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Some examples of, and some problems with, the use of nonlinear logistic regression in predictive food microbiology

journal contribution
posted on 2023-05-16, 13:22 authored by David RatkowskyDavid Ratkowsky
A new technique, nonlinear logistic regression, is described for modelling binomially distributed data, i.e., presence/absence data where growth is either observed or not observed, for applications in predictive food microbiology. Some examples of the successful use of this technique are presented, where the controlling factors are temperature, water activity, pH and the concentration of lactic acid, a weakly dissociating organic acid. Generally speaking, good-fitting models were obtained, as evidenced using various performance measures and goodness-of-fit statistics. As may be expected with a new statistical technique, some problems were encountered with the implementation of the modelling approach and these are discussed. © 2002 Elsevier Science B.V. All rights reserved.

History

Publication title

International Journal of Food Microbiology

Volume

73

Issue

2-3

Pagination

119-125

ISSN

0168-1605

Department/School

Tasmanian Institute of Agriculture (TIA)

Publisher

Elsevier Science BV

Place of publication

The Netherlands

Repository Status

  • Restricted

Socio-economic Objectives

Food safety

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