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Entering the Era of Data Science: Targeted Learning and the Integration of Statistics and Computational Data Analysis

机译:进入数据科学时代:目标学习和统计与计算数据分析的集成

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This outlook paper reviews the research of van der Laan’s group on Targeted Learning, a subfield of statistics that is concerned with the construction of data adaptive estimators of user-supplied target parameters of the probability distribution of the data and corresponding confidence intervals, aiming at only relying on realistic statistical assumptions. Targeted Learning fully utilizes the state of the art in machine learning tools, while still preserving the important identity of statistics as a field that is concerned with both accurate estimation of the true target parameter value and assessment of uncertainty in order to make sound statistical conclusions. We also provide a philosophical historical perspective on Targeted Learning, also relating it to the new developments in Big Data. We conclude with some remarks explaining the immediate relevance of Targeted Learning to the current Big Data movement.
机译:这篇前瞻性论文回顾了范德兰(van der Laan)的“目标学习”小组的研究,该小组是统计的子领域,该领域关注的是用户提供的数据概率分布和相应置信区间目标参数的数据自适应估计器的构建。依靠现实的统计假设。定向学习充分利用了机器学习工具中的最新技术,同时仍保留统计学的重要身份,因为它既涉及准确估计真实目标参数值又涉及不确定性评估,以便做出合理的统计结论。我们还提供了针对性学习的哲学历史观点,还将其与大数据的新发展相关。最后,我们用一些言论来说明定向学习与当前大数据运动的直接相关性。

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