kxy-datasets 0.0.14

Creator: railscoder56

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Description:

kxydatasets 0.0.14

A Python package to access ML datasets (UCI, Kaggle, synthetic, etc.) in a normalized format.



Example real-life datasets
Loading the data
>>> from kxy_datasets.uci_regressions import AirQuality
>>> air_quality = AirQuality()
>>> print(air_quality.name)
UCIAirQuality

Retrieving target and explanatory variables as numpy arrays
>>> y, x = air_quality.x, air_quality.y
>>> print(air_quality.x.shape)
(8991, 14)
>>> print(air_quality.y.shape)
(8991, 1)
>>> print(len(air_quality))
8991

Reading the problem type (classification/regression)
>>> print(air_quality.problem_type)
regression

Retrieving the data as a dataframe
>>> air_quality.df
Date Time CO(GT) PT08.S1(CO) NMHC(GT) C6H6(GT) PT08.S2(NMHC) NOx(GT) PT08.S3(NOx) NO2(GT) PT08.S4(NO2) PT08.S5(O3) T RH AH
0 273.0 18 2.6 1360.0 150.0 11.9 1046.0 166.0 1056.0 113.0 1692.0 1268.0 13.6 48.9 0.7578
1 273.0 19 2.0 1292.0 112.0 9.4 955.0 103.0 1174.0 92.0 1559.0 972.0 13.3 47.7 0.7255
2 273.0 20 2.2 1402.0 88.0 9.0 939.0 131.0 1140.0 114.0 1555.0 1074.0 11.9 54.0 0.7502
3 273.0 21 2.2 1376.0 80.0 9.2 948.0 172.0 1092.0 122.0 1584.0 1203.0 11.0 60.0 0.7867
4 273.0 22 1.6 1272.0 51.0 6.5 836.0 131.0 1205.0 116.0 1490.0 1110.0 11.2 59.6 0.7888
... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ...
9352 456.0 10 3.1 1314.0 -200.0 13.5 1101.0 472.0 539.0 190.0 1374.0 1729.0 21.9 29.3 0.7568
9353 456.0 11 2.4 1163.0 -200.0 11.4 1027.0 353.0 604.0 179.0 1264.0 1269.0 24.3 23.7 0.7119
9354 456.0 12 2.4 1142.0 -200.0 12.4 1063.0 293.0 603.0 175.0 1241.0 1092.0 26.9 18.3 0.6406
9355 456.0 13 2.1 1003.0 -200.0 9.5 961.0 235.0 702.0 156.0 1041.0 770.0 28.3 13.5 0.5139
9356 456.0 14 2.2 1071.0 -200.0 11.9 1047.0 265.0 654.0 168.0 1129.0 816.0 28.5 13.1 0.5028

[8991 rows x 15 columns]
>>> air_quality.y_column
'C6H6(GT)'
>>> air_quality.x_columns
['Date', 'Time', 'CO(GT)', 'PT08.S1(CO)', 'NMHC(GT)', 'PT08.S2(NMHC)', 'NOx(GT)', 'PT08.S3(NOx)', 'NO2(GT)', 'PT08.S4(NO2)', 'PT08.S5(O3)', 'T', 'RH', 'AH']

UCI classification datasets
>>> from kxy_datasets.uci_classifications import BankNote

Kaggle regression datasets
>>> from kxy_datasets.kaggle_regressions import HousePricesAdvanced

Kaggle classification datasets
>>> from kxy_datasets.kaggle_classifications import Titanic

Example synthetic datasets
Synthetic regression datasets (with known theoretical-best performance achievable)
>>> from kxy_datasets.synthetic_regressions import SQRTABSReg

Synthetic classification datasets (with known theoretical-best performance achievable)
>>> from kxy_datasets.synthetic_classifications import EllipticalBoundaryBin

Data valuation and model-free variable selection with the kxy package
Data valuation
>>> from kxy_datasets.kaggle_classifications import Titanic
>>> titanic = Titanic()
>>> titanic.data_valuation()
[====================================================================================================] 100% ETA: 0s
Achievable R-Squared Achievable Log-Likelihood Per Sample Achievable Accuracy
0 0.53 -2.89e-01 0.92

Model-free variable selection
>>> titanic.variable_selection()
[====================================================================================================] 100% ETA: 0s
Variable Running Achievable R-Squared Running Achievable Accuracy
Selection Order
0 No Variable 0.00 0.62
1 Sex 0.26 0.79
2 PassengerId 0.27 0.79
3 Pclass 0.37 0.84
4 Parch 0.37 0.84
5 Age 0.48 0.90
6 Embarked 0.48 0.90
7 SibSp 0.53 0.92
8 Fare 0.53 0.92

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

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