This data reports predictors and the result of credit card applications. Its attribute names and values have been changed to symbols to protect confidentiality.
creditapproval
A data frame containing 690 cases (rows) and 15 variables (columns).
categorical: b, a
continuous
continuous
categorical: u, y, l, t
categorical: g, p, gg
categorical: c, d, cc, i, j, k, m, r, q, w, x, e, aa, ff
categorical: v, h, bb, j, n, z, dd, ff, o
continuous
categorical: t, f
categorical: t, f
continuous
categorical: t, f
categorical: g, p, s
continuous
continuous
Criterion: Credit approval.
Values: TRUE
(+) vs. FALSE
(-) (44.5% vs. 55.5%).
This dataset contains a mix of attributes -- continuous, nominal with small Ns, and nominal with larger Ns. There are also a few missing values.
We made the following enhancements to the original data for improved usability:
Any missing values, denoted as "?" in the dataset, were transformed into NAs.
Binary factor variables with exclusive "t" and "f" values were converted to logical TRUE/FALSE vectors.
Other than that, the data remains consistent with the original dataset.
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