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wine_seed_3_nrows_2000_nclasses_10_ncols_100_stratify_True

wine_seed_3_nrows_2000_nclasses_10_ncols_100_stratify_True

active ARFF See source Visibility: public Uploaded 17-11-2022 by David Wilson
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Subsampling of the dataset wine (44091) with seed=3 args.nrows=2000 args.ncols=100 args.nclasses=10 args.no_stratify=True Generated with the following source code: ```python def subsample( self, seed: int, nrows_max: int = 2_000, ncols_max: int = 100, nclasses_max: int = 10, stratified: bool = True, ) -> Dataset: rng = np.random.default_rng(seed) x = self.x y = self.y # Uniformly sample classes = y.unique() if len(classes) > nclasses_max: vcs = y.value_counts() selected_classes = rng.choice( classes, size=nclasses_max, replace=False, p=vcs / sum(vcs), ) # Select the indices where one of these classes is present idxs = y.index[y.isin(classes)] x = x.iloc[idxs] y = y.iloc[idxs] # Uniformly sample columns if required if len(x.columns) > ncols_max: columns_idxs = rng.choice( list(range(len(x.columns))), size=ncols_max, replace=False ) sorted_column_idxs = sorted(columns_idxs) selected_columns = list(x.columns[sorted_column_idxs]) x = x[selected_columns] else: sorted_column_idxs = list(range(len(x.columns))) if len(x) > nrows_max: # Stratify accordingly target_name = y.name data = pd.concat((x, y), axis="columns") _, subset = train_test_split( data, test_size=nrows_max, stratify=data[target_name], shuffle=True, random_state=seed, ) x = subset.drop(target_name, axis="columns") y = subset[target_name] # We need to convert categorical columns to string for openml categorical_mask = [self.categorical_mask[i] for i in sorted_column_idxs] columns = list(x.columns) return Dataset( # Technically this is not the same but it's where it was derived from dataset=self.dataset, x=x, y=y, categorical_mask=categorical_mask, columns=columns, ) ```

12 features

quality (target)nominal2 unique values
0 missing
fixed aciditynumeric92 unique values
0 missing
volatile aciditynumeric134 unique values
0 missing
citric acidnumeric81 unique values
0 missing
residual sugarnumeric241 unique values
0 missing
chloridesnumeric133 unique values
0 missing
free sulfur dioxidenumeric103 unique values
0 missing
total sulfur dioxidenumeric240 unique values
0 missing
densitynumeric655 unique values
0 missing
pHnumeric93 unique values
0 missing
sulphatesnumeric94 unique values
0 missing
alcoholnumeric79 unique values
0 missing

19 properties

2000
Number of instances (rows) of the dataset.
12
Number of attributes (columns) of the dataset.
2
Number of distinct values of the target attribute (if it is nominal).
0
Number of missing values in the dataset.
0
Number of instances with at least one value missing.
11
Number of numeric attributes.
1
Number of nominal attributes.
8.33
Percentage of nominal attributes.
0.49
Average class difference between consecutive instances.
91.67
Percentage of numeric attributes.
0
Percentage of missing values.
0
Percentage of instances having missing values.
8.33
Percentage of binary attributes.
1
Number of binary attributes.
1000
Number of instances belonging to the least frequent class.
50
Percentage of instances belonging to the least frequent class.
1000
Number of instances belonging to the most frequent class.
50
Percentage of instances belonging to the most frequent class.
0.01
Number of attributes divided by the number of instances.

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