“Lantian Li 15-04-20”版本间的差异
来自cslt Wiki
(以“Weekly Summary 1. Prepare to construct a cohort-based SVM classifier on score-level. 2. Using the "Elbow method" to determine the number of clusters under K-means...”为内容创建页面) |
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第1行: | 第1行: | ||
Weekly Summary | Weekly Summary | ||
− | 1. | + | 1. Search for discriminative features for the cohort-based SVM classifier. |
− | + | We select orignal score, t-norm score, relative ranking, cohort-score, cohort-subtraction-score(delta-score). | |
− | + | 2. Verify the discriminative ability of the relative ranking and delta-score. | |
− | 3. Help Pro.Zheng collect | + | Results show that these two features can be applied for SVM classification. |
+ | |||
+ | The best performance is obtained when SVM input feature is made up of orignal score, t-norm score, relative ranking and delta-score. | ||
+ | |||
+ | 3. Help Pro.Zheng collect digit speech. | ||
Next Week | Next Week | ||
− | 1. Go on the task 1. | + | 1. Go on the task 1 and 2. |
2015年4月20日 (一) 14:34的版本
Weekly Summary
1. Search for discriminative features for the cohort-based SVM classifier.
We select orignal score, t-norm score, relative ranking, cohort-score, cohort-subtraction-score(delta-score).
2. Verify the discriminative ability of the relative ranking and delta-score.
Results show that these two features can be applied for SVM classification.
The best performance is obtained when SVM input feature is made up of orignal score, t-norm score, relative ranking and delta-score.
3. Help Pro.Zheng collect digit speech.
Next Week
1. Go on the task 1 and 2.