Feb. 6, 2024, 5:49 a.m. | Yi Zhang Kosuke Imai

cs.LG updates on arXiv.org arxiv.org

While there now exists a large literature on policy evaluation and learning, much of prior work assumes that the treatment assignment of one unit does not affect the outcome of another unit. Unfortunately, ignoring interference may lead to biased policy evaluation and ineffective learned policies. For example, treating influential individuals who have many friends can generate positive spillover effects, thereby improving the overall performance of an individualized treatment rule (ITR). We consider the problem of evaluating and learning an optimal …

cs.lg econ.em evaluation example interference literature network policy prior stat.me treatment work

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