Learning summary features of time series for likelihood free inference
Rodrigues, Pedro L. C., Gramfort, Alexandre
There has been an increasing interest from the scientific community in using likelihood-free inference (LFI) to determine which parameters of a given simulator model could best describe a set of experimental data. Despite exciting recent results and a wide range of possible applications, an important bottleneck of LFI when applied to time series data is the necessity of defining a set of summary features, often hand-tailored based on domain knowledge. In this work, we present a data-driven strategy for automatically learning summary features from univariate time series and apply it to signals generated from autoregressive-moving-average (ARMA) models and the Van der Pol Oscillator. Our results indicate that learning summary features from data can compete and even outperform LFI methods based on hand-crafted values such as autocorrelation coefficients even in the linear case.
Dec-4-2020
- Country:
- North America
- Europe > France
- Hauts-de-France > Nord > Lille (0.04)
- Genre:
- Research Report > New Finding (0.34)
- Technology: