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module OpenTox
module Validation
# Statistical evaluation of classification validations
module ClassificationStatistics
# Get statistics
# @return [Hash]
def statistics
self.accept_values = model.prediction_feature.accept_values
self.confusion_matrix = {:all => Array.new(accept_values.size){Array.new(accept_values.size,0)}, :without_warnings => Array.new(accept_values.size){Array.new(accept_values.size,0)}}
self.weighted_confusion_matrix = {:all => Array.new(accept_values.size){Array.new(accept_values.size,0)}, :without_warnings => Array.new(accept_values.size){Array.new(accept_values.size,0)}}
self.nr_predictions = {:all => 0,:without_warnings => 0}
predictions.each do |cid,pred|
# TODO
# use predictions without probabilities (single neighbor)??
# use measured majority class??
if pred[:measurements].uniq.size == 1 and pred[:probabilities]
m = pred[:measurements].first
if pred[:value] == m
if pred[:value] == accept_values[0]
confusion_matrix[:all][0][0] += 1
weighted_confusion_matrix[:all][0][0] += pred[:probabilities][pred[:value]]
self.nr_predictions[:all] += 1
if pred[:warnings].empty?
confusion_matrix[:without_warnings][0][0] += 1
weighted_confusion_matrix[:without_warnings][0][0] += pred[:probabilities][pred[:value]]
self.nr_predictions[:without_warnings] += 1
end
elsif pred[:value] == accept_values[1]
confusion_matrix[:all][1][1] += 1
weighted_confusion_matrix[:all][1][1] += pred[:probabilities][pred[:value]]
self.nr_predictions[:all] += 1
if pred[:warnings].empty?
confusion_matrix[:without_warnings][1][1] += 1
weighted_confusion_matrix[:without_warnings][1][1] += pred[:probabilities][pred[:value]]
self.nr_predictions[:without_warnings] += 1
end
end
elsif pred[:value] != m
if pred[:value] == accept_values[0]
confusion_matrix[:all][0][1] += 1
weighted_confusion_matrix[:all][0][1] += pred[:probabilities][pred[:value]]
self.nr_predictions[:all] += 1
if pred[:warnings].empty?
confusion_matrix[:without_warnings][0][1] += 1
weighted_confusion_matrix[:without_warnings][0][1] += pred[:probabilities][pred[:value]]
self.nr_predictions[:without_warnings] += 1
end
elsif pred[:value] == accept_values[1]
confusion_matrix[:all][1][0] += 1
weighted_confusion_matrix[:all][1][0] += pred[:probabilities][pred[:value]]
self.nr_predictions[:all] += 1
if pred[:warnings].empty?
confusion_matrix[:without_warnings][1][0] += 1
weighted_confusion_matrix[:without_warnings][1][0] += pred[:probabilities][pred[:value]]
self.nr_predictions[:without_warnings] += 1
end
end
end
end
end
self.true_rate = {:all => {}, :without_warnings => {}}
self.predictivity = {:all => {}, :without_warnings => {}}
accept_values.each_with_index do |v,i|
[:all,:without_warnings].each do |a|
self.true_rate[a][v] = confusion_matrix[a][i][i]/confusion_matrix[a][i].reduce(:+).to_f
self.predictivity[a][v] = confusion_matrix[a][i][i]/confusion_matrix[a].collect{|n| n[i]}.reduce(:+).to_f
end
end
confidence_sum = {:all => 0, :without_warnings => 0}
[:all,:without_warnings].each do |a|
weighted_confusion_matrix[a].each do |r|
r.each do |c|
confidence_sum[a] += c
end
end
end
self.accuracy = {}
self.weighted_accuracy = {}
[:all,:without_warnings].each do |a|
self.accuracy[a] = (confusion_matrix[a][0][0]+confusion_matrix[a][1][1])/nr_predictions[a].to_f
self.weighted_accuracy[a] = (weighted_confusion_matrix[a][0][0]+weighted_confusion_matrix[a][1][1])/confidence_sum[a].to_f
end
$logger.debug "Accuracy #{accuracy}"
$logger.debug "Nr Predictions #{nr_predictions}"
save
{
:accept_values => accept_values,
:confusion_matrix => confusion_matrix,
:weighted_confusion_matrix => weighted_confusion_matrix,
:accuracy => accuracy,
:weighted_accuracy => weighted_accuracy,
:true_rate => self.true_rate,
:predictivity => self.predictivity,
:nr_predictions => nr_predictions,
}
end
# Plot accuracy vs prediction probability
# @param [String,nil] format
# @return [Blob]
def probability_plot format: "pdf"
#unless probability_plot_id
#tmpdir = File.join(ENV["HOME"], "tmp")
tmpdir = "/tmp"
#p tmpdir
FileUtils.mkdir_p tmpdir
tmpfile = File.join(tmpdir,"#{id.to_s}_probability.#{format}")
accuracies = []
probabilities = []
correct_predictions = 0
incorrect_predictions = 0
pp = []
predictions.values.select{|p| p["probabilities"]}.compact.each do |p|
p["measurements"].each do |m|
pp << [ p["probabilities"][p["value"]], p["value"] == m ]
end
end
pp.sort_by!{|p| 1-p.first}
pp.each do |p|
p[1] ? correct_predictions += 1 : incorrect_predictions += 1
accuracies << correct_predictions/(correct_predictions+incorrect_predictions).to_f
probabilities << p[0]
end
R.assign "accuracy", accuracies
R.assign "probability", probabilities
R.eval "image = qplot(probability,accuracy)+ylab('Accumulated accuracy')+xlab('Prediction probability')+ylim(c(0,1))+scale_x_reverse()+geom_line()"
R.eval "ggsave(file='#{tmpfile}', plot=image)"
file = Mongo::Grid::File.new(File.read(tmpfile), :filename => "#{self.id.to_s}_probability_plot.svg")
plot_id = $gridfs.insert_one(file)
update(:probability_plot_id => plot_id)
#end
$gridfs.find_one(_id: probability_plot_id).data
end
end
# Statistical evaluation of regression validations
module RegressionStatistics
# Get statistics
# @return [Hash]
def statistics
self.warnings = []
self.rmse = {:all =>0,:without_warnings => 0}
self.r_squared = {:all =>0,:without_warnings => 0}
self.mae = {:all =>0,:without_warnings => 0}
self.within_prediction_interval = {:all =>0,:without_warnings => 0}
self.out_of_prediction_interval = {:all =>0,:without_warnings => 0}
x = {:all => [],:without_warnings => []}
y = {:all => [],:without_warnings => []}
self.nr_predictions = {:all =>0,:without_warnings => 0}
predictions.each do |cid,pred|
!if pred[:value] and pred[:measurements] and !pred[:measurements].empty?
self.nr_predictions[:all] +=1
x[:all] << pred[:measurements].median
y[:all] << pred[:value]
error = pred[:value]-pred[:measurements].median
self.rmse[:all] += error**2
self.mae[:all] += error.abs
if pred[:prediction_interval]
if pred[:measurements].median >= pred[:prediction_interval][0] and pred[:measurements].median <= pred[:prediction_interval][1]
self.within_prediction_interval[:all] += 1
else
self.out_of_prediction_interval[:all] += 1
end
end
if pred[:warnings].empty?
self.nr_predictions[:without_warnings] +=1
x[:without_warnings] << pred[:measurements].median
y[:without_warnings] << pred[:value]
error = pred[:value]-pred[:measurements].median
self.rmse[:without_warnings] += error**2
self.mae[:without_warnings] += error.abs
if pred[:prediction_interval]
if pred[:measurements].median >= pred[:prediction_interval][0] and pred[:measurements].median <= pred[:prediction_interval][1]
self.within_prediction_interval[:without_warnings] += 1
else
self.out_of_prediction_interval[:without_warnings] += 1
end
end
end
else
trd_id = model.training_dataset_id
smiles = Compound.find(cid).smiles
self.warnings << "No training activities for #{smiles} in training dataset #{trd_id}."
$logger.debug "No training activities for #{smiles} in training dataset #{trd_id}."
end
end
[:all,:without_warnings].each do |a|
if x[a].size > 2
R.assign "measurement", x[a]
R.assign "prediction", y[a]
R.eval "r <- cor(measurement,prediction,use='pairwise')"
self.r_squared[a] = R.eval("r").to_ruby**2
else
self.r_squared[a] = 0
end
if self.nr_predictions[a] > 0
self.mae[a] = self.mae[a]/self.nr_predictions[a]
self.rmse[a] = Math.sqrt(self.rmse[a]/self.nr_predictions[a])
else
self.mae[a] = nil
self.rmse[a] = nil
end
end
$logger.debug "R^2 #{r_squared}"
$logger.debug "RMSE #{rmse}"
$logger.debug "MAE #{mae}"
$logger.debug "Nr predictions #{nr_predictions}"
$logger.debug "#{within_prediction_interval} measurements within prediction interval"
$logger.debug "#{warnings}"
save
{
:mae => mae,
:rmse => rmse,
:r_squared => r_squared,
:within_prediction_interval => self.within_prediction_interval,
:out_of_prediction_interval => out_of_prediction_interval,
:nr_predictions => nr_predictions,
}
end
# Plot predicted vs measured values
# @param [String,nil] format
# @return [Blob]
def correlation_plot format: "png"
unless correlation_plot_id
tmpfile = "/tmp/#{id.to_s}_correlation.#{format}"
x = []
y = []
feature = Feature.find(predictions.first.last["prediction_feature_id"])
predictions.each do |sid,p|
x << p["measurements"].median
y << p["value"]
end
R.assign "measurement", x
R.assign "prediction", y
R.eval "all = c(measurement,prediction)"
R.eval "range = c(min(all), max(all))"
if feature.name.match /Net cell association/ # ad hoc fix for awkward units
title = "log2(Net cell association [mL/ug(Mg)])"
else
title = feature.name
title += " [#{feature.unit}]" if feature.unit and !feature.unit.blank?
end
R.eval "image = qplot(prediction,measurement,main='#{title}',xlab='Prediction',ylab='Measurement',asp=1,xlim=range, ylim=range)"
R.eval "image = image + geom_abline(intercept=0, slope=1)"
R.eval "ggsave(file='#{tmpfile}', plot=image)"
file = Mongo::Grid::File.new(File.read(tmpfile), :filename => "#{id.to_s}_correlation_plot.#{format}")
plot_id = $gridfs.insert_one(file)
update(:correlation_plot_id => plot_id)
end
$gridfs.find_one(_id: correlation_plot_id).data
end
# Get predictions with measurements outside of the prediction interval
# @return [Hash]
def worst_predictions
worst_predictions = predictions.select do |sid,p|
p["prediction_interval"] and p["value"] and (p["measurements"].max < p["prediction_interval"][0] or p["measurements"].min > p["prediction_interval"][1])
end.compact.to_h
worst_predictions.each do |sid,p|
p["error"] = (p["value"] - p["measurements"].median).abs
if p["measurements"].max < p["prediction_interval"][0]
p["distance_prediction_interval"] = (p["measurements"].max - p["prediction_interval"][0]).abs
elsif p["measurements"].min > p["prediction_interval"][1]
p["distance_prediction_interval"] = (p["measurements"].min - p["prediction_interval"][1]).abs
end
end
worst_predictions.sort_by{|sid,p| p["distance_prediction_interval"] }.to_h
end
end
end
end
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