Sacrificing information for the greater good: how to select photometric bands for optimal accuracy

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Standard

Sacrificing information for the greater good : how to select photometric bands for optimal accuracy. / Stensbo-Smidt, Kristoffer; Gieseke, Fabian Cristian; Igel, Christian; Zirm, Andrew Wasmuth; Pedersen, Kim Steenstrup.

I: Monthly Notices of the Royal Astronomical Society, Bind 464, Nr. 3, 2017, s. 2577-2596.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Stensbo-Smidt, K, Gieseke, FC, Igel, C, Zirm, AW & Pedersen, KS 2017, 'Sacrificing information for the greater good: how to select photometric bands for optimal accuracy', Monthly Notices of the Royal Astronomical Society, bind 464, nr. 3, s. 2577-2596. https://doi.org/10.1093/mnras/stw2476

APA

Stensbo-Smidt, K., Gieseke, F. C., Igel, C., Zirm, A. W., & Pedersen, K. S. (2017). Sacrificing information for the greater good: how to select photometric bands for optimal accuracy. Monthly Notices of the Royal Astronomical Society, 464(3), 2577-2596. https://doi.org/10.1093/mnras/stw2476

Vancouver

Stensbo-Smidt K, Gieseke FC, Igel C, Zirm AW, Pedersen KS. Sacrificing information for the greater good: how to select photometric bands for optimal accuracy. Monthly Notices of the Royal Astronomical Society. 2017;464(3):2577-2596. https://doi.org/10.1093/mnras/stw2476

Author

Stensbo-Smidt, Kristoffer ; Gieseke, Fabian Cristian ; Igel, Christian ; Zirm, Andrew Wasmuth ; Pedersen, Kim Steenstrup. / Sacrificing information for the greater good : how to select photometric bands for optimal accuracy. I: Monthly Notices of the Royal Astronomical Society. 2017 ; Bind 464, Nr. 3. s. 2577-2596.

Bibtex

@article{a10e71dc4c9146a784a5bfb628b3acf2,
title = "Sacrificing information for the greater good: how to select photometric bands for optimal accuracy",
abstract = "Large-scale surveys make huge amounts of photometric data available. Because of the sheer amount of objects, spectral data cannot be obtained for all of them. Therefore it is important to devise techniques for reliably estimating physical properties of objects from photometric information alone. These estimates are needed to automatically identify interesting objects worth a follow-up investigation as well as to produce the required data for a statistical analysis of the space covered by a survey. We argue that machine learning techniques are suitable to compute these estimates accurately and efficiently. This study promotes a feature selection algorithm, which selects the most informative magnitudes and colours for a given task of estimating physical quantities from photometric data alone. Using k nearest neighbours regression, a well-known non-parametric machine learning method, we show that using the found features significantly increases the accuracy of the estimations compared to using standard features and standard methods. We illustrate the usefulness of the approach by estimating specific star formation rates (sSFRs) and redshifts (photo-z's) using only the broad-band photometry from the Sloan Digital Sky Survey (SDSS). For estimating sSFRs, we demonstrate that our method produces better estimates than traditional spectral energy distribution (SED) fitting. For estimating photo-z's, we show that our method produces more accurate photo-z's than the method employed by SDSS. The study highlights the general importance of performing proper model selection to improve the results of machine learning systems and how feature selection can provide insights into the predictive relevance of particular input features.",
author = "Kristoffer Stensbo-Smidt and Gieseke, {Fabian Cristian} and Christian Igel and Zirm, {Andrew Wasmuth} and Pedersen, {Kim Steenstrup}",
year = "2017",
doi = "10.1093/mnras/stw2476",
language = "English",
volume = "464",
pages = "2577--2596",
journal = "Royal Astronomical Society. Monthly Notices",
issn = "0035-8711",
publisher = "Oxford University Press",
number = "3",

}

RIS

TY - JOUR

T1 - Sacrificing information for the greater good

T2 - how to select photometric bands for optimal accuracy

AU - Stensbo-Smidt, Kristoffer

AU - Gieseke, Fabian Cristian

AU - Igel, Christian

AU - Zirm, Andrew Wasmuth

AU - Pedersen, Kim Steenstrup

PY - 2017

Y1 - 2017

N2 - Large-scale surveys make huge amounts of photometric data available. Because of the sheer amount of objects, spectral data cannot be obtained for all of them. Therefore it is important to devise techniques for reliably estimating physical properties of objects from photometric information alone. These estimates are needed to automatically identify interesting objects worth a follow-up investigation as well as to produce the required data for a statistical analysis of the space covered by a survey. We argue that machine learning techniques are suitable to compute these estimates accurately and efficiently. This study promotes a feature selection algorithm, which selects the most informative magnitudes and colours for a given task of estimating physical quantities from photometric data alone. Using k nearest neighbours regression, a well-known non-parametric machine learning method, we show that using the found features significantly increases the accuracy of the estimations compared to using standard features and standard methods. We illustrate the usefulness of the approach by estimating specific star formation rates (sSFRs) and redshifts (photo-z's) using only the broad-band photometry from the Sloan Digital Sky Survey (SDSS). For estimating sSFRs, we demonstrate that our method produces better estimates than traditional spectral energy distribution (SED) fitting. For estimating photo-z's, we show that our method produces more accurate photo-z's than the method employed by SDSS. The study highlights the general importance of performing proper model selection to improve the results of machine learning systems and how feature selection can provide insights into the predictive relevance of particular input features.

AB - Large-scale surveys make huge amounts of photometric data available. Because of the sheer amount of objects, spectral data cannot be obtained for all of them. Therefore it is important to devise techniques for reliably estimating physical properties of objects from photometric information alone. These estimates are needed to automatically identify interesting objects worth a follow-up investigation as well as to produce the required data for a statistical analysis of the space covered by a survey. We argue that machine learning techniques are suitable to compute these estimates accurately and efficiently. This study promotes a feature selection algorithm, which selects the most informative magnitudes and colours for a given task of estimating physical quantities from photometric data alone. Using k nearest neighbours regression, a well-known non-parametric machine learning method, we show that using the found features significantly increases the accuracy of the estimations compared to using standard features and standard methods. We illustrate the usefulness of the approach by estimating specific star formation rates (sSFRs) and redshifts (photo-z's) using only the broad-band photometry from the Sloan Digital Sky Survey (SDSS). For estimating sSFRs, we demonstrate that our method produces better estimates than traditional spectral energy distribution (SED) fitting. For estimating photo-z's, we show that our method produces more accurate photo-z's than the method employed by SDSS. The study highlights the general importance of performing proper model selection to improve the results of machine learning systems and how feature selection can provide insights into the predictive relevance of particular input features.

U2 - 10.1093/mnras/stw2476

DO - 10.1093/mnras/stw2476

M3 - Journal article

VL - 464

SP - 2577

EP - 2596

JO - Royal Astronomical Society. Monthly Notices

JF - Royal Astronomical Society. Monthly Notices

SN - 0035-8711

IS - 3

ER -

ID: 167193838