Published January 1, 1997
| Submitted
Technical Report
Open
The Central Classifier Bound - A New Error Bound for the Classifier Chosen by Early Stopping
- Creators
- Bax, Eric
- Çataltepe, Zehra
- Sill, Joe
Chicago
Abstract
Training with early stopping is the following process. Partition the in sample data into training and validation sets Begin with a random classifier g_(1-). Use an iterative method to decrease the error rate on the training data. Record the classifier at each iteration producing a series of snapshots g_1....g_M. Evaluate the error rate of each snapshot over the validation data. Deliver a minimum validation error classifier. g^* as the result of training.
Additional Information
© 1997 California Institute of Technology. June 26, 1997. We thank Dr. Yaser Abu-Mostafa and Dr. Joel Franklin for their teaching and advice.Attached Files
Submitted - CSTR1997.pdf
Submitted - postscript.ps
Files
CSTR1997.pdf
Files
(481.3 kB)
Name | Size | Download all |
---|---|---|
md5:70d1bc98a249b628dfecbe9bd66fbe2b
|
321.5 kB | Download |
md5:9bd4ff1781c34fb37abdcecfa3979627
|
159.8 kB | Preview Download |
Additional details
- Eprint ID
- 26811
- Resolver ID
- CaltechCSTR:1997.cs-tr-97-08
- Created
-
2001-04-25Created from EPrint's datestamp field
- Updated
-
2019-10-03Created from EPrint's last_modified field
- Caltech groups
- Computer Science Technical Reports