Wiley StatsRef: Statistics Reference Online 2017
DOI: 10.1002/9781118445112.stat07935
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Phylogenetic Tools in Astrophysics

Abstract: Multivariate clustering in astrophysics is a recent development justified by the bigger and bigger surveys of the sky. The phylogenetic approach is probably the most unexpected technique that has appeared for the unsupervised classification of galaxies, stellar populations or globular clusters. On one side, this is a somewhat natural way of classifying astrophysical entities which are all evolving objects. On the other side, several conceptual and practical difficulties arize, such as the hierarchical represen… Show more

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Cited by 5 publications
(3 citation statements)
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“…Interestingly, even though "FeIIness" and radio-loudness are at opposite ends of Eigenvector space (e.g., [129], [130], [18], [48]) 3 , most radio-loud NLS1 galaxies are strong FeII emitters, with FeII/Hβ ratios even larger than a significant fraction of the radio-quiet NLS1 population ([74], [150]; Fig. 7).…”
Section: Emission-line Spectroscopy: Feiimentioning
confidence: 99%
“…Interestingly, even though "FeIIness" and radio-loudness are at opposite ends of Eigenvector space (e.g., [129], [130], [18], [48]) 3 , most radio-loud NLS1 galaxies are strong FeII emitters, with FeII/Hβ ratios even larger than a significant fraction of the radio-quiet NLS1 population ([74], [150]; Fig. 7).…”
Section: Emission-line Spectroscopy: Feiimentioning
confidence: 99%
“…O'Brien and Lyman, ) and even astrophysics (e.g. Fraix‐Burnet, ; Fraix‐Burnet et al., ). However, particular attention should be paid to its general usage due to the heterogeneity of real data.…”
Section: Introductionmentioning
confidence: 99%
“…Problems of this kind appear in many areas of application such as astronomy (blurred images), econometrics (instrumental variables), medical imaging (tomography, dynamic contrast enhanced Computerized Tomography and Magnetic Resonance Imaging), finance (model calibration of volatility) and many others where similar curves are measured and can be recovered together. Indeed, clustering has been applied to solution of ill-posed inverse problems for decades in pattern recognition [4], astronomy [21], astrophysics [12], pattern-based time series segmentation [8], medical imaging [7], elastography for computation of the unknown stiffness distribution [3] and for detecting early warning signs on stock market bubbles [17], to name a few. While in some of other settings the main objective is finding group assignments, we are considering only applications where clustering is used merely as a denoising technique.…”
Section: Introductionmentioning
confidence: 99%