AISLEX:使用 JAX 的近似个体样本学习熵

IF 2.4 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING SoftwareX Pub Date : 2024-10-07 DOI:10.1016/j.softx.2024.101915
Ondrej Budik , Milan Novak , Florian Sobieczky , Ivo Bukovsky
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引用次数: 0

摘要

我们介绍了基于学习熵算法的在线异常检测模块 AISLEX。学习熵算法是一种基于机器学习的新型信息测量方法,可量化神经网络的学习效果。当学习熵值较高时,AISLEX 会检测到异常数据样本。该模块设计为可随时使用,有 NumPy 和 JAX 两种后端,适用于各种应用领域。NumPy 后端针对运行 Python3 的设备进行了优化,优先使用有限的内存和 CPU。相比之下,JAX 后端经过优化,可在 CPU、GPU 和 TPU 上快速执行,但需要更多计算资源。AISLEX 还在 Jupyter 笔记本中提供了大量实施示例,这些示例利用的是参数内线性-非线性神经架构,这些架构因其数据要求低、计算简单、收敛性可分析性和动态稳定性而被选中。
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AISLEX: Approximate individual sample learning entropy with JAX
We present AISLEX, an online anomaly detection module based on the Learning Entropy algorithm, a novel machine learning-based information measure that quantifies the learning effort of neural networks. AISLEX detects anomalous data samples when the learning entropy value is high. The module is designed to be readily usable, with both NumPy and JAX backends, making it suitable for various application fields. The NumPy backend is optimized for devices running Python3, prioritizing limited memory and CPU usage. In contrast, the JAX backend is optimized for fast execution on CPUs, GPUs, and TPUs but requires more computational resources. AISLEX also provides extensive implementation examples in Jupyter notebooks, utilizing in-parameter-linear-nonlinear neural architectures selected for their low data requirements, computational simplicity, convergence analyzability, and dynamical stability.
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来源期刊
SoftwareX
SoftwareX COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
5.50
自引率
2.90%
发文量
184
审稿时长
9 weeks
期刊介绍: SoftwareX aims to acknowledge the impact of software on today''s research practice, and on new scientific discoveries in almost all research domains. SoftwareX also aims to stress the importance of the software developers who are, in part, responsible for this impact. To this end, SoftwareX aims to support publication of research software in such a way that: The software is given a stamp of scientific relevance, and provided with a peer-reviewed recognition of scientific impact; The software developers are given the credits they deserve; The software is citable, allowing traditional metrics of scientific excellence to apply; The academic career paths of software developers are supported rather than hindered; The software is publicly available for inspection, validation, and re-use. Above all, SoftwareX aims to inform researchers about software applications, tools and libraries with a (proven) potential to impact the process of scientific discovery in various domains. The journal is multidisciplinary and accepts submissions from within and across subject domains such as those represented within the broad thematic areas below: Mathematical and Physical Sciences; Environmental Sciences; Medical and Biological Sciences; Humanities, Arts and Social Sciences. Originating from these broad thematic areas, the journal also welcomes submissions of software that works in cross cutting thematic areas, such as citizen science, cybersecurity, digital economy, energy, global resource stewardship, health and wellbeing, etcetera. SoftwareX specifically aims to accept submissions representing domain-independent software that may impact more than one research domain.
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