DeepAI AI Chat
Log In Sign Up

Financial Time Series Data Processing for Machine Learning

07/03/2019
by   Fabrice Daniel, et al.
Lusis
0

This article studies the financial time series data processing for machine learning. It introduces the most frequent scaling methods, then compares the resulting stationarity and preservation of useful information for trend forecasting. It proposes an empirical test based on the capability to learn simple data relationship with simple models. It also speaks about the data split method specific to time series, avoiding unwanted overfitting and proposes various labelling for classification and regression.

READ FULL TEXT
07/25/2022

Generic Approach to Visualization of Time Series Data

Time series is a collection of data instances that are ordered according...
11/08/2018

TimeCrypt: A Scalable Private Time Series Data Store

We present TimeCrypt, an efficient and scalable system that augments tim...
01/02/2021

Optimal Segmented Linear Regression for Financial Time Series Segmentation

Given a financial time series data, one of the most fundamental and inte...
09/20/2022

The boosted HP filter is more general than you might think

The global financial crisis and Covid recession have renewed discussion ...
04/29/2023

Industry Classification Using a Novel Financial Time-Series Case Representation

The financial domain has proven to be a fertile source of challenging ma...
08/27/2019

Fourier-type monitoring procedures for strict stationarity

We consider model-free monitoring procedures for strict stationarity of ...
05/27/2022

Group GAN

Generating multivariate time series is a promising approach for sharing ...