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Sleep staging through an unsupervised learning lens. 通过无监督学习镜头进行睡眠分期。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-12 DOI: 10.1016/j.patter.2025.101424
Alexandros Christopoulos, Athina Tzovara

Sleep is one of the most essential parts of our daily lives. The gold standard for studying sleep is polysomnography (PSG) recordings. The first step of analyzing PSG recordings involves splitting them into sleep stages, which is performed manually. Machine learning algorithms have attempted to automate the tedious task of sleep scoring, mostly via supervised learning. A recent study in Patterns introduces AISleep, a novel algorithm approaching the task of sleep scoring in an unsupervised framework. This algorithm is based on humanly interpretable features and provides robust results across different datasets and age groups.

睡眠是我们日常生活中最重要的部分之一。研究睡眠的黄金标准是多导睡眠图(PSG)记录。分析PSG记录的第一步包括将它们分成睡眠阶段,这是手动执行的。机器学习算法试图自动化繁琐的睡眠评分任务,主要是通过监督学习。《Patterns》杂志最近的一项研究介绍了aissleep,这是一种在无监督框架下完成睡眠评分任务的新算法。该算法基于人类可解释的特征,并在不同的数据集和年龄组中提供可靠的结果。
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引用次数: 0
The inadequacy of offline large language model evaluations: A need to account for personalization in model behavior. 离线大型语言模型评估的不足:需要考虑模型行为的个性化。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-12 DOI: 10.1016/j.patter.2025.101397
Angelina Wang, Daniel E Ho, Sanmi Koyejo

Standard offline evaluations for language models fail to capture how these models actually behave in practice, where personalization fundamentally alters model behavior. In this work, we provide empirical evidence showcasing this phenomenon by comparing offline evaluations to field evaluations conducted by having 800 real users of ChatGPT and Gemini pose benchmark and other questions to their chat interfaces.

语言模型的标准离线评估无法捕获这些模型在实践中的实际行为,其中个性化从根本上改变了模型的行为。在这项工作中,我们通过对800名ChatGPT和Gemini的真实用户对其聊天界面提出基准和其他问题进行的离线评估与现场评估进行比较,提供了证明这一现象的经验证据。
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引用次数: 0
Spatial coherence in DNA barcode networks. DNA条形码网络的空间相干性。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-01 eCollection Date: 2025-12-12 DOI: 10.1016/j.patter.2025.101428
David Fernandez Bonet, Johanna I Blumenthal, Shuai Lang, Simon K Dahlberg, Ian T Hoffecker

DNA barcode networks are the basis of sequencing-based microscopy, an emerging family of chemical imaging methods aiming to reconstruct spatial information, without optics, using sequencing technology. These methods capture microscopic spatial information by forming networks composed of many local chemical interactions, each marked by a unique, DNA-based barcode. However, the fundamental laws governing such networks are not yet understood, and spatial barcode networks are influenced by structural distortions such as false or shortcut edges. Current methods lack ground-truth-free tools to validate spatial quality, and we address this with a framework for topology-based quality control. We define a fundamental feature of spatial networks, spatial coherence, which quantifies geometric self-consistency in a network. By formalizing this relationship into quantitative metrics adapted from classical geometric rules, we could quantify spatial distortions by using only network data and show how these can be used as an optimization criterion to iteratively improve spatial reconstruction.

DNA条形码网络是基于测序的显微镜的基础,这是一种新兴的化学成像方法,旨在利用测序技术重建空间信息,而不需要光学。这些方法通过形成由许多局部化学相互作用组成的网络来捕获微观空间信息,每个网络都有一个独特的、基于dna的条形码。然而,控制这种网络的基本规律尚不清楚,空间条形码网络受到结构扭曲的影响,如假边或捷径边。目前的方法缺乏与地面无关的工具来验证空间质量,我们用基于拓扑的质量控制框架来解决这个问题。我们定义了空间网络的一个基本特征,空间相干性,它量化了网络中的几何自洽性。通过将这种关系形式化为基于经典几何规则的定量度量,我们可以仅使用网络数据来量化空间扭曲,并展示如何将这些数据用作迭代改进空间重建的优化标准。
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引用次数: 0
Is AI overhyped? 人工智能被过度炒作了吗?
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-14 DOI: 10.1016/j.patter.2025.101418
Jason H Moore, Anand K Gavai, Yingji Xia, Mohammadamin Mahmanzar, Youping Deng

In this People of Data, we asked five researchers, including three members of the journal's advisory board, whether they feel AI technologies are currently overhyped. Their responses reveal both optimism about the future impact of these technologies and serious concerns about overblown expectations and uncritical applications.

在本期《数据人物》中,我们询问了五位研究人员,其中包括该杂志顾问委员会的三位成员,他们是否觉得人工智能技术目前被过度炒作了。他们的回答既表明了对这些技术未来影响的乐观态度,也表明了对过高期望和不加批判的应用的严重担忧。
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引用次数: 0
Artificial intelligence to shed light on the algal dark proteomes. 人工智能将揭示藻类深色蛋白质组。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-14 DOI: 10.1016/j.patter.2025.101421
Maxence Plouviez, Eric Dubreucq

Nelson et al. developed LA⁴SR, a large-scale language-model framework to classify translated open reading frames (ORFeomes) across ten algal phyla. LA⁴SR achieves near-complete protein classification coverage even for algal dark proteomes, where alignment tools often return "no hit." The framework provides a leap forward for high-throughput protein classification in algae and could be a promising tool for better classifying proteins from many organisms.

Nelson等人开发了LA⁴SR,这是一个大型语言模型框架,用于对10个藻类门的翻译开放阅读框架(ORFeomes)进行分类。LA⁴SR即使对藻类深色蛋白质组也实现了近乎完整的蛋白质分类覆盖,而比对工具通常会返回“无命中”。该框架为藻类的高通量蛋白质分类提供了一个飞跃,并可能成为更好地分类来自许多生物的蛋白质的有前途的工具。
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引用次数: 0
Plug-and-play computational method for advancing natural and biomedical image representation. 用于推进自然和生物医学图像表示的即插即用计算方法。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-14 DOI: 10.1016/j.patter.2025.101412
Haifan Gong, Tianyu Han, Guanbin Li

Visual information is central to human perception, and how we represent images critically shapes downstream analysis. While recent years have witnessed remarkable advances in deep learning for image processing, Valous et al. now introduce a non-data-driven framework grounded in hypercomplex algebras for natural and biomedical image processing. This plug-and-play approach operates without training data and shows its effect across tasks such as re-colorization, de-colorization, contrast enhancement, re-staining, and integration into machine-learning pipelines.

视觉信息是人类感知的核心,我们如何表示图像对下游分析至关重要。虽然近年来在图像处理的深度学习方面取得了显着进展,但Valous等人现在引入了一种基于超复杂代数的非数据驱动框架,用于自然和生物医学图像处理。这种即插即用的方法无需训练数据即可运行,并显示了其在重新着色、去着色、对比度增强、重新着色以及集成到机器学习管道等任务中的效果。
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引用次数: 0
Dignity, properly used, could be a useful construct in AI ethics. 如果使用得当,尊严可以成为人工智能伦理中的一个有用的概念。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-14 DOI: 10.1016/j.patter.2025.101396
Cait Lamberton, Lorenn Ruster, Sakshi Ghai, Neela Saldanha

Rueda et al. argue that the concept of dignity is problematic for AI ethics due to its complexity, ambiguity, and biased usage. While agreeing on many points, we propose that adding the necessary precision to the use of the term is neither difficult nor onerous. Further, doing so may allow understanding of the factors that promote dignity affirmation, match the multifaceted nature of AI systems themselves, and promote pragmatically better design outcomes than will be likely if the idea is avoided in AI ethics discussions.

Rueda等人认为,尊严的概念由于其复杂性、模糊性和使用的偏见,对人工智能伦理来说是有问题的。虽然我们在许多问题上意见一致,但我们认为,对该术语的使用增加必要的精确度既不困难也不繁重。此外,这样做可能有助于理解促进尊严肯定的因素,与人工智能系统本身的多面性相匹配,并在实际中促进更好的设计结果,而不是在人工智能伦理讨论中避免这个想法。
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引用次数: 0
Three-factor learning in spiking neural networks: An overview of methods and trends from a machine learning perspective. 尖峰神经网络中的三因素学习:从机器学习的角度概述方法和趋势。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-11-10 eCollection Date: 2025-12-12 DOI: 10.1016/j.patter.2025.101414
Szymon Mazurek, Jakub Caputa, Jan K Argasiński, Maciej Wielgosz

Three-factor learning rules in spiking neural networks (SNNs) have emerged as a crucial extension of traditional Hebbian learning and spike-timing-dependent plasticity (STDP), incorporating neuromodulatory signals to improve adaptation and learning efficiency. These mechanisms enhance biological plausibility and facilitate improved credit assignment in artificial neural systems. This paper considers this topic from a machine learning perspective, providing an overview of recent advances in three-factor learning and discussing theoretical foundations, algorithmic implementations, and their relevance to reinforcement learning and neuromorphic computing. In addition, we explore interdisciplinary approaches, scalability challenges, and potential applications in robotics, cognitive modeling, and artificial intelligence (AI) systems. Finally, we highlight key research gaps and propose future directions for bridging the gap between neuroscience and AI.

尖峰神经网络(SNNs)中的三因素学习规则是传统Hebbian学习和尖峰时间依赖可塑性(STDP)的重要延伸,它结合了神经调节信号来提高适应和学习效率。这些机制增强了生物的可信性,促进了人工神经系统中信用分配的改进。本文从机器学习的角度考虑了这一主题,概述了三因素学习的最新进展,并讨论了理论基础、算法实现及其与强化学习和神经形态计算的相关性。此外,我们还探讨了跨学科的方法、可扩展性的挑战,以及在机器人、认知建模和人工智能(AI)系统中的潜在应用。最后,我们强调了关键的研究差距,并提出了弥合神经科学和人工智能之间差距的未来方向。
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引用次数: 0
SIMBA: A robust and generalizable measure of data imbalance. SIMBA:数据不平衡的一种健壮且可推广的度量。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-10-21 eCollection Date: 2025-12-12 DOI: 10.1016/j.patter.2025.101395
Julie R Pivin-Bachler, Egon L van den Broek

Ranging from health to cybersecurity, real-world data are heavily imbalanced. Handling imbalance is among the formidable challenges of machine learning (ML), as it deteriorates ML's performance, yielding biased results toward majority classes. However, finding an adequate measure to assess the impact of data imbalance is a field of research by itself. Following a review of the available imbalance measures, we introduce the status of imbalance (SIMBA), which considers data distribution and overlap, both of which are crucial to assess the impact of imbalance. SIMBA is benchmarked against seven imbalance measures on five ML models, 428 synthetic and 70 non-synthetic datasets from various domains. Resulting correlation coefficients between imbalance measures and classification performance and an analysis with 20 complexity measures prove that SIMBA consistently outperforms other measures. Overall, SIMBA accurately quantifies multiclass data imbalance and may help alleviate ML data imbalance challenges in the future.

从健康到网络安全,现实世界的数据严重失衡。处理不平衡是机器学习(ML)面临的巨大挑战之一,因为它会降低机器学习的性能,产生对大多数类别有偏见的结果。然而,寻找一个适当的措施来评估数据不平衡的影响本身就是一个研究领域。在回顾了可用的不平衡度量之后,我们引入了不平衡状态(SIMBA),它考虑了数据分布和重叠,这两者对于评估不平衡的影响至关重要。SIMBA在5个ML模型、428个合成数据集和70个来自不同领域的非合成数据集上对7个不平衡度量进行基准测试。得出的不平衡度量与分类性能之间的相关系数以及对20个复杂性度量的分析证明SIMBA始终优于其他度量。总的来说,SIMBA准确地量化了多类数据不平衡,可能有助于缓解未来ML数据不平衡的挑战。
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引用次数: 0
Decoding multi-joint hand movements from brain signals by learning a synergy-based neural manifold. 通过学习基于协同的神经流形,从大脑信号中解码多关节手部运动。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-10-20 eCollection Date: 2025-11-14 DOI: 10.1016/j.patter.2025.101394
Huaqin Sun, Zhengyi Wang, Yu Qi, Yueming Wang

Brain-computer interfaces have shown great potential in the reconstruction of motor functions. However, decoding complex and natural movements, such as hand movements, remains challenging. Traditional approaches primarily decode the movement of multiple joints in the hand independently, while the inherent synergies underlying these movements have not been well explored. Here, we demonstrate that complex hand movements can be decomposed into a set of motor primitives, each involving a synergy of multi-joint movements. Motor cortical neural activities recruit the motor synergies through spatiotemporal parameters to accomplish the complex motor targets. By learning a joint neural-motor representation of these motor synergies and decoding spatiotemporal parameters rather than the joint-level kinematics, significant improvement could be obtained in hand movement decoding. We propose a neural decoding framework, SynergyNet, to effectively learn the neural-motor synergies for hand movement control. The proposed approach significantly outperforms benchmark methods and provides high interpretability with the hand movement neural decoding task.

脑机接口在运动功能重建方面显示出巨大的潜力。然而,解码复杂和自然的动作,如手部动作,仍然具有挑战性。传统方法主要是独立解码手部多个关节的运动,而这些运动背后的内在协同作用尚未得到很好的探索。在这里,我们证明了复杂的手部运动可以分解为一组运动原语,每个原语都涉及多关节运动的协同作用。运动皮层神经活动通过时空参数调动运动协同作用,完成复杂的运动目标。通过学习这些运动协同作用的联合神经运动表征,解码时空参数而不是关节水平的运动学,可以显著改善手部运动解码。我们提出了一个神经解码框架,SynergyNet,以有效地学习手部运动控制的神经-运动协同。该方法明显优于基准方法,并对手部运动神经解码任务具有较高的可解释性。
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引用次数: 0
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Patterns
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