN demonstrates excellent performance, which is highly meaningful in practice.

最近,在超图神经网络(HGNN)领域,动态超图构建的有效性得到了验证,其目的是通过嵌入减少超图中的结构噪声。然而,现有的动态构建方法未能注意到超图在动态更新过程中所含信息的减少。这一局限性损害了超图的质量。此外,动态超图是从图中构建的。图中有几个关键节点起着至关重要的作用,但它们在超图中却被忽视了。本文提出了纯度骨架动态超图神经网络(PS-DHGNN)来解决上述问题。首先,我们利用纯度骨架方法,同时通过特征和拓扑的融合嵌入来动态构建超图。这种方法能有效减少结构噪声,防止信息丢失。其次,我们采用增量训练策略,根据节点的重要性实施批量训练策略。关键节点作为超图的骨架,其价值仍然很高。此外,我们还利用一种新的损失函数来学习超图和图之间的结构信息。我们在节点分类和聚类任务上进行了大量实验,结果表明我们的 PS-DHGNN 优于最先进的方法。在现实世界的交通流数据集上,PS-DHGNN 表现出了卓越的性能,这在实践中非常有意义。
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引用次数: 0
Feature balanced re-enhanced network with multi-factor margin loss for long-tailed visual recognition 针对长尾视觉识别的多因子边际损失特征平衡再增强网络
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128530

Real-world data often exhibits a long-tailed distribution, where the number of training samples for head classes far exceeds that of tail classes. This class imbalance phenomenon poses significant challenges for training deep neural networks. Existing class-aware loss methods typically focus only on the numerical relationship between class samples, blindly favoring the optimization of tail classes during the process, while neglecting the difficulty of samples and the similarity between the current class and other classes. To this end, relying only on the number relationship can easily lead to over-fitting of tail classes, thereby failing to fully utilize the potential information in the data. Therefore, we propose the Multi-Factor Margin Loss (MFMLoss), which consists of positive margin loss and negative margin loss. MFMLoss comprehensively considers three factors at three levels: overall, class, and sample: (1) quantitative relationships, (2) inter-class similarity relationships, and (3) sample recognition difficulty. The combined consideration of these three factors enables the model to pay more attention to confusing classes and difficult samples during the training process, rather than solely on tail classes, thus achieving optimization from coarse-grained to fine-grained. To further mitigate the negative impact of the imbalance between head and tail classes on feature learning, we design a new network architecture, called F-BREN. F-BREN consists of two components: the feature balancing network and the feature re-enhancement network. The former is trained with negative margin loss, which reduces the recognizability of easy samples. The latter is trained with positive margin loss, using positive margin to give more attention to hard samples, thus balancing the model’s attention to all samples. We conducted extensive experiments on four long-tailed benchmark datasets: CIFAR10-LT, CIFAR100-LT, ImageNet-LT and iNaturalist 2018, comparing the recognition accuracy of our method with eight state-of-the-art methods. The experimental results demonstrate that our proposed method outperforms the eight compared methods.

现实世界的数据往往呈现长尾分布,头部类别的训练样本数量远远超过尾部类别。这种类不平衡现象给深度神经网络的训练带来了巨大挑战。现有的类感知损失方法通常只关注类样本之间的数值关系,在过程中盲目偏向于优化尾部类,而忽视了样本的难度以及当前类与其他类之间的相似性。为此,仅仅依靠数量关系很容易导致尾类的过度拟合,从而无法充分利用数据中的潜在信息。因此,我们提出了多因素边际损失(MFMLoss),它包括正边际损失和负边际损失。MFMLoss 综合考虑了总体、类和样本三个层面的三个因素:(1)数量关系;(2)类间相似性关系;(3)样本识别难度。综合考虑这三个因素,使得模型在训练过程中能够更多地关注容易混淆的类和难以识别的样本,而不是仅仅关注尾类,从而实现从粗粒度到细粒度的优化。为了进一步减轻头部和尾部类别不平衡对特征学习的负面影响,我们设计了一种新的网络架构,称为 F-BREN。F-BREN 由两个部分组成:特征平衡网络和特征再增强网络。前者以负边际损失进行训练,从而降低易识别样本的可识别性。后者则采用正边距损失进行训练,利用正边距对难识别样本给予更多关注,从而平衡模型对所有样本的关注。我们在四个长尾基准数据集上进行了广泛的实验:我们在四个长尾基准数据集:CIFAR10-LT、CIFAR100-LT、ImageNet-LT 和 iNaturalist 2018 上进行了大量实验,比较了我们的方法与八种最先进方法的识别准确率。实验结果表明,我们提出的方法优于八种比较方法。
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引用次数: 0
Decoupling foreground and background with Siamese ViT networks for weakly-supervised semantic segmentation 利用连体 ViT 网络解耦前景和背景,实现弱监督语义分割
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128540

Due to the coarse granularity of information extraction in image-level annotation-based weakly supervised semantic segmentation algorithms, there exists a significant gap between the generated pseudo-labels and the real pixel-level labels. In this paper, we propose the DeFB-SV framework, which consists of a dual-branch Siamese network structure. This framework separates the foreground and background of images by generating unified resolution and mixed resolution class activation maps, which are then fused to obtain pseudo-labels. The mixed-resolution class activation maps are produced by a new mixed-resolution patch partition method, where we introduce a semantically heuristic patch scorer to divide the image into patches of different sizes based on semantics. Additionally, a novel multi-confidence region division mechanism is proposed to enable the adaptive extraction of the effective parts of pseudo-labels, further enhancing the accuracy of weakly supervised semantic segmentation algorithms. The proposed semantic segmentation framework, DeFB-SV, is evaluated on the PASCAL VOC 2012 and MS COCO 2014 datasets, demonstrating comparable segmentation performance with state-of-the-art methods.

由于基于图像级注释的弱监督语义分割算法的信息提取粒度较粗,生成的伪标签与真实像素级标签之间存在很大差距。在本文中,我们提出了 DeFB-SV 框架,它由双分支连体网络结构组成。该框架通过生成统一分辨率类激活图和混合分辨率类激活图来分离图像的前景和背景,然后将其融合以获得伪标签。混合分辨率类别激活图是通过一种新的混合分辨率补丁分割方法生成的,我们在这种方法中引入了一个语义启发式补丁评分器,根据语义将图像分成不同大小的补丁。此外,我们还提出了一种新颖的多置信度区域划分机制,能够自适应地提取伪标签的有效部分,从而进一步提高弱监督语义分割算法的准确性。我们在 PASCAL VOC 2012 和 MS COCO 2014 数据集上对所提出的语义分割框架 DeFB-SV 进行了评估,结果表明其分割性能与最先进的方法不相上下。
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引用次数: 0
Emotion knowledge-based fine-grained facial expression recognition 基于情感知识的细粒度面部表情识别
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-03 DOI: 10.1016/j.neucom.2024.128536

Existing facial expression recognition (FER) techniques rely primarily on seven coarse-grained emotions as emotional labels, which are insufficient to cover the subtle changes in human emotions in the real world. We use 135 fine-grained emotions as emotional benchmarks to address the problem of highly semantically similar fine-grained emotion recognition. In this work, we propose a robust emotion knowledge-based fine-grained (EK-FG) emotion recognition network that captures inter-class relationships and discriminative representations of fine-grained emotions through two prior-based losses: coarse-grained hierarchical loss and fine-grained semantic loss. Specifically, the coarse-grained hierarchical loss obtains a structured semantic representation of fine-grained emotions based on prior knowledge, and captures inter-class relationships through effective category-level push-pull to obtain discriminative representations. The fine-grained semantic loss provides more accurate measurement information for semantic features based on prior knowledge, and enhances the model’s discriminative ability for subtle facial expression differences through regression constraints. Extensive experimental results on the Emo135 dataset demonstrate that EK-FG can effectively overcome the class ambiguity of fine-grained emotion.

现有的面部表情识别(FER)技术主要依赖七种粗粒度情绪作为情绪标签,不足以涵盖现实世界中人类情绪的微妙变化。我们使用 135 种细粒度情感作为情感基准,来解决语义高度相似的细粒度情感识别问题。在这项工作中,我们提出了一种稳健的基于情感知识的细粒度(EK-FG)情感识别网络,它通过两种基于先验的损失(粗粒度层次损失和细粒度语义损失)来捕捉细粒度情感的类间关系和判别表征。具体来说,粗粒度层次损失基于先验知识获得细粒度情绪的结构化语义表征,并通过有效的类别级推拉捕捉类间关系,从而获得判别表征。细粒度语义损失基于先验知识为语义特征提供了更准确的测量信息,并通过回归约束增强了模型对细微面部表情差异的判别能力。在 Emo135 数据集上的大量实验结果表明,EK-FG 可以有效克服细粒度情感的类别模糊性。
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引用次数: 0
Graph neural network based intelligent tutoring system: A survey 基于图神经网络的智能辅导系统:一项调查
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-09-02 DOI: 10.1016/j.neucom.2024.128442

Online education is developing rapidly driven by artificial intelligence technology. The massive learning resources lead to information overload and low resource utilization. Intelligent tutoring system (ITS) plays a vital role in the education platform, providing personalized learning services for students. The data obtained from the online education platform has complex correlations, which can be potentially transformed into multi-level graph structures. In recent years, graph neural networks (GNNs) have been tried to be introduced into intelligent learning services due to their superior performance in processing graph-structured data. This paper aims to provide researchers and engineers with a general overview of modeling processes and techniques for intelligent learning services based on GNNs. Through a careful review of the advanced models published between 2019 and 2023, existing research primarily focuses on four detailed areas within the smart services scenario. The GNN models involved are systematically classified, and the principles, pioneers and variants of various models are summarized in detail. Simultaneously, this paper analyzes the applications, the specific problems to be solved, and the technologies and innovations of graph-based models in the four key areas. In addition, we examine the commonly used datasets and evaluation metrics in the field of education. Finally, the current challenges and future development trends are summarized to provide comprehensive and in-depth guidance for research in related fields.

在人工智能技术的推动下,在线教育发展迅速。海量的学习资源导致信息过载和资源利用率低下。智能辅导系统(ITS)在教育平台中扮演着重要角色,为学生提供个性化学习服务。从在线教育平台获取的数据具有复杂的相关性,有可能转化为多层次的图结构。近年来,图神经网络(GNN)因其在处理图结构数据方面的优越性能,被尝试引入到智能学习服务中。本文旨在向研究人员和工程师概述基于图神经网络的智能学习服务的建模过程和技术。通过对 2019 年至 2023 年间发表的先进模型进行仔细回顾,现有研究主要集中在智能服务场景中的四个详细领域。本文对所涉及的 GNN 模型进行了系统分类,并详细总结了各种模型的原理、先驱和变体。同时,本文分析了基于图的模型在四个关键领域的应用、需要解决的具体问题以及技术和创新。此外,我们还研究了教育领域常用的数据集和评价指标。最后,总结了当前面临的挑战和未来的发展趋势,为相关领域的研究提供全面深入的指导。
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引用次数: 0
Periodic update rule with Q-learning promotes evolution of cooperation in game transition with punishment mechanism 具有 Q 学习功能的周期性更新规则促进了带有惩罚机制的博弈过渡中的合作演化
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-08-31 DOI: 10.1016/j.neucom.2024.128510

Cooperative behavior assumes a critical role in resolving conflicts arising between collective and individual interests, while punishment measures serve as a robust deterrent against opportunistic free-riding. Within this context, evolutionary game theory (EGT) emerges as an indispensable paradigm for addressing this multifaceted issue. When it comes to introspection behaviors, reinforcement learning (RL) methods exhibit remarkable capabilities to capture agents’ cognitive processes. Nonetheless, previous research has often focused on a static and time-invariant update rule, neglecting the dynamic nature of real-world scenarios where individuals can flexibly transit between strategies in periodic time-dependent patterns. Here, we propose periodic update rules with Q-learning algorithm and game transition model with a punishment mechanism that grants cooperative agents the autonomy to exercise discretion in deciding whether to initiate punishment actions. The agents display dynamic rules periodically through game model transitions, thus ensuring EGT’s inherent adaptability. By employing Monte Carlo (MC) simulations, we analyze the emergence of cooperation that underscores the substantial enhancement of cooperative behavior through the proposed periodic update rules with Q-learning algorithm and game transitions in the presence of punishment. Our study highlights the indispensable significance of appropriate periodic intervals for updating rules and determining optimal punishment costs in the game transition model as critical elements for fostering the evolution of cooperation in real-world scenarios.

合作行为在解决集体利益和个人利益之间的冲突中起着至关重要的作用,而惩罚措施则是对机会主义搭便车行为的有力威慑。在此背景下,进化博弈论(EGT)成为解决这一多方面问题不可或缺的范例。说到内省行为,强化学习(RL)方法在捕捉代理的认知过程方面表现出非凡的能力。然而,以往的研究通常关注的是静态和时间不变的更新规则,而忽略了现实世界场景的动态特性,即个体可以根据周期性的时间变化模式在不同策略之间灵活转换。在这里,我们提出了采用 Q-learning 算法的周期性更新规则,以及带有惩罚机制的博弈转换模型,赋予合作代理自主决定是否启动惩罚行动。代理通过博弈模型转换定期显示动态规则,从而确保 EGT 固有的适应性。通过使用蒙特卡罗(MC)模拟,我们分析了合作的出现,强调了在存在惩罚的情况下,通过建议的 Q-learning 算法和博弈转换的定期更新规则,合作行为得到了实质性的增强。我们的研究强调,在博弈转换模型中,更新规则和确定最佳惩罚成本的适当周期间隔是促进现实世界场景中合作演化的关键因素,具有不可或缺的重要意义。
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