Timothy Masters

Modern Data Mining Algorithms in C++ and CUDA C  eBooks & eLearning

Posted by Free butterfly at April 11, 2023
Modern Data Mining Algorithms in C++ and CUDA C

Modern Data Mining Algorithms in C++ and CUDA C: Recent Developments in Feature Extraction and Selection Algorithms for Data Science by Timothy Masters
English | June 6, 2020 | ISBN: 1484259874 | 237 pages | MOBI | 1.71 Mb
Assessing and Improving Prediction and Classification: Theory and Algorithms in C++

Assessing and Improving Prediction and Classification: Theory and Algorithms in C++ by Timothy Masters
English | 28 Jan. 2018 | ISBN: 1484233352 | 513 Pages | PDF (True) | 5.36 MB

Assess the quality of your prediction and classification models in ways that accurately reflect their real-world performance, and then improve this performance using state-of-the-art algorithms such as committee-based decision making, resampling the dataset,
Data Mining Algorithms in C++: Data Patterns and Algorithms for Modern Applications

Data Mining Algorithms in C++: Data Patterns and Algorithms for Modern Applications by Timothy Masters
English | 18 Feb. 2018 | ISBN: 148423314X | 228 Pages | PDF (True) | 4.56 MB

Discover hidden relationships among the variables in your data, and learn how to exploit these relationships. This book presents a collection of data-mining algorithms that are effective in a wide variety of prediction and classification applications.

Data Mining Algorithms in C++: Data Patterns and Algorithms for Modern Applications  eBooks & eLearning

Posted by AvaxGenius at Dec. 26, 2017
Data Mining Algorithms in C++: Data Patterns and Algorithms for Modern Applications

Data Mining Algorithms in C++: Data Patterns and Algorithms for Modern Applications By Timothy Masters
English | EPUB | 2017 (2018 Edition) | 286 Pages | ISBN : 148423314X | 1.43 MB

Discover hidden relationships among the variables in your data, and learn how to exploit these relationships. This book presents a collection of data-mining algorithms that are effective in a wide variety of prediction and classification applications. All algorithms include an intuitive explanation of operation, essential equations, references to more rigorous theory, and commented C++ source code.

Assessing and Improving Prediction and Classification: Theory and Algorithms in C++  eBooks & eLearning

Posted by AvaxGenius at Dec. 26, 2017
Assessing and Improving Prediction and Classification: Theory and Algorithms in C++

Assessing and Improving Prediction and Classification: Theory and Algorithms in C++ By Timothy Masters
English | EPUB | 2017 (2018 Edition) | 517 Pages | ISBN : 1484233352 | 2.06 MB

Assess the quality of your prediction and classification models in ways that accurately reflect their real-world performance, and then improve this performance using state-of-the-art algorithms such as committee-based decision making, resampling the dataset, and boosting. This book presents many important techniques for building powerful, robust models and quantifying their expected behavior when put to work in your application.

Assessing and Improving Prediction and Classification: Theory and Algorithms in C++  eBooks & eLearning

Posted by Free butterfly at June 7, 2023
Assessing and Improving Prediction and Classification: Theory and Algorithms in C++

Assessing and Improving Prediction and Classification: Theory and Algorithms in C++ by Timothy Masters
English | December 20, 2018 | ISBN: 1484233352 | 537 pages | MOBI | 3.20 Mb

Deep Belief Nets in C++ and CUDA C: Volume 2: Autoencoding in the Complex Domain  eBooks & eLearning

Posted by AvaxGenius at May 29, 2018
Deep Belief Nets in C++ and CUDA C: Volume 2: Autoencoding in the Complex Domain

Deep Belief Nets in C++ and CUDA C: Volume 2: Autoencoding in the Complex Domain by Timothy Masters
English | PDF,EPUB | 2018 | 265 Pages | ISBN : 1484236459 | 10.97 MB

Discover the essential building blocks of a common and powerful form of deep belief net: the autoencoder. You’ll take this topic beyond current usage by extending it to the complex domain for signal and image processing applications. Deep Belief Nets in C++ and CUDA C: Volume 2 also covers several algorithms for preprocessing time series and image data. These algorithms focus on the creation of complex-domain predictors that are suitable for input to a complex-domain autoencoder. Finally, you’ll learn a method for embedding class information in the input layer of a restricted Boltzmann machine. This facilitates generative display of samples from individual classes rather than the entire data distribution. The ability to see the features that the model has learned for each class separately can be invaluable.

Deep Belief Nets in C++ and CUDA C: Volume 3: Convolutional Nets (Repost)  eBooks & eLearning

Posted by AvaxGenius at Oct. 5, 2018
Deep Belief Nets in C++ and CUDA C: Volume 3: Convolutional Nets (Repost)

Deep Belief Nets in C++ and CUDA C: Volume 3: Convolutional Nets by Timothy Masters
English | PDF,EPUB | 2018 | 184 Pages | ISBN : 148423720X | 2.76 MB

Discover the essential building blocks of a common and powerful form of deep belief network: convolutional nets. This book shows you how the structure of these elegant models is much closer to that of human brains than traditional neural networks; they have a ‘thought process’ that is capable of learning abstract concepts built from simpler primitives. These models are especially useful for image processing applications.
Deep Belief Nets in C++ and CUDA C: Volume 2: Autoencoding in the Complex Domain (Repost)

Deep Belief Nets in C++ and CUDA C: Volume 2: Autoencoding in the Complex Domain by Timothy Masters
English | PDF,EPUB | 2018 | 265 Pages | ISBN : 1484236459 | 10.97 MB

Discover the essential building blocks of a common and powerful form of deep belief net: the autoencoder. You’ll take this topic beyond current usage by extending it to the complex domain for signal and image processing applications. Deep Belief Nets in C++ and CUDA C: Volume 2 also covers several algorithms for preprocessing time series and image data. These algorithms focus on the creation of complex-domain predictors that are suitable for input to a complex-domain autoencoder. Finally, you’ll learn a method for embedding class information in the input layer of a restricted Boltzmann machine. This facilitates generative display of samples from individual classes rather than the entire data distribution. The ability to see the features that the model has learned for each class separately can be invaluable.

Statistically Sound Machine Learning for Algorithmic Trading of Financial Instruments  eBooks & eLearning

Posted by AlenMiler at Aug. 21, 2018
Statistically Sound Machine Learning for Algorithmic Trading of Financial Instruments

Statistically Sound Machine Learning for Algorithmic Trading of Financial Instruments: Developing Predictive-Model-Based Trading Systems Using TSSB by Timothy Masters
English | June 1, 2013 | ISBN: 148950771X | 520 pages | PDF | 5.58 MB