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Statistical Approaches for Hidden Variables in Ecology. Nathalie Peyrard
Читать онлайн.Название Statistical Approaches for Hidden Variables in Ecology
Год выпуска 0
isbn 9781119902782
Автор произведения Nathalie Peyrard
Жанр Социология
Издательство John Wiley & Sons Limited
1.3.5.4. Choosing a number of states
The calculation of model selection criteria is valuable in helping to chose the number of states to use, as is the AIC. Table 1.1 shows AIC and ICL scores for different numbers of activities across our three trajectories.
Table 1.1. Evolution of model selection criteria (AIC and ICL) as a function of the number of hidden states J. In both cases, the best scores are attained for a model with six hidden states
J | 2 | 3 | 4 | 5 | 6 | 7 |
AIC | 29,044 | 24,213 | 18,773 | 16,624 | 14,220 | 19,480 |
ICL | 29,195 | 24,210 | 18,887 | 16,720 | 14,821 | 21,003 |
From a purely statistical perspective, a 6-state model appears preferable here.
Figure 1.13 shows states along a trajectory (using the bivariate velocity model) alongside the speed characteristics of these states. We see that a classification into six activities broadly corresponds to the creation of subdivisions in the intermediate state. States previously characterized as belonging to activity 2 or 3 (Figure 1.9, top left) are divided into four different groups in the new model. In our view, the choice of an optimum number of states in this case should be guided by our capacity to interpret the model, rather than by purely statistical considerations.
Figure 1.13. Study zone (red dot on the map) and three trajectories of three different red-footed boobies. Measured over a time step of 10 s. For a color version of this figure, see www.iste.co.uk/peyrard/ecology.zip
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