Skip to content
GitLab
Explore
Sign in
Primary navigation
Search or go to…
Project
L
licenseplates
Manage
Activity
Members
Labels
Plan
Issues
Issue boards
Milestones
Wiki
Code
Merge requests
Repository
Branches
Commits
Tags
Repository graph
Compare revisions
Build
Pipelines
Jobs
Pipeline schedules
Artifacts
Deploy
Releases
Model registry
Operate
Environments
Monitor
Incidents
Analyze
Value stream analytics
Contributor analytics
CI/CD analytics
Repository analytics
Model experiments
Help
Help
Support
GitLab documentation
Compare GitLab plans
Community forum
Contribute to GitLab
Provide feedback
Keyboard shortcuts
?
Snippets
Groups
Projects
This is an archived project. Repository and other project resources are read-only.
Show more breadcrumbs
Taddeüs Kroes
licenseplates
Commits
b695b680
Commit
b695b680
authored
13 years ago
by
Jayke Meijer
Browse files
Options
Downloads
Patches
Plain Diff
Some small changes on report.
parent
73992adc
No related branches found
No related tags found
No related merge requests found
Changes
1
Hide whitespace changes
Inline
Side-by-side
Showing
1 changed file
docs/report.tex
+11
-1
11 additions, 1 deletion
docs/report.tex
with
11 additions
and
1 deletion
docs/report.tex
+
11
−
1
View file @
b695b680
...
...
@@ -307,7 +307,17 @@ results.\\
Using a SVM has two steps. First you have to train the SVM, and then you can
use it to classify data. The training step takes a lot of time, so luckily
\texttt
{
libsvm
}
offers us an opportunity to save a trained SVM. This means,
you do not have to train the SVM every time.
you do not have to train the SVM every time.
\\
\\
We have decided to only include a character in the system if the SVM can be
trained with at least 70 examples. This is done automatically, by splitting
the data set in a trainingset and a testset, where the first 70 examples of
a character are added to the trainingset, and all the following examples are
added to the testset. Therefore, if there are not enough examples, all
available examples end up in the trainingset, and non of these characters
end up in the testset, thus they do not decrease our score. However, if this
character later does get offered to the system, the training is as good as
possible, since it is trained with all available characters.
\subsection
{
Supporting Scripts
}
...
...
This diff is collapsed.
Click to expand it.
Preview
0%
Loading
Try again
or
attach a new file
.
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Save comment
Cancel
Please
register
or
sign in
to comment