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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

Document similarity with word embeddings

The practical use case of word vectors is to compare the semantic similarity between documents. If you are a retail bank, insurance company, or any other company that sells to end users, you will have to deal with support requests. You'll often find that many customers have similar requests, so by finding out how similar texts are semantically, previous answers to similar requests can be reused, and your organization's overall service can be improved.

spaCy has a built-in function to measure the similarity between two sentences. It also comes with pretrained vectors from the Word2Vec model, which is similar to GloVe. This method works by averaging the embedding vectors of all the words in a text and then ...

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Publisher Resources

ISBN: 9781789136364Supplemental Content