- Hands-On Markov Models with Python
- Ankur Ankan Abinash Panda
- 91字
- 2021-07-23 19:12:00
Preface
Using Hidden Markov Models (HMMs) is a technique for modeling Markov processes with unobserved states. They are a special case of Dynamic Bayesian Networks (DBNs) but have been found to perform well in a wide range of problems. One of the areas where HMMs are used a lot is speech recognition because HMMs are able to provide a very natural way to model speech data. This book starts by introducing the theoretical aspects of HMMs from the basics of probability theory, and then talks about the different applications of HMMs.
推薦閱讀
- Arduino入門基礎(chǔ)教程
- FPGA從入門到精通(實(shí)戰(zhàn)篇)
- Applied Unsupervised Learning with R
- 3ds Max Speed Modeling for 3D Artists
- Mastering Manga Studio 5
- 筆記本電腦維修不是事兒(第2版)
- 嵌入式系統(tǒng)中的模擬電路設(shè)計(jì)
- Hands-On Artificial Intelligence for Banking
- Hands-On Motion Graphics with Adobe After Effects CC
- FreeSWITCH Cookbook
- 單片機(jī)原理與技能訓(xùn)練
- 單片機(jī)項(xiàng)目設(shè)計(jì)教程
- Building Machine Learning Systems with Python
- 微服務(wù)實(shí)戰(zhàn)
- 筆記本電腦現(xiàn)場(chǎng)維修實(shí)錄