Difference between revisions of "Class"

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|description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools  
 
|description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools  
 
}}
 
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http://courses.nvidia.com/dashboard
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https://courses.nvidia.com/dashboard
  
* [http://www.google.com/search?q=Yuval+Mazor+%40nividia.com&oq=Yuval+Mazor+%40nividia.com&aqs=chrome..69i57j69i58.9126j0j8&sourceid=chrome&ie=UTF-8 Yuval Mazor | NVIDIA]
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* [https://www.google.com/search?q=Yuval+Mazor+%40nividia.com&oq=Yuval+Mazor+%40nividia.com&aqs=chrome..69i57j69i58.9126j0j8&sourceid=chrome&ie=UTF-8 Yuval Mazor | NVIDIA]
  
 
Jupyer notebooks:  Shift+Enter to run cell
 
Jupyer notebooks:  Shift+Enter to run cell
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                     ... not a fixed vector size
 
                     ... not a fixed vector size
  
* [http://nlp.stanford.edu/projects/glove/ GloVe]
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* [https://nlp.stanford.edu/projects/glove/ GloVe]
* [http://fasttext.cc/ Fasttext]
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* [https://fasttext.cc/ Fasttext]
* [http://www.slideshare.net/chartbeat/mockup-infographicv4-27900399 News articles per day]
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* [https://www.slideshare.net/chartbeat/mockup-infographicv4-27900399 News articles per day]
* [http://github.com/philipperemy/financial-news-dataset News data source]
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* [https://github.com/philipperemy/financial-news-dataset News data source]
* [http://www.analyticsvidhya.com/blog/2017/06/word-embeddings-count-word2veec/ Word embeddings]
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* [https://www.analyticsvidhya.com/blog/2017/06/word-embeddings-count-word2veec/ Word embeddings]
* [http://en.wikipedia.org/wiki/Natural-language_processing Natural Language Processing]  
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* [https://en.wikipedia.org/wiki/Natural-language_processing Natural Language Processing]  
* [http://en.wikipedia.org/wiki/Sentiment_analysis Sentiment Analysis]
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* [https://en.wikipedia.org/wiki/Sentiment_analysis Sentiment Analysis]
  
 
= Deep Autoencoders for Anomaly Detection =
 
= Deep Autoencoders for Anomaly Detection =

Revision as of 19:22, 27 March 2023

https://courses.nvidia.com/dashboard

Jupyer notebooks: Shift+Enter to run cell


Linguistic Concepts

  • conference - anaphors
  • gang of four design
  • null subject
  • recursion

Word Embeddings

  • HMMS, CRF, PGMs
    • CBoW -Bag of Words / ngrams - feature per word/n items
    • 1-hot Sparse input - create a vector the size of the entire vocabulary
  • Stop Words
  • TF-IDF

Word2Vec

Skip-Gram


  • Firth 1957 Distributional Hypotheses
  • Word Cloud
    • Text Classification
    • Text/Machine Translation (MNT)

Financial News

Tools:

  • Glove
    • dot product
  • FastText
    • Skipgram
    • Continuous bag of words

Multi-channel LSTM Network Keras wih TensorFlow Utilize the GloVe and FastText Skipgram pretrained embeddings, allows he underlying network to access larger feature space to build complex features on top of.

Can use utilize combinations of various corpus and embedding methods for better performance

Bidirectional LSTM network is used o encode sequential information on the embedding layers.

Dense layer to project final output classification

Use embedding... embeddings = transfer learning

? CNN vs BI-LSTM (RNN) this approach, BI-LSTM does not need a lot of data

Attention mechanism -- translate ... you can look back

                   ... not a fixed vector size

Deep Autoencoders for Anomaly Detection

Variable Autoencoders

  • clustering - latent layers may tell you what number of clusters
  • anomaly detection

https://courses.nvidia.com/courses/course-v1:DLI+L-FI-06+V1/info

PCA or TSenee


Statistical Arbitrage

arbitrage - monies, stocks (price is better than it should be - fair market value) how right, or how rich? Mean inversion Autoencoder learn the fair market value, then feed in current value

reconstruction error is a signal - just one signal, consider a basket of signals

backtesting - if we run this on previous historical events how well does our algorithm work? (don't use training data !!)

Using Pandas... ori_dataset_categ_transformed.head(10) for i, val in enumerate(list(ori_dataset_categ_transformed.iloc[1])):

   if val is 1:
       print("Got 1 at {}".format(i))