Distinguishing Cause from Effect Using Observational Data: Methods and Benchmarks

被引:0
|
作者
Mooij, Joris M. [1 ]
Peters, Jonas [2 ]
Janzing, Dominik [2 ]
Zscheischler, Jakob [3 ]
Schoelkopf, Bernhard [2 ]
机构
[1] Univ Amsterdam, Inst Informat, Postbox 94323, NL-1090 GH Amsterdam, Netherlands
[2] Max Planck Inst Intelligent Syst, Spemannstr 38, D-72076 Tubingen, Germany
[3] ETH, Inst Atmospher & Climate Sci, Univ Str 16, CH-8092 Zurich, Switzerland
关键词
Causal discovery; additive noise; information-geometric causal inference; cause-effect pairs; benchmarks; SURFACE OZONE; PERFORMANCE; SANITATION; DISCOVERY; SELECTION;
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The discovery of causal relationships from purely observational data is a fundamental problem in science. The most elementary form of such a causal discovery problem is to decide whether X causes Y or, alternatively, Y causes X, given joint observations of two variables X; Y. An example is to decide whether altitude causes temperature, or vice versa, given only joint measurements of both variables. Even under the simplifying assumptions of no confounding, no feedback loops, and no selection bias, such bivariate causal discovery problems are challenging. Nevertheless, several approaches for addressing those problems have been proposed in recent years. We review two families of such methods: methods based on Additive Noise Models (ANMs) and Information Geometric Causal Inference (IGCI). We present the benchmark CAUSEEFFECTPAIRS that consists of data for 100 different cause-effect pairs selected from 37 data sets from various domains (e.g., meteorology, biology, medicine, engineering, economy, etc.) and motivate our decisions regarding the "ground truth" causal directions of all pairs. We evaluate the performance of several bivariate causal discovery methods on these real-world benchmark data and in addition on artificially simulated data. Our empirical results on real-world data indicate that certain methods are indeed able to distinguish cause from effect using only purely observational data, although more benchmark data would be needed to obtain statistically significant conclusions. One of the best performing methods overall is the method based on Additive Noise Models that has originally been proposed by Hoyer et al. (2009), which obtains an accuracy of 63 +/- 10 % and an AUC of 0.74 +/- 0.05 on the real-world benchmark. As the main theoretical contribution of this work we prove the consistency of that method.
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页数:102
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