Greedy Approximation Algorithms for Active Sequential Hypothesis Testing

Published on ● Video Link: https://www.youtube.com/watch?v=caQscOg9YkY



Duration: 43:06
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Kyra Gan (Harvard University)
https://simons.berkeley.edu/talks/tbd-467
Quantifying Uncertainty: Stochastic, Adversarial, and Beyond

In the problem of active sequential hypothesis testing (ASHT), a learner seeks to identify the true hypothesis from among a known set of hypotheses. The learner is given a set of actions and knows the random distribution of the outcome of any action under any true hypothesis. Given a target error δ greater than 0, the goal is to sequentially select the fewest number of actions so as to identify the true hypothesis with probability at least 1 - δ. Motivated by applications in which the number of hypotheses or actions is massive (e.g., genomics-based cancer detection), we propose efficient (greedy, in fact) algorithms and provide the first approximation guarantees for ASHT, under two types of adaptivity. Both of our guarantees are independent of the number of actions and logarithmic in the number of hypotheses. We numerically evaluate the performance of our algorithms using both synthetic and real-world DNA mutation data, demonstrating that our algorithms outperform previously proposed heuristic policies by large margins.







Tags:
Simons Institute
theoretical computer science
UC Berkeley
Computer Science
Theory of Computation
Theory of Computing
Quantifying Uncertainty: Stochastic Adversarial and Beyond
Kyra Gan