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% Generated by roxygen2: do not edit by hand
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% Please edit documentation in R/method_neural.R
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\name{neural}
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\alias{neural}
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\title{Find genes by training and applying a neural network.}
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\usage{
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neural(seed = 180199, n_models = 5, control_ratio = 0.5)
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}
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\arguments{
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\item{seed}{The seed will be used to make the results reproducible.}
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\item{n_models}{This number specifies how many sets of training data should
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be created. For each set, there will be a model trained on the remaining
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training data and validated using this set. For non-training genes, the
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final score will be the mean of the result of applying the different
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models. There should be at least two training sets. The analysis will only
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work, if there is at least one reference gene per training set.}
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\item{control_ratio}{The proportion of random control genes that is included
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in the training data sets in addition to the reference genes. This should
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be a numeric value between 0.0 and 1.0.}
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}
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\value{
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An object of class \code{geposan_method}.
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}
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\description{
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Find genes by training and applying a neural network.
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}
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