2016-05-09T15:12:00Z
2016-05-09T15:12:00Z
2014
In many important settings, subjects can show signi cant heterogeneity in response to a stimulus or treatment". For instance, a treatment that works for the overall population might be highly ine ective, or even harmful, for a subgroup of subjects with speci c characteristics. Similarly, a new treatment may not be better than an existing treatment in the overall population, but there is likely a subgroup of subjects who would bene t from it. The notion that "one size may not fit all" is becoming increasingly recognized in a wide variety of elds, ranging from economics to medicine. This has drawn signi cant attention to personalize the choice of treatment, so it is optimal for each individual. An optimal personalized treatment is the one that maximizes the probability of a desirable outcome. We call the task of learning the optimal personalized treatment "personalized treatment learning". From the statistical learning perspective, this problem imposes some challenges, primarily because the optimal treatment is unknown on a given training set. A number of statistical methods have been proposed recently to tackle this problem.
Document de treball
Anglès
Estadística econòmica; Assegurances; Inferència; Màrqueting; Economic statistics; Insurance; Inference; Marketing
Universitat de Barcelona. Riskcenter
Reproducció del document publicat a: http://www.ub.edu/riskcenter/research/WP/UBriskcenterWP201406.pdf
UB Riskcenter Working Paper Series, 2014/06
[WP E-RC14/06]
cc-by-nc-nd, (c) Guelman et al., 201x
http://creativecommons.org/licenses/by-nc-nd/3.0/es/