Machine learning in trading: theory, models, practice and algo-trading - page 589

 
Vladimir Perervenko:

There is a fresh, good book on deep learning. Unfortunately I can't openly link to it, it's on rutracker.org.

Deep Learning.
Year of publication: 2018
Author: Nikolenko S. I., Kadurin A. A., Arkhangelskaya E. О.
Genre or topic: Neural networks
Publisher: Peter
Series: Library of Programmer
ISBN: 978-5-496-02536-2
Language: Russian
Format: PDF
Quality: Recognized text with errors (OCR)
Interactive table of contents: No
Number of pages: 479

Thank you. If you have a link, please send it to me. Not looking for it yet.
 
Yuriy Asaulenko:
Thank you. If you have a link, please send it to me. Not looking for it yet.
Good luck
 
Yuriy Asaulenko:
Classification defines a point in time where a trade is only statistically promising. Well, it's not a forecast. Rather, it is more like pattern recognition.

Once again: the combination of predictors says that there will be a long before the next clause. Naturally, the VARIETY of such an event is determined, but that probability is divided into two classes (with a binary teacher). You can go 50/50, you can go the other way.

This is not a prediction?

 
Yuriy Asaulenko:
Thank you. If you have a link to throw in a private message, please. Not looking for it yet.

Search here.

For a fee. The mentioned book costs 10 rubles. So it is official.

Downloaded it for you, but I can not attach - too big file (18mb).

[Deleted]  
SanSanych Fomenko:

Search here.

For a fee. The mentioned book costs 10 rubles. So it is official.

I downloaded it for you, but I can not attach - too big file (18mb).


But download to Ya or G disc plz, also read

 
Maxim Dmitrievsky:

But upload to me or G-disk please, I'll read it too.

Seems to be here

[Deleted]  
SanSanych Fomenko:

I think it 's here.


Yes, thank you :) it was recommended to me too, by the way.

 
Vladimir Perervenko:

There is a fresh, good book on deep learning. Unfortunately, I can't give an open link, it was uploaded to rutracker.org.

In-Depth Learning.
Year of publication: 2018
Author: Nikolenko S. I., Kadurin A. A., Arkhangelskaya E. O.
Genre or theme: Neural networks
Publisher: Peter
Series: Programmer's Library
ISBN: 978-5-496-02536-2
Language: Russian
Format: PDF
Quality: Recognized text with errors (OCR)
Interactive table of contents: No
Number of pages: 479

I looked through it, read something diagonally.

Overall impression:

The book is not bad, with concrete examples in Python in each chapter. Just started doing Ruthon, and the choice of subject libraries is a problem. Of course, the choice is not limited to TensorFlow, but the actual Python code gives a lot.

Issues missing from other books are covered. Translated literature on the subject is clearly scarce right now. In particular, incomplete and convolutional nets. Something I have also recently started to deal with.

On the disadvantages, perhaps, a lot of general reasoning. I do not speak about a historical excursus starting from Wiener and Turing.

Perhaps the foreign (translated) books are better. Once again, this book is still very good from the beginning of time (from the 90's).

[Deleted]  

chapters 9,10 are fiery, q-learning and probabilsitic NN

just what you need... by the way, Heikin also has

 
Maxim Dmitrievsky:

chapters 9,10 are fiery, q-learning and probabilsitic NN

just what you need... by the way, Haikin also has

Heikin has incomplete connections as well - see Neuron Connections Exclusion. What's the point. There are no ready-to-use algorithms, and even if there are, they are buried somewhere deep inside.