Two Algorithms for Inducing Causal Models from Data
暂无分享,去创建一个
Many methods have been developed for inducing cause from statistical data. Those employing linear regression have historically been discounted, due to their inability to distinguish true from spurious cause. We present a regression-based statistic that avoids this problem by separating direct and indirect influences. We use this statistic in two causal induction algorithms, each taking a different approach to constructing causal models. We demonstrate empirically the accuracy of these algorithms.
[1] Paul R. Cohen,et al. Regression Can Build Predictive Causal Models , 1994 .
[2] Judea Pearl,et al. A Theory of Inferred Causation , 1991, KR.
[3] P. Suppes. A Probabilistic Theory Of Causality , 1970 .
[4] Lisa Ballesteros,et al. Regression Based Causal Induction with Latent Variable Models , 1994, AAAI.