A Stability Principle for Learning under Non-Stationarity

Kaizheng Wang Speaker
Columbia University
 
Thursday, Aug 7: 10:35 AM - 11:00 AM
Invited Paper Session 
Music City Center 
We develop a versatile framework for statistical learning in non-stationary environments. In each time period, our approach applies a stability principle to select a look-back window that maximizes the utilization of historical data while keeping the cumulative bias within an acceptable range relative to the stochastic error. Our theory and numerical experiments showcase the adaptivity of this approach to unknown non-stationarity. We prove regret bounds that are minimax optimal up to logarithmic factors when the population losses are strongly convex, or Lipschitz only. At the heart of our analysis lie two novel components: a measure of similarity between functions and a segmentation technique for dividing the non-stationary data sequence into quasi-stationary pieces.

Keywords

Non-stationarity

online learning

distribution shift

adaptivity

look-back window