From @CooledCoffee on March 18, 2015 3:32
Procedures
- Using the simple regression dataset provided by libsvm http://www.csie.ntu.edu.tw/~cjlin/libsvmtools/datasets/regression.html#eunite2001.
- Train & predict using both libsvm & liblinear
svm-train -s 3 -t 0 -c 1 -p 0.1 -e 0.001 -h 0 eunite2001 model.1 && svm-predict eunite2001.t model.1 prediction.1
liblinear-train -s 11 -c 1 -p 0.1 -e 0.001 eunite2001 model.11 && liblinear-predict eunite2001.t model.11 prediction.11
liblinear-train -s 12 -c 1 -p 0.1 -e 0.001 eunite2001 model.12 && liblinear-predict eunite2001.t model.12 prediction.12
liblinear-train -s 13 -c 1 -p 0.1 -e 0.001 eunite2001 model.13 && liblinear-predict eunite2001.t model.13 prediction.13
3. The results are here:
| libsvm |
liblinear -s 11 |
liblinear -s 12 |
liblinear -s 13 |
| 754.219 |
711.818 |
714.293 |
655.209 |
| 735.951 |
695.675 |
703.196 |
651.262 |
| 745.716 |
606.048 |
601.496 |
628.192 |
| 756.885 |
721.134 |
721.481 |
652.914 |
| 758.048 |
704.657 |
705.966 |
644.363 |
| 758.296 |
703.099 |
703.878 |
644.147 |
| 756.88 |
680.706 |
688.226 |
629.164 |
| 753.174 |
681.003 |
682.531 |
631.114 |
| 733.147 |
666.063 |
668.37 |
617.042 |
| 743.909 |
606.234 |
599.665 |
605.601 |
| ... |
... |
... |
... |
Questions
- To my understanding, "liblinear-train -s 13" is the best match for "svm-train -s 3 -t 0". Is that correct?
- Why are the results so different? In general, which tool gives better result?
Copied from original issue: cjlin1#10
From @CooledCoffee on March 18, 2015 3:32
Procedures
svm-train -s 3 -t 0 -c 1 -p 0.1 -e 0.001 -h 0 eunite2001 model.1 && svm-predict eunite2001.t model.1 prediction.1
liblinear-train -s 11 -c 1 -p 0.1 -e 0.001 eunite2001 model.11 && liblinear-predict eunite2001.t model.11 prediction.11
liblinear-train -s 12 -c 1 -p 0.1 -e 0.001 eunite2001 model.12 && liblinear-predict eunite2001.t model.12 prediction.12
liblinear-train -s 13 -c 1 -p 0.1 -e 0.001 eunite2001 model.13 && liblinear-predict eunite2001.t model.13 prediction.13
3. The results are here:
Questions
Copied from original issue: cjlin1#10