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Stock data analysis method based on price linkage network

A data analysis and price technology, applied in the field of data analysis, can solve problems such as lack of screening of historical data, difficulty in the stock market, and high computational complexity

Active Publication Date: 2013-09-04
南京大学镇江高新技术研究院
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  • Abstract
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  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

If there is a fair game, it is difficult to accurately estimate the future trend of a stock based only on the historical price series of a single stock
At present, stock data prediction methods based on association rules have been more and more researched and applied, bu

Method used

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  • Stock data analysis method based on price linkage network
  • Stock data analysis method based on price linkage network
  • Stock data analysis method based on price linkage network

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Embodiment Construction

[0031] figure 1 Shown is the overall technical framework of the stock recommendation method based on the price linkage network. The input of the method is the price data of all stocks in the stock market in the near future, and the output of the method is the appreciation expectation and related recommendations of each stock in the near future. The method of the present invention includes three modules: firstly, according to the stock price data, the linkage relationship between stock prices is calculated, and the price linkage network is constructed with the stock as a node and the linkage relationship as an edge; then in the price linkage network, according to the stock price The weight of the parent node set within two hops of the node, the stock price trend, and the linkage relationship is used to calculate the appreciation expectation of the stock node.

[0032] The first module of the method of the present invention is to build a price linkage network, the execution pro...

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Abstract

The invention discloses a stock data analysis method based on a price linkage network. The method comprises the following steps that (1), stock price data is collected, the linkage relationship among the stock prices is calculated, and the price linkage network is built by using the stocks as nodes and the linkage relationship as the edge; (2), in the price linkage network, the upvaluation expectations of the stock nodes are calculated according to the parent node set in two hops of the stock nodes, the stock price trends and the linkage relationship weight; and (3), the stocks are sequenced according to the upvaluation expectations. According to the method, the linkage relationship among the stock prices is sufficiently excavated, the upvaluation expectations of each stock in the recent period can be reasonably judged according to the price fluctuation condition of the stock market, and the fair game problem possibly met in the single stock price trend prediction can be effectively avoided. The method has the characteristics that the calculation is simple, the timeliness, the flexibility and the expansion performance are realized, the processing quantity on the stock historical data is small, and the method is applicable to the stock market with the characteristics of great data quantity and frequent price fluctuation.

Description

technical field [0001] The invention relates to a data analysis method, in particular to a stock data analysis method based on a price linkage network, which is used to predict stock price trends. Background technique [0002] Stock investment requires a reasonable prediction of the direction and possibility of the stock's future trend. In the stock market, there are many factors that can affect stock prices, including economic environment, national policies, buyer psychology, etc., making it difficult to accurately grasp the characteristics of stock price trends. Stock trading has accumulated a large amount of historical data. The common method is to analyze and process historical data, mine the relationship between data, find out the law of change and establish a mathematical model, and predict the stock price trend on this basis. [0003] Existing stock price data prediction methods can be divided into two categories: one is based on statistical theory-based single stock...

Claims

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Application Information

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IPC IPC(8): G06Q10/04G06Q40/00
Inventor 顾庆张鑫博蒋智威陈道蓄
Owner 南京大学镇江高新技术研究院
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