Feature Selection Strategies for Classifying High Dimensional Astronomical Data Sets

10/08/2013
by   Ciro Donalek, et al.
0

The amount of collected data in many scientific fields is increasing, all of them requiring a common task: extract knowledge from massive, multi parametric data sets, as rapidly and efficiently possible. This is especially true in astronomy where synoptic sky surveys are enabling new research frontiers in the time domain astronomy and posing several new object classification challenges in multi dimensional spaces; given the high number of parameters available for each object, feature selection is quickly becoming a crucial task in analyzing astronomical data sets. Using data sets extracted from the ongoing Catalina Real-Time Transient Surveys (CRTS) and the Kepler Mission we illustrate a variety of feature selection strategies used to identify the subsets that give the most information and the results achieved applying these techniques to three major astronomical problems.

READ FULL TEXT
research
01/13/2019

Gradient Boosted Feature Selection

A feature selection algorithm should ideally satisfy four conditions: re...
research
03/26/2023

FAStEN: an efficient adaptive method for feature selection and estimation in high-dimensional functional regressions

Functional regression analysis is an established tool for many contempor...
research
07/18/2019

Comparing Multi-class, Binary and Hierarchical Machine Learning Classification schemes for variable stars

Upcoming synoptic surveys are set to generate an unprecedented amount of...
research
09/23/2016

Efficient Feature Selection With Large and High-dimensional Data

Driven by the advances in technology, large and high-dimensional data ha...
research
01/30/2022

Sparse Centroid-Encoder: A Nonlinear Model for Feature Selection

We develop a sparse optimization problem for the determination of the to...
research
02/09/2022

Explainable Predictive Modeling for Limited Spectral Data

Feature selection of high-dimensional labeled data with limited observat...
research
10/26/2020

BEAR: Sketching BFGS Algorithm for Ultra-High Dimensional Feature Selection in Sublinear Memory

We consider feature selection for applications in machine learning where...

Please sign up or login with your details

Forgot password? Click here to reset