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An innovative neural network approach for stock market prediction
X. Pang
, Y. Zhou
, P. Wang
, W. Lin
, V. Chang
Research output
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Contribution to journal
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Article
›
peer-review
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Keyphrases
Neural Network Method
100%
Stock Price Prediction
100%
Long Short-term Memory Neural Network
100%
Embedding Layer
75%
Stock Market
50%
DLSTM
50%
Automatic Encoder
50%
World Wide Web
25%
Neural Network
25%
Multimedia
25%
Historical Data
25%
Random Selection
25%
Online Analysis
25%
Financial Analysis
25%
Deep Learning
25%
Selection Problem
25%
Neural Network Algorithm
25%
Stock Prices
25%
Individual Stocks
25%
A-shares
25%
Stocks Vector
25%
Stock Index
25%
Market Characteristics
25%
Single Index
25%
Traditional Neural Network
25%
Livestock Markets
25%
Word Vector
25%
Composite Index
25%
Stock Analysis
25%
Computer Science
Long Short-Term Memory Neural Network
100%
Neural Network Approach
100%
Experimental Result
25%
Neural Network
25%
Multimedia
25%
Historical Data
25%
Random Selection
25%
Individual Stock
25%
Deep Learning Method
25%
Artificial Neural Network
25%
Engineering
Neural Network Approach
100%
Long Short-Term Memory
100%
Experimental Result
25%
Random Selection
25%
Historical Data
25%
Deep Learning Method
25%
Artificial Neural Network
25%
Chemical Engineering
Neural Network
100%
Long Short-Term Memory
50%
Deep Learning Method
12%