๐”– Scriptorium
โœฆ   LIBER   โœฆ

๐Ÿ“

Semi-Supervised and Unsupervised Machine Learning: Novel Strategies

โœ Scribed by Amparo Albalate, Wolfgang Minker(auth.)


Publisher
Wiley-ISTE
Year
2010
Tongue
English
Leaves
244
Category
Library

โฌ‡  Acquire This Volume

No coin nor oath required. For personal study only.

โœฆ Synopsis


This book provides a detailed and up-to-date overview on classification and data mining methods. The first part is focused on supervised classification algorithms and their applications, including recent research on the combination of classifiers. The second part deals with unsupervised data mining and knowledge discovery, with special attention to text mining. Discovering the underlying structure on a data set has been a key research topic associated to unsupervised techniques with multiple applications and challenges, from web-content mining to the inference of cancer subtypes in genomic microarray data. Among those, the book focuses on a new application for dialog systems which can be thereby made adaptable and portable to different domains. Clustering evaluation metrics and new approaches, such as the ensembles of clustering algorithms, are also described.Content:
Chapter 1 Introduction (pages 1โ€“14):
Chapter 2 State of the Art in Clustering and Semi?Supervised Techniques (pages 15โ€“89):
Chapter 3 Semi?Supervised Classification Using Prior Word Clustering (pages 91โ€“125):
Chapter 4 Semi?Supervised Classification Using Pattern Clustering (pages 127โ€“181):
Chapter 5 Detection of the Number of Clusters through Non?Parametric Clustering Algorithms (pages 183โ€“197):
Chapter 6 Detecting the Number of Clusters through Cluster Validation (pages 199โ€“225):


๐Ÿ“œ SIMILAR VOLUMES


Machine Learning Foundations: Supervised
โœ Taeho Jo ๐Ÿ“‚ Library ๐Ÿ“… 2021 ๐Ÿ› Springer ๐ŸŒ English

<p>This book provides conceptual understanding of machine learning algorithms though supervised, unsupervised, and advanced learning techniques. The book consists of four parts: foundation, supervised learning, unsupervised learning, and advanced learning. The first part provides the fundamental mat

Hidden Markov Models and Applications (U
โœ Nizar Bouguila (editor), Wentao Fan (editor), Manar Amayri (editor) ๐Ÿ“‚ Library ๐Ÿ“… 2022 ๐Ÿ› Springer ๐ŸŒ English

<span>This book focuses on recent advances, approaches, theories, and applications related Hidden Markov Models (HMMs). In particular, the book presents recent inference frameworks and applications that consider HMMs. The authors discuss challenging problems that exist when considering HMMs for a sp

Kernel Based Algorithms for Mining Huge
โœ Te-Ming Huang, Vojislav Kecman, Ivica Kopriva ๐Ÿ“‚ Library ๐Ÿ“… 2006 ๐Ÿ› Springer ๐ŸŒ English

<P>This is the first book treating the fields of supervised, semi-supervised and unsupervised machine learning collectively. The book presents both the theory and the algorithms for mining huge data sets using support vector machines (SVMs) in an iterative way. It demonstrates how kernel based SVMs

Kernel Based Algorithms for Mining Huge
โœ Te-Ming Huang, Vojislav Kecman, Ivica Kopriva (auth.) ๐Ÿ“‚ Library ๐Ÿ“… 2006 ๐Ÿ› Springer ๐ŸŒ English

<p><P>"Kernel Based Algorithms for Mining Huge Data Sets" is the first book treating the fields of supervised, semi-supervised and unsupervised machine learning collectively. The book presents both the theory and the algorithms for mining huge data sets by using support vector machines (SVMs) in an

Kernel Based Algorithms for Mining Huge
โœ Bozena Kostek ๐Ÿ“‚ Library ๐Ÿ“… 2005 ๐Ÿ› Springer ๐ŸŒ English

"Kernel Based Algorithms for Mining Huge Data Sets" is the first book treating the fields of supervised, semi-supervised and unsupervised machine learning collectively. The book presents both the theory and the algorithms for mining huge data sets by using support vector machines (SVMs) in an iterat

Supervised and Unsupervised Learning for
โœ Michael W. Berry, Azlinah Mohamed, Bee Wah Yap ๐Ÿ“‚ Library ๐Ÿ“… 2020 ๐Ÿ› Springer International Publishing ๐ŸŒ English

<p><p>This book covers the state of the art in learning algorithms with an inclusion of semi-supervised methods to provide a broad scope of clustering and classification solutions for big data applications. Case studies and best practices are included along with theoretical models of learning for a