Online Detection of Changes in Moment-Based Projections: When to Retrain Deep Learners or Update Portfolios?

02/14/2023
by   Ansgar Steland, et al.
0

Sequential monitoring of high-dimensional nonlinear time series is studied for a projection of the second-moment matrix, a problem interesting in its own right and specifically arising in finance and deep learning. Open-end as well as closed-end monitoring is studied under mild assumptions on the training sample and the observations of the monitoring period. Asymptotics is based on Gaussian approximations of projected partial sums allowing for an estimated projection vector. Estimation is studied both for classical non-ℓ_0-sparsity as well as under sparsity. For the case that the optimal projection depends on the unknown covariance matrix, hard- and soft-thresholded estimators are studied. Applications in finance and training of deep neural networks are discussed. The proposed detectors typically allow to reduce dramatically the required computational costs as illustrated by monitoring synthetic data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/15/2020

Detecting Changes in the Second Moment Structure of High-Dimensional Sensor-Type Data in a K-Sample Setting

The K sample problem for high-dimensional vector time series is studied,...
research
10/30/2017

Sparse covariance matrix estimation in high-dimensional deconvolution

We study the estimation of the covariance matrix Σ of a p-dimensional no...
research
12/13/2018

Higher Moment Estimation for Elliptically-distributed Data: Is it Necessary to Use a Sledgehammer to Crack an Egg?

Multivariate elliptically-contoured distributions are widely used for mo...
research
06/20/2018

Sequential change-point detection in high-dimensional Gaussian graphical models

High dimensional piecewise stationary graphical models represent a versa...
research
06/03/2019

A new approach for open-end sequential change point monitoring

We propose a new sequential monitoring scheme for changes in the paramet...
research
07/19/2023

Near-Linear Time Projection onto the ℓ_1,∞ Ball; Application to Sparse Autoencoders

Looking for sparsity is nowadays crucial to speed up the training of lar...

Please sign up or login with your details

Forgot password? Click here to reset