
arXiv: 1502.07113
The continuous advances in data collection and storage techniques allow us to observe and record real-life processes in great detail. Examples include financial transaction data, fMRI images, satellite photos, earths pollution distribution in time etc. Due to the high dimensionality of such data, classical statistical tools become inadequate and inefficient. The need for new methods emerges and one of the most prominent techniques in this context is functional data analysis (FDA). The main objective of this article is to present techniques of the analysis of temporal dependence in FDA. Such dependence occurs, for example, if the data consist of a continuous time process which has been cut into segments, days for instance. We are then in the context of so-called functional time series.
Article presented in the Bruxelless Summer School of Mathematics 2014
Methodology (stat.ME), FOS: Computer and information sciences, 62M10, Statistics - Methodology
Methodology (stat.ME), FOS: Computer and information sciences, 62M10, Statistics - Methodology
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