View statlib-20050214 sleuth_ex1605 (public)
























- Summary
(No information yet)
- License
- unknown (from Weka repository)
- Dependencies
- Tags
- arff slurped Weka
- Attribute Types
- Integer
- Download
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# Instances: 62 / # Attributes: 6
HDF5 (10.7 KB) XML CSV ARFF LibSVM Matlab Octave
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- Original Data Format
- arff
- Name
- sleuth-ex1605
- Version mldata
- 0
- Comment
Contains 110 data sets from the book 'The Statistical Sleuth' by Fred Ramsey and Dan Schafer; Duxbury Press, 1997. (schafer@stat.orst.edu) 14/Oct/97
Note: description taken from this web site: http://lib.stat.cmu.edu/datasets/
File: ../data/sleuth/ex1605.asc
Information about the dataset CLASSTYPE: numeric CLASSINDEX: none specific
- Names
- FMED,TMIQ,Age2IQ,Age4IQ,Age8IQ,Age13IQ,
- Types
- numeric
- numeric
- numeric
- numeric
- numeric
- numeric
- Data (first 10 data points)
FMED TMIQ Age2IQ Age4IQ Age8IQ Age1... 10 100 120 115 109 106 10 71 131 109 113 95 14 89 126 115 113 90 7 73 120 102 111 121 14 64 126 125 114 96 8 64 125 109 96 87 13 104 105 107 106 104 16 76 130 112 124 125 10 81 107 120 109 115 8 78 104 108 125 124 ... ... ... ... ... ...
- Description
A gzip'ed tar containing StatLib datasets (statlib-20050214.tar.gz, 12,785,582 Bytes)
- URLs
- (No information yet)
- Publications
- Data Source
- http://lib.stat.cmu.edu/datasets/
- Measurement Details
- Usage Scenario
- revision 1
- by mldata on 2010-11-06 10:00
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Acknowledgements
This project is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning)
http://www.pascal-network.org/.