View datasets-numeric schlvote (public)
























- Summary
(No information yet)
- License
- unknown (from Weka repository)
- Dependencies
- Tags
- arff slurped Weka
- Attribute Types
- Integer,Floating Point
- Download
-
# Instances: 38 / # Attributes: 6
HDF5 (11.6 KB) XML CSV ARFF LibSVM Matlab Octave
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- Original Data Format
- arff
- Name
- schlvote
- Version mldata
- 0
- Comment
Dataset from Smoothing Methods in Statistics (ftp stat.cmu.edu/datasets)
Simonoff, J.S. (1996). Smoothing Methods in Statistics. New York: Springer-Verlag.
- Names
- vote,tax_rate,budget,budget_change,tax_rate_change,wealth_per_student,
- Types
- nominal:0,1
- numeric
- numeric
- numeric
- numeric
- numeric
- Data (first 10 data points)
vote tax_... budget budg... tax_... weal... 1.0 47.18 4753... 4.0 6.3 3786... 1.0 21.64 1163... 3.3 4.1 4449... 1.0 24.05 5985... 3.4 2.5 3806... 1.0 20.93 2692... 9.4 7.5 3309... 1.0 19.32 1168... 11.1 5.2 4366... 1.0 26.2 3864... 4.5 -0.23 9153... 1.0 20.09 1388... 4.7 1.7 4126... 0.0 42.16 4029... 5.9 4.9 6189... 1.0 29.11 3540... 3.0 3.5 1189... 0.0 45.96 3031... 3.8 3.7 5325... ... ... ... ... ... ...
- Description
A jarfile containing 37 regression problems, obtained from various sources (datasets-numeric.jar, 169,344 Bytes).
- URLs
- (No information yet)
- Publications
- Data Source
- Measurement Details
- Usage Scenario
- revision 1
- by mldata on 2011-09-14 16:26
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Acknowledgements
This project is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning)
http://www.pascal-network.org/.