- Mastering Machine Learning for Penetration Testing
- Chiheb Chebbi
- 82字
- 2021-06-25 21:03:03
Semi-supervised
Semi-supervised learning is an area between the two previously discussed models. In other words, if you are in a situation where you are using a small amount of labeled data in addition to unlabeled data, then you are performing semi-supervised learning. Semi-supervised learning is widely used in real-world applications, such as speech analysis, protein sequence classification, and web content classification. There are many semi-supervised methods, including generative models, low-density separation, and graph-based methods (discrete Markov Random Fields, manifold regularization, and mincut).
推薦閱讀
- MERN Quick Start Guide
- Learning QGIS 2.0
- 農產品物聯網研究與應用
- WordPress 5 Complete
- Practical Web Design
- Mastering TypeScript 3
- 網絡環境中基于用戶視角的信息質量評價研究
- 基于性能的保障理論與方法
- Getting Started with nopCommerce
- Implementing NetScaler VPX?
- 互聯網安全的40個智慧洞見(2016)
- 世界互聯網發展報告2021
- Intelligent Mobile Projects with TensorFlow
- ElasticSearch Server
- 深入理解Kubernetes網絡系統原理