View Pendigits_UCSD_MKL (public)

2011-02-24 06:59 by hzahn | Version 1 | Rating Empty StarEmpty StarEmpty StarEmpty StarEmpty StarEmpty Star
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Summary

data set on pen-based digits

License
unknown (from UCI repository)
Dependencies
Tags
conversion_failed handwritten_digits
Attribute Types
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Original Data Format
octave
Name
Version mldata
Comment
Names
Data (first 10 data points)
    Format not HDF5, zip or tar archive. Will parse the following text: # Created by Octave 3.2.4, Tue Feb 22 19:08:25 2011 Mitteleurop�ische Zeit <unknown@unknown> # name: label # type: matrix # rows: 10992 # columns: 1 8 2 1 4 1 6
Description

The pendigits data set is on pen-based digit recognition (multiclass classification with 10 classes) and contains four different feature representations.

URLs
http://mkl.ucsd.edu/dataset/pendigits
Publications
    Data Source
    Measurement Details
    Usage Scenario
    revision 1
    by hzahn on 2011-02-24 06:59

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    Acknowledgements

    This project is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning)
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