@@ -134,7 +134,7 @@ Search for an ensemble of machine learning algorithms
134134 .. code-block :: none
135135
136136
137- <autoPyTorch.api.tabular_classification.TabularClassificationTask object at 0x7fe3b78f6550 >
137+ <autoPyTorch.api.tabular_classification.TabularClassificationTask object at 0x7f5b9b54f7f0 >
138138
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@@ -166,24 +166,19 @@ Print the final ensemble performance
166166 .. code-block :: none
167167
168168 {'accuracy': 0.861271676300578}
169- | | Preprocessing | Estimator | Weight |
170- |---:|:-------------------------------------------------------------------------------------------------|:----------------------------------------------------------------|---------:|
171- | 0 | None | CBLearner | 0.66 |
172- | 1 | SimpleImputer,Variance Threshold,NoCoalescer,NoEncoder,StandardScaler,TruncSVD | no embedding,ShapedMLPBackbone,FullyConnectedHead,nn.Sequential | 0.16 |
173- | 2 | SimpleImputer,Variance Threshold,MinorityCoalescer,OneHotEncoder,StandardScaler,KernelPCA | embedding,ShapedResNetBackbone,FullyConnectedHead,nn.Sequential | 0.06 |
174- | 3 | SimpleImputer,Variance Threshold,MinorityCoalescer,OneHotEncoder,Normalizer,Nystroem | no embedding,ResNetBackbone,FullyConnectedHead,nn.Sequential | 0.04 |
175- | 4 | SimpleImputer,Variance Threshold,NoCoalescer,OneHotEncoder,Normalizer,TruncSVD | embedding,ShapedMLPBackbone,FullyConnectedHead,nn.Sequential | 0.02 |
176- | 5 | SimpleImputer,Variance Threshold,MinorityCoalescer,OneHotEncoder,StandardScaler,KernelPCA | embedding,ShapedResNetBackbone,FullyConnectedHead,nn.Sequential | 0.02 |
177- | 6 | None | RFLearner | 0.02 |
178- | 7 | SimpleImputer,Variance Threshold,NoCoalescer,OneHotEncoder,StandardScaler,NoFeaturePreprocessing | no embedding,ShapedMLPBackbone,FullyConnectedHead,nn.Sequential | 0.02 |
169+ | | Preprocessing | Estimator | Weight |
170+ |---:|:----------------------------------------------------------------------------------------|:-------------------------------------------------------------|---------:|
171+ | 0 | None | CBLearner | 0.86 |
172+ | 1 | SimpleImputer,Variance Threshold,NoCoalescer,OneHotEncoder,QuantileTransformer,TruncSVD | embedding,ShapedMLPBackbone,FullyConnectedHead,nn.Sequential | 0.08 |
173+ | 2 | SimpleImputer,Variance Threshold,MinorityCoalescer,OneHotEncoder,Normalizer,Nystroem | no embedding,ResNetBackbone,FullyConnectedHead,nn.Sequential | 0.06 |
179174 autoPyTorch results:
180175 Dataset name: Australian
181176 Optimisation Metric: accuracy
182177 Best validation score: 0.8713450292397661
183178 Number of target algorithm runs: 22
184- Number of successful target algorithm runs: 20
179+ Number of successful target algorithm runs: 19
185180 Number of crashed target algorithm runs: 2
186- Number of target algorithms that exceeded the time limit: 0
181+ Number of target algorithms that exceeded the time limit: 1
187182 Number of target algorithms that exceeded the memory limit: 0
188183
189184
@@ -193,7 +188,7 @@ Print the final ensemble performance
193188
194189 .. rst-class :: sphx-glr-timing
195190
196- **Total running time of the script: ** ( 5 minutes 31.550 seconds)
191+ **Total running time of the script: ** ( 5 minutes 19.116 seconds)
197192
198193
199194.. _sphx_glr_download_examples_20_basics_example_tabular_classification.py :
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