Open AccessBook
Kernel Based Algorithms for Mining Huge Data Sets: Supervised, Semi-supervised, and Unsupervised Learning
Te-Ming Huang
- 25 Nov 2010
190
TL;DR: This first book treating the fields of supervised, semi-supervised and unsupervised machine learning collectively presents both the theory and the algorithms for mining huge data sets by using support vector machines (SVMs) in an iterative way.
read more
Abstract: "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 iterative way. It demonstrates how kernel based SVMs can be used for dimensionality reduction (feature elimination) and shows the similarities and differences between the two most popular unsupervised techniques, the principal component analysis (PCA) and the independent component analysis (ICA). The book presents various examples, software, algorithmic solutions enabling the reader to develop their own codes for solving the problems. The book is accompanied by a website for downloading both data and software for huge data sets modeling in a supervised and semisupervised manner, as well as MATLAB based PCA and ICA routines for unsupervised learning. The book focuses on a broad range of machine learning algorithms and it is particularly aimed at students, scientists, and practicing researchers in bioinformatics (gene microarrays), text-categorization, numerals recognition, as well as in the images and audio signals de-mixing (blind source separation) areas.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
•Book
Advanced Data Mining Techniques
David L. Olson,Dursun Delen +1 more
- 01 Jan 2008
TL;DR: This book covers the fundamental concepts of data mining, to demonstrate the potential of gathering large sets of data, and analyzing these data sets to gain useful business understanding.
1.3K
Document-level sentiment classification: An empirical comparison between SVM and ANN
TL;DR: An empirical comparison between SVM and ANN regarding document-level sentiment analysis is presented and it is indicated that ANN produce superior or at least comparable results to SVM's, even on the context of unbalanced data.
793
Handbook of mathematical methods in imaging
Otmar Scherzer
- 01 Jan 2011
TL;DR: In this article, the Mumford and Shah Model and its applications in total variation image restoration are discussed. But the authors focus on the reconstruction of 3D information, rather than the analysis of the image.
Potential of quantum computing for drug discovery
TL;DR: This work highlights how hybrid quantum-classical approaches to quantum simulation and quantum machine learning could yield substantial progress using noisy-intermediate scale quantum devices, whereas fault-tolerant, error-corrected quantum computers are still in their development phase.
296
Chemometrics and Intelligent Laboratory Systems
Michel José Anzanello,Susan L. Albin,Wanpracha Art Chaovalitwongse +2 more
- 01 Jan 2009
TL;DR: The objective is to reduce the number of process variables needed for classi cation by eliminating noisy and irrelevant ones by comparing several approaches that combine data mining classiCation techniques with Partial Least Squares (PLS) regression.
236
Related Papers (5)
Corinna Cortes,Vladimir Vapnik +1 more
Vladimir Vapnik
- 01 Jan 1995
Bernhard E. Boser,Isabelle Guyon,Vladimir Vapnik +2 more
- 01 Jul 1992
Ian H. Witten,Eibe Frank,Mark Hall +2 more
- 25 Oct 1999