comparison plot_ml_performance.py @ 3:1c5dcef5ce0f draft default tip

planemo upload for repository https://github.com/bgruening/galaxytools/tree/master/tools/plotly_ml_performance_plots commit 271a4454eea5902e29da4b8dfa7b9124fefac6bc
author bgruening
date Tue, 07 May 2024 14:11:16 +0000
parents 62e3a4e8c54c
children
comparison
equal deleted inserted replaced
2:62e3a4e8c54c 3:1c5dcef5ce0f
1 import argparse 1 import argparse
2
2 import pandas as pd 3 import pandas as pd
3 import plotly 4 import plotly
4 import pickle
5 import plotly.graph_objs as go 5 import plotly.graph_objs as go
6 from sklearn.metrics import confusion_matrix, precision_recall_fscore_support, roc_curve, auc 6 from galaxy_ml.model_persist import load_model_from_h5
7 from galaxy_ml.utils import clean_params
8 from sklearn.metrics import (auc, confusion_matrix,
9 precision_recall_fscore_support, roc_curve)
7 from sklearn.preprocessing import label_binarize 10 from sklearn.preprocessing import label_binarize
8 11
9 12
10 def main(infile_input, infile_output, infile_trained_model): 13 def main(infile_input, infile_output, infile_trained_model):
11 """ 14 """
14 infile_input: str, input tabular file with true labels 17 infile_input: str, input tabular file with true labels
15 infile_output: str, input tabular file with predicted labels 18 infile_output: str, input tabular file with predicted labels
16 infile_trained_model: str, input trained model file (zip) 19 infile_trained_model: str, input trained model file (zip)
17 """ 20 """
18 21
19 df_input = pd.read_csv(infile_input, sep='\t', parse_dates=True) 22 df_input = pd.read_csv(infile_input, sep="\t", parse_dates=True)
20 df_output = pd.read_csv(infile_output, sep='\t', parse_dates=True) 23 df_output = pd.read_csv(infile_output, sep="\t", parse_dates=True)
21 true_labels = df_input.iloc[:, -1].copy() 24 true_labels = df_input.iloc[:, -1].copy()
22 predicted_labels = df_output.iloc[:, -1].copy() 25 predicted_labels = df_output.iloc[:, -1].copy()
23 axis_labels = list(set(true_labels)) 26 axis_labels = list(set(true_labels))
24 c_matrix = confusion_matrix(true_labels, predicted_labels) 27 c_matrix = confusion_matrix(true_labels, predicted_labels)
25 data = [ 28 data = [
26 go.Heatmap( 29 go.Heatmap(
27 z=c_matrix, 30 z=c_matrix,
28 x=axis_labels, 31 x=axis_labels,
29 y=axis_labels, 32 y=axis_labels,
30 colorscale='Portland', 33 colorscale="Portland",
31 ) 34 )
32 ] 35 ]
33 36
34 layout = go.Layout( 37 layout = go.Layout(
35 title='Confusion Matrix between true and predicted class labels', 38 title="Confusion Matrix between true and predicted class labels",
36 xaxis=dict(title='Predicted class labels'), 39 xaxis=dict(title="Predicted class labels"),
37 yaxis=dict(title='True class labels') 40 yaxis=dict(title="True class labels"),
38 ) 41 )
39 42
40 fig = go.Figure(data=data, layout=layout) 43 fig = go.Figure(data=data, layout=layout)
41 plotly.offline.plot(fig, filename="output_confusion.html", auto_open=False) 44 plotly.offline.plot(fig, filename="output_confusion.html", auto_open=False)
42 45
43 # plot precision, recall and f_score for each class label 46 # plot precision, recall and f_score for each class label
44 precision, recall, f_score, _ = precision_recall_fscore_support(true_labels, predicted_labels) 47 precision, recall, f_score, _ = precision_recall_fscore_support(
48 true_labels, predicted_labels
49 )
45 50
46 trace_precision = go.Scatter( 51 trace_precision = go.Scatter(
47 x=axis_labels, 52 x=axis_labels, y=precision, mode="lines+markers", name="Precision"
48 y=precision,
49 mode='lines+markers',
50 name='Precision'
51 ) 53 )
52 54
53 trace_recall = go.Scatter( 55 trace_recall = go.Scatter(
54 x=axis_labels, 56 x=axis_labels, y=recall, mode="lines+markers", name="Recall"
55 y=recall,
56 mode='lines+markers',
57 name='Recall'
58 ) 57 )
59 58
60 trace_fscore = go.Scatter( 59 trace_fscore = go.Scatter(
61 x=axis_labels, 60 x=axis_labels, y=f_score, mode="lines+markers", name="F-score"
62 y=f_score,
63 mode='lines+markers',
64 name='F-score'
65 ) 61 )
66 62
67 layout_prf = go.Layout( 63 layout_prf = go.Layout(
68 title='Precision, recall and f-score of true and predicted class labels', 64 title="Precision, recall and f-score of true and predicted class labels",
69 xaxis=dict(title='Class labels'), 65 xaxis=dict(title="Class labels"),
70 yaxis=dict(title='Precision, recall and f-score') 66 yaxis=dict(title="Precision, recall and f-score"),
71 ) 67 )
72 68
73 data_prf = [trace_precision, trace_recall, trace_fscore] 69 data_prf = [trace_precision, trace_recall, trace_fscore]
74 fig_prf = go.Figure(data=data_prf, layout=layout_prf) 70 fig_prf = go.Figure(data=data_prf, layout=layout_prf)
75 plotly.offline.plot(fig_prf, filename="output_prf.html", auto_open=False) 71 plotly.offline.plot(fig_prf, filename="output_prf.html", auto_open=False)
76 72
77 # plot roc and auc curves for different classes 73 # plot roc and auc curves for different classes
78 with open(infile_trained_model, 'rb') as model_file: 74 classifier_object = load_model_from_h5(infile_trained_model)
79 model = pickle.load(model_file) 75 model = clean_params(classifier_object)
80 76
81 # remove the last column (label column) 77 # remove the last column (label column)
82 test_data = df_input.iloc[:, :-1] 78 test_data = df_input.iloc[:, :-1]
83 model_items = dir(model) 79 model_items = dir(model)
84 80
85 try: 81 try:
86 # find the probability estimating method 82 # find the probability estimating method
87 if 'predict_proba' in model_items: 83 if "predict_proba" in model_items:
88 y_score = model.predict_proba(test_data) 84 y_score = model.predict_proba(test_data)
89 elif 'decision_function' in model_items: 85 elif "decision_function" in model_items:
90 y_score = model.decision_function(test_data) 86 y_score = model.decision_function(test_data)
91 87
92 true_labels_list = true_labels.tolist() 88 true_labels_list = true_labels.tolist()
93 one_hot_labels = label_binarize(true_labels_list, classes=axis_labels) 89 one_hot_labels = label_binarize(true_labels_list, classes=axis_labels)
94 data_roc = list() 90 data_roc = list()
102 roc_auc[i] = auc(fpr[i], tpr[i]) 98 roc_auc[i] = auc(fpr[i], tpr[i])
103 for i in range(len(axis_labels)): 99 for i in range(len(axis_labels)):
104 trace = go.Scatter( 100 trace = go.Scatter(
105 x=fpr[i], 101 x=fpr[i],
106 y=tpr[i], 102 y=tpr[i],
107 mode='lines+markers', 103 mode="lines+markers",
108 name='ROC curve of class {0} (AUC = {1:0.2f})'.format(i, roc_auc[i]) 104 name="ROC curve of class {0} (AUC = {1:0.2f})".format(
105 i, roc_auc[i]
106 ),
109 ) 107 )
110 data_roc.append(trace) 108 data_roc.append(trace)
111 else: 109 else:
112 try: 110 try:
113 y_score_binary = y_score[:, 1] 111 y_score_binary = y_score[:, 1]
114 except: 112 except Exception:
115 y_score_binary = y_score 113 y_score_binary = y_score
116 fpr, tpr, _ = roc_curve(one_hot_labels, y_score_binary, pos_label=1) 114 fpr, tpr, _ = roc_curve(one_hot_labels, y_score_binary, pos_label=1)
117 roc_auc = auc(fpr, tpr) 115 roc_auc = auc(fpr, tpr)
118 trace = go.Scatter( 116 trace = go.Scatter(
119 x=fpr, 117 x=fpr,
120 y=tpr, 118 y=tpr,
121 mode='lines+markers', 119 mode="lines+markers",
122 name='ROC curve (AUC = {0:0.2f})'.format(roc_auc) 120 name="ROC curve (AUC = {0:0.2f})".format(roc_auc),
123 ) 121 )
124 data_roc.append(trace) 122 data_roc.append(trace)
125 123
126 trace_diag = go.Scatter( 124 trace_diag = go.Scatter(x=[0, 1], y=[0, 1], mode="lines", name="Chance")
127 x=[0, 1],
128 y=[0, 1],
129 mode='lines',
130 name='Chance'
131 )
132 data_roc.append(trace_diag) 125 data_roc.append(trace_diag)
133 layout_roc = go.Layout( 126 layout_roc = go.Layout(
134 title='Receiver operating characteristics (ROC) and area under curve (AUC)', 127 title="Receiver operating characteristics (ROC) and area under curve (AUC)",
135 xaxis=dict(title='False positive rate'), 128 xaxis=dict(title="False positive rate"),
136 yaxis=dict(title='True positive rate') 129 yaxis=dict(title="True positive rate"),
137 ) 130 )
138 131
139 fig_roc = go.Figure(data=data_roc, layout=layout_roc) 132 fig_roc = go.Figure(data=data_roc, layout=layout_roc)
140 plotly.offline.plot(fig_roc, filename="output_roc.html", auto_open=False) 133 plotly.offline.plot(fig_roc, filename="output_roc.html", auto_open=False)
141 134
142 except Exception as exp: 135 except Exception as exp:
143 print("Plotting the ROC-AUC graph failed. This exception was raised: {}".format(exp)) 136 print(
137 "Plotting the ROC-AUC graph failed. This exception was raised: {}".format(
138 exp
139 )
140 )
144 141
145 142
146 if __name__ == "__main__": 143 if __name__ == "__main__":
147 aparser = argparse.ArgumentParser() 144 aparser = argparse.ArgumentParser()
148 aparser.add_argument("-i", "--input", dest="infile_input", required=True) 145 aparser.add_argument("-i", "--input", dest="infile_input", required=True)