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Title Long-Memory Time Series Ensembles for Concept Shift Detection
Authors Marcelo Mendoza, Bárbara Poblete, Felipe Bravo-Marquez, Daniel Gayo-Avelloo
Publication date 2013
Abstract Usually time series are controlled by generative processes
which
display changes over time. On many occasions, two or more generative
processes may switch forcing the abrupt replacement of a fitted time series
model by another one. We claim that the incorporation of past data can be
useful in the presence of concept shift. We believe that history tends to
repeat itself and from time to time, it is desirable to discard recent data
reusing old past data to perform model fitting and forecasting. We address
this challenge by introducing an ensemble method that deals with long-memory
time series. Our method starts by segmenting historical time series data to
identify data segments which present model consistency. Then, we project the
time series by using data segments which are close to current data. By using
a dynamic time warping alignment function, we try to anticipate concept
shifts, looking for similarities between current data and the prequel of a
past shift. We evaluate our proposal on non-stationary and non-linear time
series. To achieve this we perform forecasting accuracy testing against well
known state-of-the-art methods such as neural networks and threshold auto
regressive models. Our results show that the proposed method anticipates
many concept shifts.
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Pages 23-30
Conference name International Workshop on Big Data, Streams and Heterogeneous Source Mining: Algorithms, Systems, Programming Models and Applications
Publisher ACM Press (New York, NY, USA)
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