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Editorial: From Explainable Artificial Intelligence (xAI) to Understandable Artificial Intelligence (uAI) 社论:从可解释的人工智能(xAI)到可理解的人工智能(uAI)
Pub Date : 2024-09-10 DOI: 10.1109/TAI.2024.3439048
Hussein Abbass;Keeley Crockett;Jonathan Garibaldi;Alexander Gegov;Uzay Kaymak;Joao Miguel C. Sousa
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE Transactions on Artificial Intelligence 出版信息
Pub Date : 2024-09-10 DOI: 10.1109/TAI.2024.3449732
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE Transactions on Artificial Intelligence 出版信息
Pub Date : 2024-08-13 DOI: 10.1109/TAI.2024.3436231
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE Transactions on Artificial Intelligence 出版信息
Pub Date : 2024-07-16 DOI: 10.1109/TAI.2024.3422574
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引用次数: 0
Global Attention-Guided Dual-Domain Point Cloud Feature Learning for Classification and Segmentation 用于分类和分段的全局注意力引导双域点云特征学习
Pub Date : 2024-07-12 DOI: 10.1109/tai.2024.3429050
Zihao Li, Pan Gao, Kang You, Chuan Yan, Manoranjan Paul
Previous studies have demonstrated the effectiveness of point-based neural models on the point cloud analysis task. However, there remains a crucial issue on producing the efficient input embedding for raw point coordinates. Moreover, another issue lies in the limited efficiency of neighboring aggregations, which is a critical component in the network stem. In this paper, we propose a Global Attention-guided Dual-domain Feature Learning network (GAD) to address the above-mentioned issues. We first devise the Contextual Position-enhanced Transformer (CPT) module, which is armed with an improved global attention mechanism, to produce a global-aware input embedding that serves as the guidance to subsequent aggregations. Then, the Dual-domain K-nearest neighbor Feature Fusion (DKFF) is cascaded to conduct effective feature aggregation through novel dual-domain feature learning which appreciates both local geometric relations and long-distance semantic connections. Extensive experiments on multiple point cloud analysis tasks (e.g., classification, part segmentation, and scene semantic segmentation) demonstrate the superior performance of the proposed method and the efficacy of the devised modules.
以往的研究已经证明了基于点的神经模型在点云分析任务中的有效性。然而,为原始点坐标生成高效输入嵌入仍是一个关键问题。此外,另一个问题在于邻近聚合的效率有限,而邻近聚合是网络干系中的关键组成部分。在本文中,我们提出了一种全局注意力引导的双域特征学习网络(GAD)来解决上述问题。我们首先设计了上下文位置增强变换器(CPT)模块,该模块采用改进的全局注意力机制,生成全局感知输入嵌入,作为后续聚合的指导。然后,级联双域 K 近邻特征融合(DKFF),通过新颖的双域特征学习(既重视局部几何关系,又重视长距离语义联系)进行有效的特征聚合。在多个点云分析任务(如分类、部件分割和场景语义分割)上的广泛实验证明了所提方法的卓越性能和所设计模块的功效。
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引用次数: 0
Guest Editorial: AutoML for Nonstationary Data 特邀社论:用于非平稳数据的 AutoML
Pub Date : 2024-06-25 DOI: 10.1109/TAI.2024.3387583
Ran Cheng;Hugo Jair Escalante;Wei-Wei Tu;Jan N. Van Rijn;Shuo Wang;Yun Yang
The five papers in this special section address different aspects of automated machine learning (AutoML) from fundamental algorithms to real-world applications. Developing high-performance machine learning models is a difficult task that usually requires expertise from data scientists and knowledge from domain experts. To make machine learning more accessible and ease the labor-intensive trial-and-error process of searching for the most appropriate machine learning algorithm and the optimal hyperparameter setting, AutoML was developed and has become a rapidly growing area in recent years. AutoML aims at automation and efficiency of the machine learning process across domains and applications. Nowadays, data is commonly collected over time and susceptible to changes, such as in Internet-of-Things (IoT) systems, mobile phone applications and healthcare data analysis. It poses new challenges to the traditional AutoML with the assumption of data stationarity. Interesting research questions arise around whether, when and how to effectively and efficiently deal with non-stationary data in AutoML.
本专题中的五篇论文探讨了机器自动学习(AutoML)从基础算法到实际应用的不同方面。开发高性能机器学习模型是一项艰巨的任务,通常需要数据科学家的专业知识和领域专家的知识。为了使机器学习更容易获得,并减轻寻找最合适的机器学习算法和最佳超参数设置的劳动密集型试错过程,AutoML应运而生,并成为近年来迅速发展的一个领域。AutoML 旨在实现跨领域和跨应用的机器学习过程的自动化和高效化。如今,数据通常是随时间收集的,并且容易发生变化,例如在物联网(IoT)系统、手机应用和医疗数据分析中。这给以数据固定性为假设的传统 AutoML 带来了新的挑战。围绕是否、何时以及如何在 AutoML 中有效、高效地处理非静态数据,产生了一些有趣的研究问题。
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引用次数: 0
IEEE Transactions on Artificial Intelligence Publication Information IEEE Transactions on Artificial Intelligence 出版信息
Pub Date : 2024-06-25 DOI: 10.1109/TAI.2024.3408962
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引用次数: 0
A Novel Grades Prediction Method for Undergraduate Students by Learning Explicit Conditional Distribution 通过学习显式条件分布预测本科生成绩的新方法
Pub Date : 2024-06-18 DOI: 10.1109/TAI.2024.3416077
Na Zhang;Ming Liu;Lin Wang;Shuangrong Liu;Runyuan Sun;Bo Yang;Shenghui Zhu;Chengdong Li;Cheng Yang;Yuhu Cheng
Educational data mining (EDM) offers an effective solution to predict students’ course grades in the next term. Conventional grade prediction methods can be viewed as regressing an expectation of the probability distribution of the student's grade, typically called single-value grade prediction. The reliable prediction outcomes of these methods depend on the complete input information related to students. However, next-term grade prediction often encounters the challenge of incomplete input information due to the inaccessibility of future data and the privacy of data. In this scenario, single-value grade prediction struggles to assess students’ academic status, as it may not be represented and assessed by relying on a singular expectation value. This limitation increases the risk of misjudgment, and may lead to errors in educational decision-making. Considering the challenge of collecting complete input information, we shift from traditional single-value predictions to forecasting the explicit probability distribution of the course grade. The probability distribution of the grade can assess the students’ academic status by providing probabilities corresponding to all possible grade values rather than relying solely on an expectation value, which offers the foundation to support the educators’ decision-making. In this article, the course grade distribution prediction (CGDP) model is proposed, aiming to estimate an explicit conditional probability distribution of course grades in the next term. This model can identify at-risk students, offering comprehensive decision-making information for educators and students. To ensure precise distribution predictions, a calibration method is also employed to improve the alignment between predicted and actual probabilities. Experimental results verify the effectiveness of the proposed model in early grade warning for undergraduates, based on real university data.
教育数据挖掘(EDM)为预测学生下学期的课程成绩提供了一种有效的解决方案。传统的成绩预测方法可以看作是对学生成绩概率分布的回归期望,通常称为单值成绩预测。这些方法的可靠预测结果取决于与学生相关的完整输入信息。然而,由于未来数据的不可获取性和数据的私密性,下学期成绩预测往往会遇到输入信息不完整的难题。在这种情况下,单值成绩预测很难评估学生的学业状况,因为依靠单一期望值可能无法体现和评估学生的学业状况。这种局限性增加了误判的风险,可能导致教育决策失误。考虑到收集完整输入信息的挑战,我们从传统的单值预测转向预测课程成绩的明确概率分布。成绩的概率分布可以通过提供与所有可能成绩值相对应的概率来评估学生的学业状况,而不是仅仅依赖于期望值,这为教育者的决策提供了基础支持。本文提出了课程成绩分布预测(CGDP)模型,旨在估算下学期课程成绩的显式条件概率分布。该模型可以识别高危学生,为教育工作者和学生提供全面的决策信息。为了确保精确的分布预测,还采用了校准方法来提高预测概率与实际概率之间的一致性。实验结果基于真实的大学数据,验证了所提模型在本科生成绩预警方面的有效性。
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引用次数: 0
A Causality-Informed Graph Intervention Model for Pancreatic Cancer Early Diagnosis 胰腺癌早期诊断的因果关系图干预模型
Pub Date : 2024-04-30 DOI: 10.1109/TAI.2024.3395586
Xinyue Li;Rui Guo;Hongzhang Zhu;Tao Chen;Xiaohua Qian
Pancreatic cancer is a highly fatal cancer type. Patients are typically in an advanced stage at their first diagnosis, mainly due to the absence of distinctive early stage symptoms and lack of effective early diagnostic methods. In this work, we propose an automated method for pancreatic cancer diagnosis using noncontrast computed tomography (CT), taking advantage of its widespread availability in clinic. Currently, a primary challenge limiting the clinical value of intelligent systems is low generalization, i.e., the difficulty of achieving stable performance across datasets from different medical sources. To address this challenge, a novel causality-informed graph intervention model is developed based on a multi-instance-learning framework integrated with graph neural network (GNN) for the extraction of local discriminative features. Within this model, we develop a graph causal intervention scheme with three levels of intervention for graph nodes, structures, and representations. This scheme systematically suppresses noncausal factors and thus lead to generalizable predictions. Specifically, first, a target node perturbation strategy is designed to capture target-region features. Second, a causal-structure separation module is developed to automatically identify the causal graph structures for obtaining stable representations of whole target regions. Third, a graph-level feature consistency mechanism is proposed to extract invariant features. Comprehensive experiments on large-scale datasets validated the promising early diagnosis performance of our proposed model. The model generalizability was confirmed on three independent datasets, where the classification accuracy reached 86.3%, 80.4%, and 82.2%, respectively. Overall, we provide a valuable potential tool for pancreatic cancer screening and early diagnosis.
胰腺癌是一种高度致命的癌症。患者首次确诊时通常已是晚期,这主要是由于缺乏明显的早期症状和有效的早期诊断方法。在这项工作中,我们利用非对比计算机断层扫描(CT)在临床上广泛应用的优势,提出了一种自动诊断胰腺癌的方法。目前,限制智能系统临床价值的一个主要挑战是通用性低,即很难在不同医疗来源的数据集上实现稳定的性能。为应对这一挑战,我们开发了一种新型的因果关系图干预模型,该模型基于多实例学习框架,并与用于提取局部判别特征的图神经网络(GNN)相集成。在该模型中,我们开发了一种图因果干预方案,对图节点、结构和表示法进行三级干预。该方案系统性地抑制了非因果因素,从而实现了可推广的预测。具体来说,首先,目标节点扰动策略旨在捕捉目标区域特征。其次,开发了一个因果结构分离模块,用于自动识别因果图结构,以获得整个目标区域的稳定表征。第三,提出了图层特征一致性机制,以提取不变特征。在大规模数据集上进行的综合实验验证了我们提出的模型具有良好的早期诊断性能。模型的通用性在三个独立数据集上得到了证实,分类准确率分别达到了 86.3%、80.4% 和 82.2%。总之,我们为胰腺癌筛查和早期诊断提供了一个有价值的潜在工具。
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引用次数: 0
SBP-GCA: Social Behavior Prediction via Graph Contrastive Learning With Attention SBP-GCA:通过图形对比学习进行注意力社会行为预测
Pub Date : 2024-04-30 DOI: 10.1109/TAI.2024.3395574
Yufei Liu;Jia Wu;Jie Cao
Social behavior prediction on social media is attracting significant attention from researchers. Social e-commerce focuses on engagement marketing, which emphasizes social behavior because it effectively increases brand recognition. Currently, existing works on social behavior prediction suffer from two main problems: 1) they assume that social influence probabilities can be learned independently of each other, and their calculations do not include any influence probability estimations based on friends’ behavior; and 2) negative sampling of subgraphs is usually ignored in social behavior prediction work. To the best of our knowledge, introducing graph contrastive learning (GCL) to social behavior prediction is novel and interesting. In this article, we propose a framework, social behavior prediction via graph contrastive learning with attention named SBP-GCA, to promote social behavior prediction. First, two methods are designed to extract subgraphs from the original graph, and their structural features are learned by GCL. Then, it models how a user's behavior is influenced by neighbors and learns influence features via graph attention networks (GATs). Furthermore, it combines structural features, influence features, and intrinsic features to predict social behavior. Extensive and systematic experiments on three datasets validate the superiority of the proposed SBP-GCA.
社交媒体上的社交行为预测正引起研究人员的极大关注。社交电子商务侧重于参与式营销,强调社交行为,因为它能有效提高品牌认知度。目前,有关社交行为预测的现有研究存在两个主要问题:1)假设社交影响概率可以独立学习,其计算不包括任何基于好友行为的影响概率估计;2)社交行为预测工作通常忽略子图的负采样。据我们所知,将图对比学习(GCL)引入社交行为预测是一项新颖而有趣的工作。在本文中,我们提出了一个通过图对比学习(graph contrastive learning with attention)进行社会行为预测的框架,命名为 SBP-GCA,以促进社会行为预测。首先,我们设计了两种方法从原始图中提取子图,并通过 GCL 学习子图的结构特征。然后,它对用户行为如何受邻居影响进行建模,并通过图注意力网络(GAT)学习影响特征。此外,它还结合了结构特征、影响特征和内在特征来预测社交行为。在三个数据集上进行的广泛而系统的实验验证了所提出的 SBP-GCA 的优越性。
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IEEE transactions on artificial intelligence
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