- Machine Learning Projects for Mobile Applications
- Karthikeyan NG
- 182字
- 2021-06-10 19:41:37
Unsupervised learning
In this case, you only have input data (x) and no corresponding output variables. The goal for unsupervised learning is to model the underlying structure or distribution in the data in order to learn more about it.
In unsupervised learning, you may not have any data in the beginning. Say for example on the same scenario discussed above in supervised learning, you have a basket full of fruits and you are asked to group them into similar groups. But you don't have any previous data or there are no training or labeling is done earlier. In that case, you need to understand the domain first because you have no idea whether the input is a fruit or not. In that case, you need to first understand all the characteristics of every input and then to try to match with every new input. May be at the final step you might have classified all the red color fruits into one baskets and the green color fruits into another basket. But not an accurate classification. This is called as unsupervised learning.
- 筆記本電腦使用、維護與故障排除實戰
- 施耐德SoMachine控制器應用及編程指南
- INSTANT Wijmo Widgets How-to
- Intel FPGA/CPLD設計(高級篇)
- 3ds Max Speed Modeling for 3D Artists
- INSTANT ForgedUI Starter
- micro:bit魔法修煉之Mpython初體驗
- Mastering Manga Studio 5
- OUYA Game Development by Example
- 微軟互聯網信息服務(IIS)最佳實踐 (微軟技術開發者叢書)
- 基于PROTEUS的電路設計、仿真與制板
- 單片機原理及應用:基于C51+Proteus仿真
- The Deep Learning with PyTorch Workshop
- 筆記本電腦現場維修實錄
- 主板維修實踐技術