Replies: 6 comments
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StrategiesBased on strategies in Rohban et al. 2017 Figure 4 (pasted below).
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I will present model coefficients for every model in some sort of automatically generated figure layout |
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In #123 @gwaygenomics showed an example of how the model can be visualized via cell images. This comment is a bookmark so I remember to add feedback here vs the PR. What is different between this use case and work by @mrohban in Rohban et al 2017 (shown in #97 (comment))?
Some notes
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I believe I’ve made other comments about this cell view... possibly in a slide deck somewhere? |
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It's all in slack 😹 - I will copy here Conversation
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FWIW, our strategy was used in Schiff et al. 2020 and was the paper's first citation:
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There are a couple different ways to visualize model coefficients that are output from the cell health machine learning models. Currently, I visualize model coefficients based on model coefficients (per cell painting feature importance score) in aggregate across models (see #64).
This visualization scheme is not very informative. Instead, Rohban et al. 2017 describe several alternative methods. I will use this issue to document various methods and determine which one would work best for this project.
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