FFT 5/3/21: Exploring the Computational Challenges in Hypothesis Testing & Quiet Plantings 🚀
Dive into Alfonson Bandeira's insights on the computational hardness of hypothesis testing and quiet plantings, highlighting the limits and possibilities in data analysis and statistical inference.

Norbert Wiener Center
30 views • Aug 25, 2021

About this video
When faced with a data analysis, learning, or statistical inference problem, the amount and quality of data available fundamentally determines whether such tasks can be performed with certain levels of accuracy. With the growing size of datasets however, it is crucial not only that the underlying statistical task is possible, but also that it is doable by means of efficient algorithms. In this talk we will discuss methods aiming to establish limits of when statistical tasks are possible with computationally efficient methods or when there is a fundamental «Statistical-to-Computational gap›› in which an inference task is statistically possible but inherently computationally hard. We will focus on Hypothesis Testing and the ``Low Degree Method'' and also address hardness of certification via ``quiet plantings''. Guiding examples will include Sparse PCA, bounds on the Sherrington-Kirkpatrick Hamiltonian, and lower bounds on Chromatic Numbers of random graphs.
Video Information
Views
30
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1
Duration
01:03:26
Published
Aug 25, 2021