基于RCoT的因果推理与条件独立性检验

Pub Date : 2023-01-01 DOI:10.12720/jait.14.3.495-500
Mayank Agarwal, Abhay H. Kashyap, G. Shobha, Jyothi Shetty, R. Dev
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引用次数: 0

摘要

条件独立性(CI)测试是因果模型发现和验证的关键操作。有效地执行此操作需要线性可扩展和健壮的算法及其实现。以前的技术,如互相关法、线性法;核条件独立性测试(KCIT)和基于核的算法不能很好地随数据集大小进行扩展,成为CI算法的瓶颈。随机条件相关检验(RCoT)和随机条件独立检验(RCIT)是利用线性映射减少计算时间的核算法的改进版本。本文描述了它们在Python中的使用和实现。然后,本文将RCoT算法的时间复杂度与先前实现的基于离散化的算法Probspace进行了比较。结果表明,以前的模型与目前的模型精度相近,但得到这些结果的时间缩短了50%。实现的算法大约需要3秒来运行测试用例(使用的数据和生成的测试用例在章节IV-C中描述)。
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Causal Inference and Conditional Independence Testing with RCoT
—Conditional Independence (CI) testing is a crucial operation in causal model discovery and validation. Effectively performing this requires a linearly scalable and robust algorithm and its implementation. Previous techniques, such as cross-correlation, a linear method; Kernel Conditional Independence Test (KCIT,) and a kernel-based algorithm, do not scale well with dataset size and pose a bottleneck for CI algorithms. An improved version of kernel-based algorithms which use linear mapping to decrease computational time is the Randomized conditional Correlation Test (RCoT) and Randomized Conditional Independence Test (RCIT). This paper describes their use and implementation in Python. This paper then compares the time complexity of the RCoT algorithm with a previously implemented Discretization-based algorithm Probspace. The results show that the accuracy of the previous and current models is similar, but the time taken to get these results has been reduced by 50%. The implemented algorithm takes about 3s to run the testcases (the data used and testcases generated are described in Section IV-C).
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