Statistical Learning and Data Science

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advanced risk assessment frameworks
analysis
ANR
brier
Brier Score
Category=UNC
Category=UY
cluster analysis techniques
Complex Data
Conditional Expectation
conformal prediction models
correspondence
Correspondence Analysis
Data Science
descent
Dw
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eq_computing
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eq_isMigrated=2
eq_nobargain
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factor analysis applications
FD
FDA
FDA Method
Foundations and Applications
FPCA
functional
Functional Datasets
gradient
Initial Grain
loss
Measuring Classifier Performance
mining
Mining on Social Networks
NCM
Roc Curve
score
Sgd
Slice Inverse Regression
SMO Algorithm
Smooth
Soft Node
Statistical and Machine Learning
stochastic
Stochastic Gradient
Stochastic Gradient Algorithms
Support Vector Machines
Symbolic Data Analysis
symbolic data processing
Synthesis Objects
time series analytics
unsupervised learning methods
Vice Versa
Violate

Product details

  • ISBN 9781439867631
  • Weight: 589g
  • Dimensions: 178 x 254mm
  • Publication Date: 19 Dec 2011
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Data analysis is changing fast. Driven by a vast range of application domains and affordable tools, machine learning has become mainstream. Unsupervised data analysis, including cluster analysis, factor analysis, and low dimensionality mapping methods continually being updated, have reached new heights of achievement in the incredibly rich data world that we inhabit.

Statistical Learning and Data Science is a work of reference in the rapidly evolving context of converging methodologies. It gathers contributions from some of the foundational thinkers in the different fields of data analysis to the major theoretical results in the domain. On the methodological front, the volume includes conformal prediction and frameworks for assessing confidence in outputs, together with attendant risk. It illustrates a wide range of applications, including semantics, credit risk, energy production, genomics, and ecology. The book also addresses issues of origin and evolutions in the unsupervised data analysis arena, and presents some approaches for time series, symbolic data, and functional data.

Over the history of multidimensional data analysis, more and more complex data have become available for processing. Supervised machine learning, semi-supervised analysis approaches, and unsupervised data analysis, provide great capability for addressing the digital data deluge. Exploring the foundations and recent breakthroughs in the field, Statistical Learning and Data Science demonstrates how data analysis can improve personal and collective health and the well-being of our social, business, and physical environments.

Mireille Gettler Summa, Léon Bottou, Bernard Goldfarb, Fionn Murtagh, Catherine Pardoux, Myriam Touati