Functional Linear Regression of Cumulative Distribution Functions
Qian Zhang, Anuran Makur, and Kamyar Azizzadenesheli

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Abstract
The estimation of cumulative distribution functions (CDF) is an important learning task with a great variety of downstream applications, such as risk assessments in predictions and decision making. In this paper, we study functional regression of contextual CDFs where each data point is sampled from a linear combination of context dependent CDF basis functions. We propose functional ridge-regression-based estimation methods that estimate CDFs accurately everywhere. In particular, given samples with basis functions, we show estimation error upper bounds of for fixed design, random design, and adversarial context cases. We also derive matching information theoretic lower bounds, establishing minimax optimality for CDF functional regression. Furthermore, we remove the burn-in time in the random design setting using an alternative penalized estimator.…
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Taxonomy
TopicsStatistical Methods and Inference · Machine Learning and Algorithms · Advanced Statistical Process Monitoring
