Neuropathic Pain Diagnosis Simulator for Causal Discovery Algorithm Evaluation
Tu, Ruibo, Zhang, Kun, Bertilson, Bo, Kjellstrom, Hedvig, Zhang, Cheng
–Neural Information Processing Systems
Discovery of causal relations from observational data is essential for many disciplines of science and real-world applications. However, unlike other machine learning algorithms, whose development has been greatly fostered by a large amount of available benchmark datasets, causal discovery algorithms are notoriously difficult to be systematically evaluated because few datasets with known ground-truth causal relations are available. In this work, we handle the problem of evaluating causal discovery algorithms by building a flexible simulator in the medical setting. We develop a neuropathic pain diagnosis simulator, inspired by the fact that the biological processes of neuropathic pathophysiology are well studied with well-understood causal influences. Our simulator exploits the causal graph of the neuropathic pain pathology and its parameters in the generator are estimated from real-life patient cases.
Neural Information Processing Systems
Mar-19-2020, 01:48:17 GMT