Py-Tetrad and RPy-Tetrad: A New Python Interface with R Support for Tetrad Causal Search.

Joseph D Ramsey, Bryan Andrews
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引用次数: 0

Abstract

We give novel Python and R interfaces for the (Java) Tetrad project for causal modeling, search, and estimation. The Tetrad project is a mainstay in the literature, having been under consistent development for over 30 years. Some of its algorithms are now classics, like PC and FCI; others are recent developments. It is increasingly the case, however, that researchers need to access the underlying Java code from Python or R. Existing methods for doing this are inadequate. We provide new, up-to-date methods using the JPype Python-Java interface and the Reticulate Python-R interface, directly solving these issues. With the addition of some simple tools and the provision of working examples for both Python and R, using JPype and Reticulate to interface Python and R with Tetrad is straightforward and intuitive.

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Py-Tetrad 和 RPy-Tetrad:为 Tetrad 因果搜索提供 R 支持的新 Python 接口。
我们为用于因果建模、搜索和估算的(Java)Tetrad 项目提供了新颖的 Python 和 R 接口。Tetrad 项目是文献中的中流砥柱,已经持续发展了 30 多年。它的一些算法现已成为经典,如 PC 和 FCI;另一些则是最近才开发的。然而,越来越多的研究人员需要从 Python 或 R 语言访问底层 Java 代码。我们使用 JPype Python-Java 接口和 Reticulate Python-R 接口提供了最新的新方法,直接解决了这些问题。通过添加一些简单的工具和提供 Python 和 R 的工作示例,使用 JPype 和 Reticulate 将 Python 和 R 与 Tetrad 连接起来就变得简单直观了。
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