Advances in Machine Learning and Data Mining for Astronomy

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advanced statistical techniques in astronomy
Anti Clockwise
Astronomical Applications
astronomical signal processing
astrophysics case studies
Astrostatistics
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Citizen Science Projects
Classifications in High-Energy Astrophysics Experiments
cluster analysis
computational astrophysics
Data Mining
data mining algorithms
Data Set
DDM
digital
Disk Galaxies
Early Type Galaxies
Elliptical Galaxies
Ensemble Methods
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Flux Time Series
galaxy redshifts
gravitational lensing
GZ2
Importance Sampling Distribution
large
Low Rank Matrix Approximation
LSST
machine learning and data mining in astronomy
machine learning methods
Morphological Classification
organic molecules in space
pattern recognition
photometric
probabilistic modelling
QR Algorithm
QR Decomposition
Random Projection
Random Sampling Algorithm
relationship between statistics and astronomy
Representer Theorem
sky
sloan
sources of astronomical surveys
Spectral Clustering
supervised classification
support
survey
synoptic
telescope5
Time Frequency Representations
time series analysis
unsupervised learning
vector
Vo
Von Mises Fisher Distribution
Voronoi Volume
Wigner Distribution

Product details

  • ISBN 9781439841730
  • Weight: 1564g
  • Dimensions: 178 x 254mm
  • Publication Date: 29 Mar 2012
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Advances in Machine Learning and Data Mining for Astronomy documents numerous successful collaborations among computer scientists, statisticians, and astronomers who illustrate the application of state-of-the-art machine learning and data mining techniques in astronomy. Due to the massive amount and complexity of data in most scientific disciplines, the material discussed in this text transcends traditional boundaries between various areas in the sciences and computer science.

The book’s introductory part provides context to issues in the astronomical sciences that are also important to health, social, and physical sciences, particularly probabilistic and statistical aspects of classification and cluster analysis. The next part describes a number of astrophysics case studies that leverage a range of machine learning and data mining technologies. In the last part, developers of algorithms and practitioners of machine learning and data mining show how these tools and techniques are used in astronomical applications.

With contributions from leading astronomers and computer scientists, this book is a practical guide to many of the most important developments in machine learning, data mining, and statistics. It explores how these advances can solve current and future problems in astronomy and looks at how they could lead to the creation of entirely new algorithms within the data mining community.

Michael J. Way, PhD, is a research scientist at the NASA Goddard Institute for Space Studies in New York and the NASA Ames Research Center in California. He is also an adjunct professor in the Department of Physics and Astronomy at Hunter College. His research focuses on understanding the multiscale structure of our universe, modeling the atmospheres of exoplanets, and applying kernel methods to new areas in astronomy.

Jeffrey D. Scargle, PhD, is an astrophysicist in the Space Science and Astrobiology Division of the NASA Ames Research Center. His main interests encompass the variability of astronomical objects, including the Sun, sources in the Galaxy, and active galactic nuclei; cosmology; plasma astrophysics; planetary detection; and data analysis and statistical methods.

Kamal M. Ali, PhD, is a research scientist in machine learning and data mining. He has a consulting practice and is cofounder of the start-up Metric Avenue. He has carried out research at IBM Almaden, Stanford University, Vividence, Yahoo, and TiVo, where he worked on the Tivo Collaborative Filtering Engine. His current research focuses on combining machine learning in conditional random fields with linguistically rich features to make machines better at reading web pages.

Ashok N. Srivastava, PhD, is the principal scientist for Data Mining and Systems Health Management and leader of the Intelligent Data Understanding group at NASA Ames Research Center. His research includes the development of data mining algorithms for anomaly detection in massive data streams, kernel methods in machine learning, and text mining algorithms.