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Machine Learning for Finance
book

Machine Learning for Finance

by James Le, Jannes Klaas
May 2019
Intermediate to advanced
456 pages
11h 38m
English
Packt Publishing
Content preview from Machine Learning for Finance

E2E modeling

Our current approach relies on engineered features. As we discussed at the start of this chapter, an alternative method is E2E modeling. In E2E modeling, both raw and unstructured data about a transaction is used. This could include the description text of a transfer, video feeds from cameras monitoring a cash machine, or other sources of data. E2E is often more successful than feature engineering, provided that you have enough data available.

To get valid results, and to successfully train the data with an E2E model it can take millions of examples. Yet, often this is the only way to gain an acceptable result, especially when it is hard to codify the rules for something. Humans can recognize things in images well, but it is hard to ...

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Publisher Resources

ISBN: 9781789136364Supplemental Content