Ejemplo n.º 1
0
def selectAttibutesGA():
	matrix = csv.readCsvRaw(csv.headered_name_pca_corr)
	num_attributes = len(matrix[0])-1
	if False:
		num_subset = 5
		num_trials = max(100, num_attributes*2)
		results = findBestOfSize(matrix, num_subset, num_trials)
		order = orderByResults(results,num_attributes)
	if True:
		sort_order = [i for i in range(num_attributes)]
		for num_subset in range(5, num_attributes, 5):
			num_trials = max(100, num_attributes*2)
			csv_matrix_name  = csv.makeCsvPath('subset.matrix' +('%03d'%num_subset))
			csv_results_name = csv.makePath('subset.results'+('%03d'%num_subset))
			csv_best_name    = csv.makeCsvPath('subset.best'   +('%03d'%num_subset))
			csv_summary_name  = csv.makeCsvPath('subset.summary'+('%03d'%num_subset))
		
			ordered_matrix = pca.reorderMatrix(matrix, sort_order)
			csv.writeCsv(csv_matrix_name, ordered_matrix)
			
			results = findBestOfSize(ordered_matrix, num_subset, num_trials, csv_summary_name)
			
			sort_order = orderByResults(results,num_attributes)
			#c_x = results[0].columns + [-1]      # include outcome
			#sub_matrix = [[row[i] for i in c_x] for row in ordered_matrix]
			#csv.writeCsv(csv_best_name,sub_matrix, )
			if not is_testing:
				shutil.copyfile(results[0]['csv'],csv_best_name)
				shutil.copyfile(results[0]['results'],csv_results_name)
Ejemplo n.º 2
0
def testByNumberHidden(csv_matrix_name, output_basename, num_columns, num_cv = 4):
	"""Test MLP results on matrix by number of neurons in hidden layer
		num_columns is number of leftmost columns of matrix to test
		num_cv is the number of cross-validation rounds
	"""
	
	start_num_hidden = min(10, num_columns-1) 
	delta_num_hidden = 10
	
	results_name = csv.makePath(output_basename + '.results')
	model_name   = csv.makePath(output_basename + '.model')
	csv_summary_name = csv.makeCsvPath(output_basename + '.summary')
	csv_best_name    = csv.makeCsvPath(output_basename + '.best')
	
	matrix  = csv.readCsvRaw(csv_matrix_name)
	num_attribs = len(matrix[0])-1  # last column is category
	print 'testByNumberHidden', len(matrix), start_num_hidden, delta_num_hidden, num_columns
	
	best_accuracy = 0.0
	results = []
	csv_summary = file(csv_summary_name, 'w')
	
	for num_hidden in range(start_num_hidden, num_columns, delta_num_hidden):
		columns = [i for i in range(num_columns)]
		accuracy, temp_csv, temp_results, duration = testMatrixMLP(matrix, columns, makeWekaOptions(0.3, 0.5, num_hidden, num_cv))
		r = {'num':num_hidden, 'accuracy':accuracy, 'csv':temp_csv, 'results':temp_results, 'duration':duration}
		results.append(r)
		results.sort(key = lambda r: -r['accuracy'])
		if True:
			print num_hidden, ':',  accuracy, len(results), int(duration), 'seconds'
			for i in range(min(5,len(results))):
				rr = results[i]
				print '    ',i, ':', rr['accuracy'], rr['num'], int(rr['duration'])
		summary = [num_hidden, accuracy, duration, temp_csv, temp_results]
		csv_line = ','.join([str(e) for e in summary])
		csv_summary.write(csv_line + '\n')
		csv_summary.flush()
		if accuracy > best_accuracy:
			best_accuracy = accuracy
			shutil.copyfile(temp_csv, csv_best_name)
			shutil.copyfile(temp_results, results_name)
			shutil.copyfile(outnameToModelname(temp_results), model_name)
			
	return {'summary':csv_summary_name, 'best':csv_best_name, 'results':results_name, 'model':model_name}
Ejemplo n.º 3
0
def testBySize(incrementing_hidden):
	"Test MLP results on matrix by number of left side columns"
	
	start_num_columns = 30 
	delta_num_columns = 10
	opts = '-M 0.5 -L 0.3 -x 4 -H '
	num_hidden = 13
		
	csv_matrix_name = csv.makeCsvPath('subset.matrix035')	
	base_name = 'number.attributes'
	if incrementing_hidden:
		base_name = base_name + '.inc'
	csv_results_name = csv.makePath(base_name + '.results')
	csv_summary_name = csv.makeCsvPath(base_name + '.summary')
	csv_best_name    = csv.makeCsvPath(base_name + '.best')
	
	matrix  = csv.readCsvRaw(csv_matrix_name)
	num_attribs = len(matrix[0])-1  # last column is category
	print 'testBySize', len(matrix), start_num_columns, delta_num_columns, len(matrix[0])
	
	best_accuracy = 0.0
	summary = []
	csv_summary = file(csv_summary_name, 'w')
	
	for num_columns in range(start_num_columns, len(matrix[0]), delta_num_columns):
		columns = [i for i in range(num_columns)]
		if incrementing_hidden:
			num_hidden = int(float(num_columns)*13.0/30.0)
		accuracy, temp_csv, temp_results, duration = testMatrixMLP(matrix, columns, opts + str(num_hidden))
		r = {'num':num_columns, 'accuracy':accuracy, 'csv':temp_csv, 'results':temp_results, 'duration':duration}
		summary.append(r)
		summary.sort(key = lambda r: -r['accuracy'])
		if True:
			print num_columns, ':',  accuracy, len(results), int(duration), 'seconds'
			for i in range(min(3,len(results))):
				rr = results[i]
				print '    ',i, ':', rr['accuracy'], rr['num'], int(rr['duration'])
		summary_row = [num_columns, accuracy, duration, temp_csv, temp_results]
		csv_line = ','.join([str(e) for e in summary_row])
		csv_summary.write(csv_line + '\n')
		csv_summary.flush()
		if accuracy > best_accuracy:
			best_accuracy = accuracy
			shutil.copyfile(temp_csv, csv_best_name)
			shutil.copyfile(temp_results, csv_results_name)
		
	return results
Ejemplo n.º 4
0
def testCostMatrix(num_columns, num_cv = 4):
	"""Test MLP results with a range of false positive costs
	"""
	
	num_hidden = 5 
	
	csv_matrix_name = csv.makeCsvPath('subset.matrix035')	
	base_name = 'cost.col' + str(num_columns) + '.x' + str(num_cv) 
	csv_results_name = csv.makePath(base_name + '.results')
	csv_summary_name = csv.makeCsvPath(base_name + '.summary')
	csv_best_name    = csv.makeCsvPath(base_name + '.best')
	
	matrix  = csv.readCsvRaw(csv_matrix_name)
	num_attribs = len(matrix[0])-1  # last column is category
	print 'testCostMatrix', len(matrix), num_hidden, num_columns
	
	best_accuracy = 0.0
	results = []
	csv_results = file(csv_summary_name, 'w')
	
	for false_positive_cost in range(1, 11, 2):
		columns = [i for i in range(num_columns)]
		costs_map = {'True':1.0, 'False':float(false_positive_cost)}
		accuracy, temp_csv, temp_results, duration = testMatrixMLP(matrix, columns, makeWekaOptions(0.3, 0.5, num_hidden, num_cv, costs_map))
		r = {'cost':false_positive_cost, 'accuracy':accuracy, 'csv':temp_csv, 'results':temp_results, 'duration':duration}
		results.append(r)
		results.sort(key = lambda r: -r['accuracy'])
		if True:
			print false_positive_cost, ':',  accuracy, len(results), int(duration), 'seconds'
			for i in range(min(5,len(results))):
				rr = results[i]
				print '    ',i, ':', rr['accuracy'], rr['cost'], int(rr['duration'])
		summary = [num_hidden, accuracy, duration, temp_csv, temp_results]
		csv_line = ','.join([str(e) for e in summary])
		csv_results.write(csv_line + '\n')
		csv_results.flush()
		if accuracy > best_accuracy:
			best_accuracy = accuracy
			shutil.copyfile(temp_csv, csv_best_name)
			shutil.copyfile(temp_results, csv_results_name)
		
	return results
Ejemplo n.º 5
0
		runMLPTrain(headered_name_pca, headered_name_pca + '.all.results')
		
	if False:
		# Test the GA base routines
		testRouletteWheel()
		testRouletteWheelTwice()
		testMutate()
		testCrossOver()
		
	if False:
		selectAttibutesGA()
		
	if False:
		num_subset = 25
		in_filename = csv.makeCsvPath('subset.best' + ('%03d'%num_subset))
		csv_results_name = csv.makePath('hidden.layer.results')
		csv_summary_name = csv.makeCsvPath('hidden.layer.summary')
		csv_best_name = csv.makeCsvPath('hidden.layer.best')
		csv_summary = file(csv_summary_name, 'w')
		best_accuracy = 0.0
		for num_hidden in range(1, num_subset):
			opts = '-H ' + str(num_hidden) + ' -x 4'
			out_filename = csv.makeCsvPath('num.hidden' + ('%03d'%num_hidden))
			temp_base = csv.makeTempPath('num.hidden' + ('%03d'%num_hidden))
			temp_results = temp_base + '.results'
			accuracy, duration = runMLPTrain(in_filename, temp_results, opts)
			summary = [num_hidden, accuracy, best_accuracy, duration, temp_results]
			print summary
			csv_line = ','.join([str(e) for e in summary])
			csv_summary.write(csv_line + '\n')
			csv_summary.flush()