We present a scalable, high-performance solution to multidimensional recurrences that arise in adaptive statistical designs. Adaptive designs are an important class of learning algorithms for a stochastic environment, and we focus on the problem of optimally assigning patients to treatments in clinical trials. While adaptive designs have significant ethical and cost advantages, they are rarely utilized because of the complexity of optimizing and analyzing them. Computational challenges include massive memory requirements, few calculations per memory access, and multiply-nested loops with dynamic indices. We analyze the effects of various parallelization options, and while standard approaches do not work well, with effort an efficient, highl...
This book addresses the issue of designing experiments for comparing two or more treatments, when th...
Clinical trials have traditionally followed a fixed design, in which randomization probabilities of ...
We introduce a new class of adaptive Metropolis algorithms called adaptive sticky algorithms for eff...
We present a scalable, high-performance solution to multidimensional recurrences that arise in adapt...
We discuss the role of parallel computing in the design and analysis of adaptive sampling procedures...
With a focus on designing flexible, tractable, and adaptive methodology for some canonical machine l...
Adaptive Designs for Sequential Treatment Allocation presents a rigorous theoretical treatment of th...
We show how to compute optimal designs and exact analyses of allocation rules for various sequential...
Abstract We show how to compute optimal designs and exact analyses of allocation rules for various s...
We propose a novel response-adaptive randomization procedure for multi-armed trials with continuous ...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
An adaptive enrichment design is a randomized trial that allows enrollment criteria to be modified a...
This article proposes a novel adaptive design algorithm that can be used to find optimal treatment a...
We propose a novel response-adaptive randomisation procedure for multi-armed trials with normally di...
A sorting algorithm is adaptive if its run time, for inputs of the same size n, varies smoothly from...
This book addresses the issue of designing experiments for comparing two or more treatments, when th...
Clinical trials have traditionally followed a fixed design, in which randomization probabilities of ...
We introduce a new class of adaptive Metropolis algorithms called adaptive sticky algorithms for eff...
We present a scalable, high-performance solution to multidimensional recurrences that arise in adapt...
We discuss the role of parallel computing in the design and analysis of adaptive sampling procedures...
With a focus on designing flexible, tractable, and adaptive methodology for some canonical machine l...
Adaptive Designs for Sequential Treatment Allocation presents a rigorous theoretical treatment of th...
We show how to compute optimal designs and exact analyses of allocation rules for various sequential...
Abstract We show how to compute optimal designs and exact analyses of allocation rules for various s...
We propose a novel response-adaptive randomization procedure for multi-armed trials with continuous ...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
An adaptive enrichment design is a randomized trial that allows enrollment criteria to be modified a...
This article proposes a novel adaptive design algorithm that can be used to find optimal treatment a...
We propose a novel response-adaptive randomisation procedure for multi-armed trials with normally di...
A sorting algorithm is adaptive if its run time, for inputs of the same size n, varies smoothly from...
This book addresses the issue of designing experiments for comparing two or more treatments, when th...
Clinical trials have traditionally followed a fixed design, in which randomization probabilities of ...
We introduce a new class of adaptive Metropolis algorithms called adaptive sticky algorithms for eff...