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Search results for lstm keras neural networks
keras-neural-networks
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8 search results found
Predictive Maintenance Using Lstm
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507
Example of Multiple Multivariate Time Series Prediction with LSTM Recurrent Neural Networks in Python with Keras.
Keras_generative_pg
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73
A Deep Generative Framework for Paraphrase Generation Implementaion
Lstm Text Generation
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70
Tons of fun with text and recurrent neural networks! Let your computer read a book and tell you its own story. 🤣
Human Activity Recognition
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44
Classifying the physical activities performed by a user based on accelerometer and gyroscope sensor data collected by a smartphone in the user’s pocket. The activities to be classified are: Standing, Sitting, Stairsup, StairsDown, Walking and Cycling.
Recurrent Neural Network For Bitcoin Price Prediction
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36
Recurrent Neural Network (LSTM) by using TensorFlow and Keras in Python for BitCoin price prediction
Stock_price_predictor
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7
Stock Price Predictor with Deep Learning
Operation Prediction
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6
Takes a question predicts the operation between them
Analysing Imdb Reviews Using Glove And Lstm
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6
Using the IMDB data found in Keras here a few algorithms built with Keras. The source code is from Francois Chollet's book Deep learning with Python. The aim is to predict whether a review is positive or negative just by analyzing the text. Both self-created as well as pre-trained (GloVe) word embeddings are used. Finally there's a LSTM model and the accuracies of the different algorithms are compared. For the LSTM model I had to cut the data sets of 25.000 sequences by 80% to 5.000, since my l
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1-8 of 8 search results
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