This section describes main characteristics of the penbased data set and its attributes:
General information
Pen-Based Recognition of Handwritten Digits data set |
Type | Classification | Origin | Real world |
Features | 16 | (Real / Integer / Nominal) | (0 / 16 / 0) |
Instances | 10992 |
Classes | 10 |
Missing values? | No |
Attribute description
Attribute | Domain | Attribute | Domain |
At1 | [0, 100] | At9 | [0, 100] |
At2 | [0, 100] | At10 | [0, 100] |
At3 | [0, 100] | At11 | [0, 100] |
At4 | [0, 100] | At12 | [0, 100] |
At5 | [0, 100] | At13 | [0, 100] |
At6 | [0, 100] | At14 | [0, 100] |
At7 | [0, 100] | At15 | [0, 100] |
At8 | [0, 100] | At16 | [0, 100] |
Class | {0,1,2,3,4,5,6,7,8,9} |
Additional information
A digit data base made by collecting 250 samples from 44 writers, using only (x, y) coordinate information represented as constant length feature vectors, which were resampled to 8 points per digit (therefore the data set contains 8 points x 2 coordinates = 16 attributes).
The class label represents the code of the digit written.
In this section you can download some files related to the penbased data set:
- The complete data set already formatted in KEEL format can be downloaded from
here.
- A copy of the data set already partitioned by means of a 10-folds cross validation procedure can be downloaded from here.
- A copy of the data set already partitioned by means of a 5-folds cross validation procedure can be downloaded from here.
- The header file associated to this data set can be downloaded from here.
- This is not a native data set from the KEEL project. It has been obtained from the UCI Machine Learning Repository . The original page where the data set can be found is: http://archive.ics.uci.edu/ml/datasets/Pen-Based+Recognition+of+Handwritten+Digits.
|