Statistical Approaches for Hidden Variables in Ecology. Nathalie Peyrard
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Название: Statistical Approaches for Hidden Variables in Ecology

Автор: Nathalie Peyrard

Издательство: John Wiley & Sons Limited

Жанр: Социология

Серия:

isbn: 9781119902782

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СКАЧАТЬ model is shown in the graphical form in Figure 1.3.

      1.2.2.2. Choice of observation metric

      This general framework offers many possibilities in terms of modeling. The subjacent activity may influence different aspects of the trajectory. For example, the trajectory of an individual looking for food will include multiple changes in direction. On the other hand, when an individual is traveling, in the context of migration, for example, its trajectory tends to be relatively straight with only minor changes in direction. In this example, changes in direction are strong activity markers.

      Most of the metrics encountered in existing literature are based on the speed and direction of the animal in question.

      Starting from the positions {Pt}t≥0 (with values in ℝ2 obtained at times 0, Δ,, . . . ), the process of speeds {Vt}t≥1 is defined by

image

      From these speeds, we can define the direction {ψt}t≥0 (with values in [−π, π[) as the angle between Vt and a reference vector (typically the vector (1, 0) pointing east). From these metrics, we deduce step length (or scalar speed) processes, denoted as {Lt}t≥1, and turning angles, denoted as{φt}t≥1 (with values in ] − π, π] using the convention φ1 = 0) as follows:

      The step length and turning angle metrics were the first to be used in behavior, or activity, analysis based on HMMs (Morales et al. 2004) and have been widely used (Patterson et al. 2008). In this way, we obtain the model illustrated in Figure 1.3, where Yt is a bivariate vector of coordinates (Lt, φt) (often considered to be independent). One drawback to this method is the need to define an emission distribution, which is compatible with angles in order to model (φt). In practice, Von Mises (Jammalamadaka and Sengupta 2001) or Wrapped Cauchy distributions are the most widely used.

      An observation Yt is thus a vector made up of these two components. As these components are signed, it is logical to model Yt using a bivariate normal distributions. Where relevant, this model allows the introduction of a dependency relationship between the two movement components, something which is difficult to achieve when selecting a couple (Lt, φt).

      Ecological expertise concerning the effects of different activities on movement can also contribute to the choice of an appropriate metric. In the case study presented at the end of this chapter, the two classic metrics were used to illustrate the difference between the two approaches, in terms of both results and practical implementation.

Schematic illustration of the quantities present in equations.

      1.2.2.3. Covariates inclusion

      For example, in the model presented here, ℙ (Zt = j|Zt−1 = i) is independent of t and takes a value of Π (i, j). Let us suppose that at each moment t, p covariates are measured and stored in a line vector xt. Transition probability can be linked to these variables according to a multiclass logistic regression approach:

      The first equation indicates that the probability of switching to a different activity j from a current activity i is connected to external conditions via a linear combination of covariates at time t. β(i, j) is the column vector (of dimension p) of the coefficients corresponding to the influence of each covariate on this probability. The second equation is a constraint equation that ensures that the vector (ℙ (Zt = 1|Zt−1 = i)), . . . , ℙ (Zt = J|Zt−1 = i)) is a probability vector.

      It is thus possible to take account of notions such as the fact that an individual will spend a longer period of time actively foraging in a location that is rich in food sources, while in a less favorable environment, it will rapidly switch to a traveling state in order to move to a better location. The inclusion of covariates in this model makes it possible to identify environmental variables, which favor particular states.

      1.2.2.4. Example: a three-state HMM with Gaussian emission