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The TFBS new scores are informative of enhancer identify, therefore, including them should increase the accuracy of the model. Alternative results could be the accuracy does not change, in that case it could mean two things these new scores are not informative.
This experiment will be informative along with another experiment in which we add "random" PWM scores. Further, we can start asking which TFBS are the most informative by isolating and "scrambling" only certain score columns.
The text was updated successfully, but these errors were encountered:
Experiment
Try training network with 4 new TFBS (hb, kni, kr, twi) scores. The news scores are located here: https://drive.google.com/open?id=1PTmQwwgBzEDFNDVRdGMS8bn5gZgk8jJt
Hypothesis
The TFBS new scores are informative of enhancer identify, therefore, including them should increase the accuracy of the model. Alternative results could be the accuracy does not change, in that case it could mean two things these new scores are not informative.
This experiment will be informative along with another experiment in which we add "random" PWM scores. Further, we can start asking which TFBS are the most informative by isolating and "scrambling" only certain score columns.
The text was updated successfully, but these errors were encountered: