Effect of stationarity on traditional machine learning models: Time series analysis
Ankit Dixit, Shikha Jain
Abstract
Recently, researchers have started the analysis of time series data. In time series data, it is difficult to apply prediction and forecasting techniques effectively. This research work examines how the nature of stationarity of time series data affects the accuracy and forecasting errors. Here, we first categorize the datasets into their stationarity type. Then some state-of- art models are applied to these datasets. Results show that traditional model accuracy and error in the case of forecasting become extremely vulnerable when datasets belong to the non-stationary category. Stationarity tests and experiments are performed on different kinds of benchmark datasets and results are analyzed.
Topics & Concepts
Time seriesComputer scienceBenchmark (surveying)Series (stratigraphy)Machine learningCategorizationData miningArtificial intelligenceGeographyPaleontologyBiologyGeodesyTime Series Analysis and ForecastingData Stream Mining TechniquesStock Market Forecasting Methods