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ada_agnostic - MaRDI portal

ada_agnostic

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Dataset:6035402



OpenML40993MaRDI QIDQ6035402

OpenML dataset with id 40993

No author found.

Full work available at URL: https://api.openml.org/data/v1/download/18154709/ada_agnostic.arff

Upload date: 5 December 2017



Dataset Characteristics

Number of features: 49 (numeric: 6, symbolic: 43 and in total binary: 42 )
Number of instances: 4,562
Number of instances with missing values: 0
Number of missing values: 0

Author: [isabelle@clopinet.com Isabelle Guyon] Source: Agnostic Learning vs. Prior Knowledge Challenge Please cite: None

__Major change w.r.t. version 1: updated data type of binary variables to factor type.__

Dataset from the Agnostic Learning vs. Prior Knowledge Challenge (http://www.agnostic.inf.ethz.ch), which consisted of 5 different datasets (SYLVA, GINA, NOVA, HIVA, ADA). The purpose of the challenge was to check if the performance of domain-specific feature engineering (prior knowledge) can be met by algorithms that were trained on data without any domain-specific knowledge (agnostic). For the latter, the data was anonymised and preprocessed in a way that makes them uninterpretable.

This dataset contains the agnostic (smashed) version of a data set from the US census bureau for the time span June 2005 - September 2006. Similar data set on OpenML is called __adult__. The raw data from the census bureau is also known as the Adult database in the UCI machine-learning repository.

Topic

The task of ADA is to discover high revenue people from census data. This is a two-class classification problem. The raw data from the census bureau is known as the Adult database in the UCI machine-learning repository. It contains continuous, binary and categorical variables. The “prior knowledge track” has access to the original features and their identity. The agnostic track has access to a preprocessed numeric representation eliminating categorical variables.

Source

Original owners This data was extracted from the census bureau database found at http://www.census.gov/ftp/pub/DES/www/welcome.html Donor: Ronny Kohavi and Barry Becker,

Data Mining and Visualization
Silicon Graphics.
e-mail: ronnyk@sgi.com for questions

Dataset from: http://www.agnostic.inf.ethz.ch/datasets.php

Preprocessing

In this documentation the organisers of the challenge describe the steps they performed to come up with the __agnostic__ data. The 14 original attributes (features) include age, workclass, education, marital status, occupation, native country, etc. It contains continuous, binary and categorical features. This dataset is from the "agnostic learning track", i.e. has access to a preprocessed numeric representation eliminating categorical variables, but the identity of the features is not revealed. Furthermore, features are scrambled and cannot be linked to the features given in the dataset documentation.

Additional Info

This dataset contains samples from both training and validation datasets. Modified by TunedIT (converted to ARFF format).

Data type: non-sparse Number of features: 48 Number of examples and check-sums: Pos_ex Neg_ex Tot_ex Check_sum Train 1029 3118 4147 6798109.00 Valid 103 312 415 681151.00






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