View RSS Feed

mql5

Quantization in machine learning (Part 1): Theory, sample code, analysis of implementation in CatBoost

Rate this Entry
by , 10-20-2024 at 04:29 PM (186 Views)
      
   
The article considers the theoretical application of quantization in the construction of tree models No complex mathematical equations are used. While writing the article, I discovered the absence of established unified terminology in the scientific works of different authors, so I will choose the terminology options that, in my opinion, best reflect the meaning. Besides, I will use the terms of my own in the matters left unattended by other researchers. This article will use terms and concepts I have previously described in the article "CatBoost machine learning algorithm from Yandex without learning Python or R". Therefore, I recommend that you familiarize yourself with it before reading the current article.
more...

Submit "Quantization in machine learning (Part 1): Theory, sample code, analysis of implementation in CatBoost" to Google Submit "Quantization in machine learning (Part 1): Theory, sample code, analysis of implementation in CatBoost" to del.icio.us Submit "Quantization in machine learning (Part 1): Theory, sample code, analysis of implementation in CatBoost" to Digg Submit "Quantization in machine learning (Part 1): Theory, sample code, analysis of implementation in CatBoost" to reddit

Categories
Uncategorized

Comments