Finite-Sample Equivalence in Statistical Models for Presence-Only Data.

William Fithian, Trevor Hastie
Author Information
  1. William Fithian: Department of Statistics, Stanford University, 390 Serra Mall, Stanford, California 94305-4065, USA.
  2. Trevor Hastie: Department of Statistics, Stanford University, 390 Serra Mall, Stanford, California 94305-4065, USA.

Abstract

Statistical modeling of presence-only data has attracted much recent attention in the ecological literature, leading to a proliferation of methods, including the inhomogeneous Poisson process (IPP) model, maximum entropy (Maxent) modeling of species distributions and logistic regression models. Several recent articles have shown the close relationships between these methods. We explain why the IPP intensity function is a more natural object of inference in presence-only studies than occurrence probability (which is only defined with reference to quadrat size), and why presence-only data only allows estimation of relative, and not absolute intensity of species occurrence. All three of the above techniques amount to parametric density estimation under the same exponential family model (in the case of the IPP, the fitted density is multiplied by the number of presence records to obtain a fitted intensity). We show that IPP and Maxent give the exact same estimate for this density, but logistic regression in general yields a different estimate in finite samples. When the model is misspecified-as it practically always is-logistic regression and the IPP may have substantially different asymptotic limits with large data sets. We propose "infinitely weighted logistic regression," which is exactly equivalent to the IPP in finite samples. Consequently, many already-implemented methods extending logistic regression can also extend the Maxent and IPP models in directly analogous ways using this technique.

Keywords

References

  1. Biometrics. 2009 Jun;65(2):554-63 [PMID: 18759851]
  2. Ecology. 2013 Jun;94(6):1409-19 [PMID: 23923504]
  3. Biometrics. 2012 Dec;68(4):1303-12 [PMID: 22937805]
  4. Biometrics. 2013 Mar;69(1):274-81 [PMID: 23379623]
  5. Ecology. 2006 Dec;87(12):3021-8 [PMID: 17249227]

Grants

  1. R01 EB001988/NIBIB NIH HHS

Word Cloud

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