10 Algorithms every Machine Learning Engineer should know - Datahub
Support Vector Machines: SVMs are one of the several examples of supervised ML algorithms dealing with classification. They can be used for either regression or classification, in situations where the training dataset teaches the algorithm about specific classes, so that it can then classify the newly included data. What sets them apart from other algorithms is that they are able to separate classes quicker and with lesser overfitting than several other classification algorithms. A few of the biggest pain points that have been resolved using SVMs are display advertising, image-based gender detection and image classification with large feature sets. These are moderate in their accuracy, as well as their training times, mostly because it assumes linear approximation.
Dec-8-2017, 10:30:35 GMT
- Technology: