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Handling Missing Data Applications to Environmental Analysis

by

Latini, G., Passerini, G.

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Handling Missing Data Applications to Environmental Analysis, ISBN 9781853129926 Own This Book? Sell It
ISBN-13:

9781853129926

ISBN:

1853129925

Publisher: WIT Press Summary: Designed for use as a practical guide, this volume features a wide range of techniques for analyzing and filling gaps in time series data. It starts with a description of the methods that can be used to replace absent data based on the distribution of the gaps and then classifies the latter according to their length. Various specialized algorithms and techniques are also detailed.Particular attention is paid to "near [read more]
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Product Details
ISBN-13:

9781853129926


ISBN:

1853129925


Publisher: WIT Press

Designed for use as a practical guide, this volume features a wide range of techniques for analyzing and filling gaps in time series data. It starts with a description of the methods that can be used to replace absent data based on the distribution of the gaps and then classifies the latter according to their length. Various specialized algorithms and techniques are also detailed.Particular attention is paid to "nearest neighbour" techniques that are able to fill gaps of up to eight hours, while Auto Regressive Models and Artificial Neural Networks (ANN) with the ability to fill longer gaps are also explored. ANN's various architectures, features and their application to air quality time series remediation are highlighted.The text also contains an extensive literature review.

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