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explanation for the algorithm #184

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BenxiaHu opened this issue Mar 16, 2024 · 0 comments
Open

explanation for the algorithm #184

BenxiaHu opened this issue Mar 16, 2024 · 0 comments

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@BenxiaHu
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Hello,
the SCTransform looks very good. I just check the method section of your GB paper. I am a little confused about the step 2. Would you like to explain a bit about it?

In the second step, we exploit the relationship of model parameter values and gene mean to learn global trends in the data. We capture these trends using a kernel regression estimate (ksmooth function in R). We use a normal kernel and first select a kernel bandwidth using the R function bw.SJ. We multiply this by a bandwidth adjustment factor (BAF, default value of 3, sensitivity analysis shown in Additional file 2: Fig. S4). We perform independent regularizations for all parameters (Fig. 2).

Best,

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