Section: New Results
Axis 2: Sequential Learning of Principal Curves: Summarizing Data Streams on the Fly
Participant: Benjamin Guedj
When confronted with massive data streams, summarizing data with dimension reduction methods such as PCA raises theoretical and algorithmic pitfalls. Principal curves act as a nonlinear generalization of PCA and the present paper proposes a novel algorithm to automatically and sequentially learn principal curves from data streams. We show that our procedure is supported by regret bounds with optimal sublinear remainder terms. A greedy local search implementation (called slpc , for Sequential Learning Principal Curves) that incorporates both sleeping experts and multi-armed bandit ingredients is presented, along with its regret computation and performance on synthetic and real-life data.
Joint work with Le Li (Université d'Angers & iAdvize). Available as a preprint: [67]