This repository contains `JPX Tokyo Stock Exchange Prediction`.
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Updated
Sep 13, 2022 - Python
This repository contains `JPX Tokyo Stock Exchange Prediction`.
Made the stock prices to be predicted from a 5 years dataset from TIINGO of APPLE company and worked on the next 30-day prediction. The final output made after applying 3 stacked layers of LSTM and a dense layer gave me a model with a rmse value of 284.
This is a repo that compares the vanilla, stacked, CNN, encoder-decoder, bidirectional LSTMs
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