background

Non-ignorable missingness

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statistics, ignorability, missing data

Statistics is basically a missing data problem! – Little 2013 Nearly all samples – whether by design or by accident – are incomplete. We very rarely make a complete census of all individuals in a population or all sites on a landscape. Sometimes we don’t collect, or can’t collect, complete information for individual samples or measures. For instance, we might know an animal was alive when it was last seen, so we know it survived at least that long, but know nothing about its current status. ...

Disentangling concepts of status, trend, and trajectory

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status, trends, trajectory

The terms status and trend are ubiquitous in resource monitoring and management settings. To be useful and robust, however, they require precise (mathematical) definitions. It has been my experience that misunderstanding these terms can lead to misapplication of model predictions and to researchers and managers drawing the wrong conclusions from the data. In this post we show how relatively simple, even intuitive, definitions for each of these terms clarifies their intent, and improves the insights provided by models of monitoring data. ...

Sampling and populations

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statistics, sample, population

We sample for a very practical reason. It’s usually impossible to get information on the whole population, so we use a sample to make inferences about the population. In our case, the population is typically all sites in a stratum or all sites – in all strata – at the scale of an entire park. Typically, the inference we seek entails three questions. What’s the best estimate of the population mean? ...

Stratum-varying fixed effects

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statistics, parameterizations

Assume we have three strata, \(s_0\) , \(s_1\) , and \(s_2\) , where \(s_0\) is the “reference” stratum – in other words, \(s_0\) is the stratum for which the 0/1 indicator is 0 across the board in the indicator matrix below (the first row): \[\begin{bmatrix} 1 & 0 & 0 \\ 1 & 1 & 0 \\ 1 & 0 & 1 \end{bmatrix}\] B_0 + (B_1 + B_1_s1_offset * s1 + B_1_s2_offset * s2) * x_1 # in stratum s0 B_0 + (B_1) * x_1 # in stratum s1 B_0 + (B_1 + B_1_s1_offset * s1) * x_1 # in stratum s2 B_0 + (B_1 + B_1_s2_offset * s2) * x_1 # lm(y~x1*x2) model. ...

The offset term

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statistics

Counts of things naturally scale with the length or duration of observation, the area sampled, and sampling intensity ( Citation: McElreath, 2018 McElreath, R. (2018). Statistical rethinking: A bayesian course with examples in r and stan. Chapman; Hall/CRC. ) . For instance, the longer the river stretch we survey, the more fish we’ll tend to find. Offset terms are used to model rates – e.g., counts per unit area or time. ...