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  "Title": "Improving Estimation Efficiency in CAR with Imperfect Compliance",
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  "Description": "We provide a list of functions for replicating the results\nof the Monte Carlo simulations and empirical application of\nJiang et al. (2022). In particular, we provide corresponding\nfunctions for generating the three types of random data\ndescribed in this paper, as well as all the estimation\nstrategies. Detailed information about the data generation\nprocess and estimation strategy can be found in Jiang et al.\n(2022) <doi:10.48550/arXiv.2201.13004>.",
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