Verwandte Artikel zu Modern Data Mining Algorithms in C++ and CUDA C: Recent...

Modern Data Mining Algorithms in C++ and CUDA C: Recent Developments in Feature Extraction and Selection Algorithms for Data Science - Softcover

 
9781484259870: Modern Data Mining Algorithms in C++ and CUDA C: Recent Developments in Feature Extraction and Selection Algorithms for Data Science

Inhaltsangabe

Discover a variety of data-mining algorithms that are useful for selecting small sets of important features from among unwieldy masses of candidates, or extracting useful features from measured variables.

As a serious data miner you will often be faced with thousands of candidate features for your prediction or classification application, with most of the features being of little or no value. You’ll know that many of these features may be useful only in combination with certain other features while being practically worthless alone or in combination with most others. Some features may have enormous predictive power, but only within a small, specialized area of the feature space. The problems that plague modern data miners are endless. This book helps you solve this problem by presenting modern feature selection techniques and the code to implement them. Some of these techniques are:

  • Forward selection component analysis
  • Local feature selection
  • Linking features and a target with a hidden Markov model
  • Improvements on traditional stepwise selection
  • Nominal-to-ordinal conversion

All algorithms are intuitively justified and supported by the relevant equations and explanatory material. The author also presents and explains complete, highly commented source code. 

The example code is in C++ and CUDA C but Python or other code can be substituted; the algorithm is important, not the code that's used to write it.  

What You Will Learn

  • Combine principal component analysis with forward and backward stepwise selection to identify a compact subset of a large collection of variables that captures the maximum possible variation within the entire set.
  • Identify features that may have predictive power over only a small subset of the feature domain. Such features can be profitably used by modern predictive models but may be missed by other feature selection methods.
  • Find an underlying hidden Markov model that controls the distributions of feature variables and the target simultaneously. The memory inherent in this method is especially valuable in high-noise applications such as prediction of financial markets.
  • Improve traditional stepwise selection in three ways: examine a collection of 'best-so-far' feature sets; test candidate features for inclusion with cross validation to automatically and effectively limit model complexity; and at each step estimate the probability that our results so far could be just the product of random good luck. We also estimate the probability that the improvement obtained by adding a new variable could have been just good luck. Take a potentially valuable nominal variable (a category or class membership) that is unsuitable for input to a prediction model, and assign to each category a sensible numeric value that can be used as a model input.

 

Who This Book Is For 

Intermediate to advanced data science programmers and analysts.

Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.

Über die Autorin bzw. den Autor

Timothy Masters has a PhD in statistics and is an experienced programmer. His dissertation was in image analysis. His career moved in the direction of signal processing, and for the last 25 years he's been involved in the development of automated trading systems in various financial markets.  

Von der hinteren Coverseite

As a serious data miner you will often be faced with thousands of candidate features for your prediction or classification application, with most of the features being of little or no value. You’ll know that many of these features may be useful only in combination with certain other features while being practically worthless alone or in combination with most others. Some features may have enormous predictive power, but only within a small, specialized area of the feature space. The problems that plague modern data miners are endless. This book helps you solve this problem by presenting modern feature selection techniques and the code to implement them. Some of these techniques are:

    Forward selection component analysis
  • Local feature selection
  • Linking features and a target with a hidden Markov model
  • Improvements on traditional stepwise selection
  • Nominal-to-ordinal conversion
All algorithms are intuitively justified and supported by the relevant equations and explanatory material. The author also presents and explains complete, highly commented source code. 

The example code is in C++ and CUDA C but Python or other code can be substituted; the algorithm is important, not the code that's used to write it.  

You will:

  • Combine principal component analysis with forward and backward stepwise selection to identify a compact subset of a large collection of variables that captures the maximum possible variation within the entire set.
  • Identify features that may have predictive power over only a small subset of the feature domain. Such features can be profitably used by modern predictive models but may be missed by other feature selection methods.
  • Find an underlying hidden Markov model that controls the distributions of feature variables and the target simultaneously. The memory inherent in this method is especially valuable in high-noise applications such as predictionof financial markets.
  • Improve traditional stepwise selection in three ways: examine a collection of 'best-so-far' feature sets; test candidate features for inclusion with cross validation to automatically and effectively limit model complexity; and at each step estimate the probability that our results so far could be just the product of random good luck. We also estimate the probability that the improvement obtained by adding a new variable could have been just good luck.
  • Take a potentially valuable nominal variable (a category or class membership) that is unsuitable for input to a prediction model, and assign to each category a sensible numeric value that can be used as a model input.
  • „Über diesen Titel“ kann sich auf eine andere Ausgabe dieses Titels beziehen.

    Gebraucht kaufen

    Zustand: Gut
    The book has been read, but is...
    Diesen Artikel anzeigen

    EUR 4,06 für den Versand von Vereinigtes Königreich nach Deutschland

    Versandziele, Kosten & Dauer

    Gratis für den Versand innerhalb von/der Deutschland

    Versandziele, Kosten & Dauer

    Weitere beliebte Ausgaben desselben Titels

    9781484259894: Modern Data Mining Algorithms in C++ and CUDA C: Recent Developments in Feature Extraction and Selection Algorithms for Data Science

    Vorgestellte Ausgabe

    ISBN 10:  1484259890 ISBN 13:  9781484259894
    Verlag: Apress, 2020
    Softcover

    Suchergebnisse für Modern Data Mining Algorithms in C++ and CUDA C: Recent...

    Beispielbild für diese ISBN

    Masters, Timothy
    Verlag: Apress, 2020
    ISBN 10: 1484259874 ISBN 13: 9781484259870
    Gebraucht Paperback

    Anbieter: WorldofBooks, Goring-By-Sea, WS, Vereinigtes Königreich

    Verkäuferbewertung 5 von 5 Sternen 5 Sterne, Erfahren Sie mehr über Verkäufer-Bewertungen

    Paperback. Zustand: Very Good. The book has been read, but is in excellent condition. Pages are intact and not marred by notes or highlighting. The spine remains undamaged. Artikel-Nr. GOR014205611

    Verkäufer kontaktieren

    Gebraucht kaufen

    EUR 40,72
    Währung umrechnen
    Versand: EUR 4,06
    Von Vereinigtes Königreich nach Deutschland
    Versandziele, Kosten & Dauer

    Anzahl: 1 verfügbar

    In den Warenkorb

    Foto des Verkäufers

    Timothy Masters
    Verlag: Apress, Apress Jun 2020, 2020
    ISBN 10: 1484259874 ISBN 13: 9781484259870
    Neu Taschenbuch

    Anbieter: buchversandmimpf2000, Emtmannsberg, BAYE, Deutschland

    Verkäuferbewertung 5 von 5 Sternen 5 Sterne, Erfahren Sie mehr über Verkäufer-Bewertungen

    Taschenbuch. Zustand: Neu. Neuware -Discover a variety of data-mining algorithms that are useful for selecting small sets of important features from among unwieldy masses of candidates, or extracting useful features from measured variables.As a serious data miner you will often be faced with thousands of candidate features for your prediction or classification application, with most of the features being of little or no value. Yoüll know that many of these features may be useful only in combination with certain other features while being practically worthless alone or in combination with most others. Some features may have enormous predictive power, but only within a small, specialized area of the feature space. The problems that plague modern data miners are endless. This book helps you solve this problem by presenting modern feature selection techniques and the code to implement them. Some of these techniques are:Forward selection component analysisLocal feature selectionLinking features and a target with a hidden Markov modelImprovements on traditional stepwise selectionNominal-to-ordinal conversionAll algorithms are intuitively justified and supported by the relevant equations and explanatory material. The author also presents and explains complete, highly commented source code.The example code is in C++ and CUDA C but Python or other code can be substituted; the algorithm is important, not the code that's used to write it.What You Will LearnCombine principal component analysis with forward and backward stepwise selection to identify a compact subset of a large collection of variables that captures the maximum possible variation within the entire set.Identify features that may have predictive power over only a small subset of the feature domain. Such features can be profitably used by modern predictive models but may be missed by other feature selection methods.Find an underlying hidden Markov model that controls the distributions of feature variables and the target simultaneously. The memory inherent in this method is especially valuable in high-noise applications such as prediction of financial markets.Improve traditional stepwise selection in three ways: examine a collection of 'best-so-far' feature sets; test candidate features for inclusion with cross validation to automatically and effectively limit model complexity; and at each step estimate the probability that our results so far could be just the product of random good luck. We also estimate the probability that the improvement obtained by adding a new variable could have been just good luck. Take a potentially valuable nominal variable (a category or class membership) that is unsuitable for input to a prediction model, and assign to each category a sensible numeric value that can be used as a model input.Who This Book Is ForIntermediate to advanced data science programmers and analysts.APress in Springer Science + Business Media, Heidelberger Platz 3, 14197 Berlin 240 pp. Englisch. Artikel-Nr. 9781484259870

    Verkäufer kontaktieren

    Neu kaufen

    EUR 69,54
    Währung umrechnen
    Versand: Gratis
    Innerhalb Deutschlands
    Versandziele, Kosten & Dauer

    Anzahl: 2 verfügbar

    In den Warenkorb

    Beispielbild für diese ISBN

    Masters, Timothy
    Verlag: Apress, 2020
    ISBN 10: 1484259874 ISBN 13: 9781484259870
    Neu Softcover

    Anbieter: Ria Christie Collections, Uxbridge, Vereinigtes Königreich

    Verkäuferbewertung 5 von 5 Sternen 5 Sterne, Erfahren Sie mehr über Verkäufer-Bewertungen

    Zustand: New. In English. Artikel-Nr. ria9781484259870_new

    Verkäufer kontaktieren

    Neu kaufen

    EUR 64,53
    Währung umrechnen
    Versand: EUR 5,77
    Von Vereinigtes Königreich nach Deutschland
    Versandziele, Kosten & Dauer

    Anzahl: Mehr als 20 verfügbar

    In den Warenkorb

    Beispielbild für diese ISBN

    Masters, Timothy
    Verlag: Apress, 2020
    ISBN 10: 1484259874 ISBN 13: 9781484259870
    Neu Paperback

    Anbieter: Revaluation Books, Exeter, Vereinigtes Königreich

    Verkäuferbewertung 5 von 5 Sternen 5 Sterne, Erfahren Sie mehr über Verkäufer-Bewertungen

    Paperback. Zustand: Brand New. 237 pages. 10.00x7.00x0.50 inches. In Stock. Artikel-Nr. x-1484259874

    Verkäufer kontaktieren

    Neu kaufen

    EUR 66,51
    Währung umrechnen
    Versand: EUR 11,59
    Von Vereinigtes Königreich nach Deutschland
    Versandziele, Kosten & Dauer

    Anzahl: 2 verfügbar

    In den Warenkorb