Adaptive stock prediction method of hidden Markov model based on multi-characteristic factor
A prediction method, multi-feature technology, used in data processing applications, character and pattern recognition, instrumentation, etc.
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[0044] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.
[0045] The present invention mainly consists of stock data and HMM. The stock data is the trading day data of the Shanghai and Shenzhen Index from 2007.1.4-2017.4.10. The algorithm is an HMM that assumes first-order Markov and the independence of the state and observation values at the current time point.
[0046] S1 data preparation:
[0047] Step 1: Collect data through Caijing.com, Scapy, and indicator calculation formulas, such as Image 6 shown.
[0048] Step 2: Perform preprocessing such as normalization and regularization on the collected data.
[0049] Step 3: Divide the preprocessed collected stock data into a training data set and a testing data set.
[0050] S2 build model parameters:
[0051] Step 1: Use python's hmmlearn.hmm to learn the internal parameters of the hmm algorithm, which is the core algorithm of this model, usi...
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