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lys: interactive multi-dimensional data analysis andvisualization platform LYS:交互式多维数据分析和可视化平台
Pub Date : 2023-12-14 DOI: 10.21105/joss.05869
Asuka Nakamura
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引用次数: 0
HW2D: A reference implementation of theHasegawa-Wakatani model for plasma turbulence in fusion reactors HW2D:长谷川-若谷聚变反应堆等离子体湍流模型的参考实施方案
Pub Date : 2023-12-12 DOI: 10.21105/joss.05959
Robin Greif
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引用次数: 0
pudu: A Python library for agnostic feature selectionand explainability of Machine Learning spectroscopic problems pudu:用于机器学习光谱问题的不可知特征选择和可解释性的 Python 库
Pub Date : 2023-12-12 DOI: 10.21105/joss.05873
Enric Grau‐Luque, Ignacio Becerril‐Romero, Alejandro Perez-Rodriguez, M. Guc, V. Izquierdo‐Roca
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引用次数: 0
libcdict: fast dictionaries in C libcdict: C 语言中的快速字典
Pub Date : 2023-12-12 DOI: 10.21105/joss.04756
R. Izzard, D. Hendriks, Daniel P. Nemergut
A common requirement in science is to store and share large sets of simulation data in an efficient, nested, flexible and human-readable way. Such datasets contain number counts and distributions, i
科学界的一个共同要求是以高效、嵌套、灵活和人类可读的方式存储和共享大量模拟数据集。这些数据集包含数字计数和分布,即
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引用次数: 0
GECo: A collection of solvers for the self-gravitatingVlasov equations GECo:自重力弗拉索夫方程求解器集合
Pub Date : 2023-12-11 DOI: 10.21105/joss.05979
Ellery Ames, Anders Logg
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引用次数: 1
archeoViz: an R package for the Visualisation,Exploration, and Web Communication of Archaeological SpatialData archeoViz:用于考古空间数据可视化、探索和网络交流的 R 软件包
Pub Date : 2023-12-11 DOI: 10.21105/joss.05811
Sébastien Plutniak
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引用次数: 0
dcTensor: An R package for discrete matrix/tensordecomposition 离散矩阵/张量分解的R包
Pub Date : 2023-08-25 DOI: 10.21105/joss.05664
Koki Tsuyuzaki
Matrix factorization (MF) is a widely used approach to extract significant patterns in a data matrix. MF is formalized as the approximation of a data matrix X by the matrix product of two factor matrices U and V. Because this formalization has a large number of degrees of freedom, some constraints are imposed on the solution. Non-negative matrix factorization (NMF) imposing a non-negative solution for the factor matrices is a widely used algorithm to decompose non-negative matrix data matrix. Due to the interpretability of its non-negativity and the convenience of using decomposition results as clustering, there are many applications of NMF in image processing, audio processing, and bioinformatics (Cichocki et al., 2009).
矩阵分解(MF)是一种广泛使用的从数据矩阵中提取重要模式的方法。MF被形式化为数据矩阵X通过两个因子矩阵U和v的矩阵积的近似。由于这种形式化具有大量的自由度,因此在解上施加了一些约束。非负矩阵分解(NMF)是一种应用广泛的分解非负矩阵数据矩阵的算法。由于其非负性的可解释性和使用分解结果作为聚类的便利性,NMF在图像处理、音频处理和生物信息学中有许多应用(Cichocki et al., 2009)。
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引用次数: 0
sptotal: an R package for predicting totals and weighted sums from spatial data. sptotal:用于从空间数据中预测总数和加权和的 R 软件包。
Pub Date : 2023-05-24 DOI: 10.21105/joss.05363
Matt Higham, Jay Ver Hoef, Bryce Frank, Michael Dumelle

In ecological or environmental surveys, it is often desired to predict the mean or total of a variable in some finite region. However, because of time and money constraints, sampling the entire region is often unfeasible. The purpose of the sptotal R package is to provide software that gives a prediction for a quantity of interest, such as a total, and an associated standard error for the prediction. The predictor, referred to as the Finite-Population-Block-Kriging (FPBK) predictor in the literature (J. M. Ver Hoef, 2008), incorporates possible spatial correlation in the data and also incorporates an appropriate variance reduction for sampling from a finite population. In the remainder of the paper, we give an overview of both the background of the method and of the sptotal package.

在生态或环境调查中,人们往往希望预测某个有限区域内变量的平均值或总量。然而,由于时间和资金的限制,对整个区域进行采样往往是不可行的。sptotal R 软件包的目的是提供一个软件,用于预测一个感兴趣的量,如总量,以及预测的相关标准误差。该预测器在文献(J. M. Ver Hoef, 2008 年)中被称为有限总体-块-克里金(FPBK)预测器,它包含了数据中可能存在的空间相关性,还包含了从有限总体中采样时的适当方差缩小。在本文的其余部分,我们将概述该方法和 sptotal 软件包的背景。
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引用次数: 0
CVtreeMLE: Efficient Estimation of Mixed Exposures using Data Adaptive Decision Trees and Cross-Validated Targeted Maximum Likelihood Estimation in R. CVtreeMLE:基于数据自适应决策树和交叉验证目标最大似然估计的混合暴露有效估计。
Pub Date : 2023-01-01 DOI: 10.21105/joss.04181
David McCoy, Alan Hubbard, Mark Van der Laan

Statistical causal inference of mixed exposures has been limited by reliance on parametric models and, until recently, by researchers considering only one exposure at a time, usually estimated as a beta coefficient in a generalized linear regression model (GLM). This independent assessment of exposures poorly estimates the joint impact of a collection of the same exposures in a realistic exposure setting. Marginal methods for mixture variable selection such as ridge/lasso regression are biased by linear assumptions and the interactions modeled are chosen by the user. Clustering methods such as principal component regression lose both interpretability and valid inference. Newer mixture methods such as quantile g-computation (Keil et al., 2020) are biased by linear/additive assumptions. More flexible methods such as Bayesian kernel machine regression (BKMR)(Bobb et al., 2014) are sensitive to the choice of tuning parameters, are computationally taxing and lack an interpretable and robust summary statistic of dose-response relationships. No methods currently exist which finds the best flexible model to adjust for covariates while applying a non-parametric model that targets for interactions in a mixture and delivers valid inference for a target parameter. Non-parametric methods such as decision trees are a useful tool to evaluate combined exposures by finding partitions in the joint-exposure (mixture) space that best explain the variance in an outcome. However, current methods using decision trees to assess statistical inference for interactions are biased and are prone to overfitting by using the full data to both identify nodes in the tree and make statistical inference given these nodes. Other methods have used an independent test set to derive inference which does not use the full data. The CVtreeMLE R package provides researchers in (bio)statistics, epidemiology, and environmental health sciences with access to state-of-the-art statistical methodology for evaluating the causal effects of a data-adaptively determined mixed exposure using decision trees. Our target audience are those analysts who would normally use a potentially biased GLM based model for a mixed exposure. Instead, we hope to provide users with a non-parametric statistical machine where users simply specify the exposures, covariates and outcome, CVtreeMLE then determines if a best fitting decision tree exists and delivers interpretable results.

混合暴露的统计因果推断受到参数模型的限制,直到最近,研究人员一次只考虑一种暴露,通常在广义线性回归模型(GLM)中估计为β系数。这种对暴露的独立评估不能很好地估计在实际暴露环境中一系列相同暴露的共同影响。混合变量选择的边际方法,如ridge/lasso回归,受到线性假设的偏差,而模型的相互作用由用户选择。主成分回归等聚类方法失去了可解释性和有效推理。较新的混合方法,如分位数g计算(Keil et al., 2020)受到线性/可加性假设的影响。更灵活的方法,如贝叶斯核机回归(BKMR)(Bobb等人,2014)对调优参数的选择很敏感,计算量很大,并且缺乏可解释和稳健的剂量-反应关系汇总统计。目前还没有一种方法可以找到最灵活的模型来调整协变量,同时应用非参数模型来针对混合物中的相互作用并提供目标参数的有效推断。非参数方法,如决策树,是通过在联合暴露(混合)空间中找到最能解释结果方差的分区来评估组合暴露的有用工具。然而,目前使用决策树来评估交互的统计推断的方法是有偏见的,并且容易过度拟合,因为使用完整的数据来识别树中的节点并根据这些节点进行统计推断。其他方法使用独立的测试集来推导不使用完整数据的推理。CVtreeMLE R包为(生物)统计学、流行病学和环境卫生科学领域的研究人员提供了最先进的统计方法,用于使用决策树评估数据自适应确定的混合暴露的因果效应。我们的目标受众是那些通常使用可能有偏差的基于GLM的混合敞口模型的分析师。相反,我们希望为用户提供一个非参数统计机,用户只需指定曝光,协变量和结果,CVtreeMLE然后确定是否存在最佳拟合决策树并提供可解释的结果。
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引用次数: 1
High-performance neural population dynamics modeling enabled by scalable computational infrastructure. 通过可扩展的计算基础设施实现高性能神经种群动力学建模。
Pub Date : 2023-01-01 DOI: 10.21105/joss.05023
Aashish N Patel, Andrew R Sedler, Jingya Huang, Chethan Pandarinath, Vikash Gilja
Advances in neural interface technology are facilitating parallel, high-dimensional time series measurements of the brain in action. A powerful strategy for analyzing these measurements is to apply unsupervised learning techniques to uncover lower-dimensional latent dynamics that explain much of the variance in the high-dimensional measurements (Cunningham & Yu, 2014; Golub et al., 2018; Vyas et al., 2020). Latent factor analysis via dynamical systems (LFADS) (Pandarinath et al., 2018) provides a deep learning approach for extracting estimates of these latent dynamics from neural population data. The recently developed AutoLFADS framework (Keshtkaran et al., 2022) extends LFADS by using Population Based Training (PBT) (Jaderberg et al., 2017) to effectively and scalably tune model hyperparameters, a critical step for accurate modeling of neural population data. As hyperparameter sweeps are one of the most computationally demanding processes in model development, these workflows should be deployed in a computationally efficient and cost effective manner given the compute resources available (e.g., local, institutionally-supported, or commercial computing clusters). The initial implementation of AutoLFADS used the Ray library (Moritz et al., 2018) to enable support for specific local and commercial cloud workflows. We extend this support, by providing additional options for training AutoLFADS models using local clusters in a container-native approach (e.g., Docker,
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引用次数: 0
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Journal of open source software
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