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Unlocking the Power of Streaming Data
Paperback

Unlocking the Power of Streaming Data

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Data streams are de?ned as large sequences of data, gathered from sources such as sensor networks and customer click streams, that are possibly in?nite and temporarily ordered [7, 22]. Instances in data streams arrive fast, either in batches of data, or instance-by-instance; each instance needs to be processed in a timely manner. Due to these characteristics, such as large amount of data and time constraints, tra-ditional static machine learning algorithms are unsuitable for direct use [7]. That is, techniques learning from data streams need to maintain their performance throughout the stream while limiting memory and processing time. Moreover, evolving or non-stationary data streams are susceptible to changes in the distribution of data, also known as concept drifts.

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MORE INFO
Format
Paperback
Publisher
Tredition Gmbh
Date
10 June 2024
Pages
92
ISBN
9783384255945

Data streams are de?ned as large sequences of data, gathered from sources such as sensor networks and customer click streams, that are possibly in?nite and temporarily ordered [7, 22]. Instances in data streams arrive fast, either in batches of data, or instance-by-instance; each instance needs to be processed in a timely manner. Due to these characteristics, such as large amount of data and time constraints, tra-ditional static machine learning algorithms are unsuitable for direct use [7]. That is, techniques learning from data streams need to maintain their performance throughout the stream while limiting memory and processing time. Moreover, evolving or non-stationary data streams are susceptible to changes in the distribution of data, also known as concept drifts.

Read More
Format
Paperback
Publisher
Tredition Gmbh
Date
10 June 2024
Pages
92
ISBN
9783384255945