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Learning Optimal Interventions

机译:学习最佳干预

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Our goal is to identify beneficial interventions from observational data. We consider interventions that are narrowly focused (impacting few covariates) and may be tailored to each individual or globally enacted over a population. For applications where harmful intervention is drastically worse than proposing no change, we propose a conservative definition of the optimal intervention. Assuming the underlying relationship remains invariant under intervention, we develop efficient algorithms to identify the optimal intervention policy from limited data and provide theoretical guarantees for our approach in a Gaussian Process setting. Although our methods assume covariates can be precisely adjusted, they remain capable of improving outcomes in misspecified settings with unintentional downstream effects. Empirically, our approach identifies good interventions in two practical applications: gene perturbation and writing improvement.
机译:我们的目标是从观测数据中找出有益的干预措施。我们考虑的干预措施集中在狭窄的范围内(影响很少的协变量),并且可能针对每个个体或针对人群的全球性措施而量身定制。对于有害干预比不提出任何更改要严重得多的应用,我们建议最佳干预的保守定义。假设在干预下基本关系保持不变,我们将开发有效的算法以从有限的数据中确定最佳干预策略,并为我们在高斯过程设置中的方法提供理论上的保证。尽管我们的方法假设协变量可以精确调整,但它们仍然能够在错误指定的环境中改善结果,而不会产生意外的下游影响。根据经验,我们的方法在两个实际应用中确定了良好的干预措施:基因扰动和写作改进。

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