Obtaining delta B estimates #141
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Hi again, I don't know if this is the correct place to drop this question, but just in case ;) Thanks in advance for your answer! Best, |
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Replies: 2 comments
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That's right. (I assume you mean window where it says locus). |
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Hi both! Thank you so much for opening this thread & I am really interested in this topic (how to obtain ΔB) too! Based on two previous posts, it seems that ΔB (at window_i) = lnCL (the log composite likelihood of window_i, obtained from ‘gimble makegrid’ > ‘gimble gridsearch’ > ‘gimble query’ under the best global model) - lnCL (the log composite likelihood of the best global model, a single defined value). Please correct me if my understanding of your discussion is wrong. However, my understanding of the Equation (1) in Laetsch, Bisschop, et al. (2023) is: If IM model is the best global model, then at ‘gimble makegrid’ step, fix T and allow Ne (C, A, B) and M (me) to be re-estimated per window, based on the empirical data. To obtain the ΔB, apart from running ‘makegrid’ & ‘gridsearch’ with fixed T under the best fitting model (described above), we do an independent run - still under the best fitting model, but fixed both T and M (me) to be the same as the global best estimates. Let Ne (C, A, B) be re-estimated per window. Then, ΔB (at window_i) = lnCL (the log composite likelihood of window_i, the best IM model, fixed T) - lnCL (the log composite likelihood of window_i, the best IM model, fixed T and M). Hope I explained my understanding clearly and please let me know if my understanding is correct or not. Gratefully, |
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That's right. (I assume you mean window where it says locus).