Support vector machine (SVM) : theory.
Dr. Chirag Shah, PhD, explains the basics behind support vector machines, including the creation of linear and nonlinear hyper-planes to separate data points, support vector classifiers, soft-margin classifiers, and finally using kernels to classify data non-linearly.
| Other Authors: | |
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| Format: | Video |
| Language: | English |
| Language Notes: | Closed-captions in English. |
| Published: |
Somerset :
Chirag Shah,
2018.
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| Series: | Machine Learning for Data Science ;
20. |
| Subjects: | |
| Online Access: | Connect to this streaming video |
| Summary: | Dr. Chirag Shah, PhD, explains the basics behind support vector machines, including the creation of linear and nonlinear hyper-planes to separate data points, support vector classifiers, soft-margin classifiers, and finally using kernels to classify data non-linearly. |
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| Physical Description: | 1 online resource (1 video file (01:03:44)) : sound, colour. |
| ISBN: | 9781526469236 1526469235 |