Anthony Schrapffer

1paper

1 Paper

LGOct 18, 2022
Universal hidden monotonic trend estimation with contrastive learning

Edouard Pineau, Sébastien Razakarivony, Mauricio Gonzalez et al.

In this paper, we describe a universal method for extracting the underlying monotonic trend factor from time series data. We propose an approach related to the Mann-Kendall test, a standard monotonic trend detection method and call it contrastive trend estimation (CTE). We show that the CTE method identifies any hidden trend underlying temporal data while avoiding the standard assumptions used for monotonic trend identification. In particular, CTE can take any type of temporal data (vector, images, graphs, time series, etc.) as input. We finally illustrate the interest of our CTE method through several experiments on different types of data and problems.