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Proceedings ArticleDOI

A New Approach of Stock Price Prediction Based on Logistic Regression Model

Jibing Gong, +1 more
- pp 1366-1371
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TLDR
A new approach based on Logistic Regression to predict stock price trend of next month according to current month, which is lower in complexity and better accuracy in prediction.
Abstract
In our economic society, future stock price trend is very hot focus that the investors concern about. Challenges still exist in stock price prediction model regarding significant time-effectiveness of prediction, the complexity of methods and selection of feature index variables. In this paper, we present a new approach based on Logistic Regression to predict stock price trend of next month according to current month. Characteristics of our method include: (1) Feature Index Variables are easy to both understand for the private investor and obtain from daily stock trading information. (2) the prediction procedure includes unique and crucial operation of selecting optimizing prediction parameters. (3) significant time-effectiveness and strong purposefulness enable users predict stock price trend of next month just through considering current monthly financial data instead of needing a long term procedure of analyzing and collecting financial data. Shenzhen Development stock A (SDSA) from RESSET Financial Research Database is chosen as a study case. The SDSA’s daily integrated data of three years from 2005 to 2007 is used to train and test our model. Our experiments show that prediction accuracies reach as high as at least 83%. In contrast to other methods, e.g. RBF-ANN prediction model, our model is lower in complexity and better accuracy in prediction.

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References
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Journal ArticleDOI

Neural network credit scoring models

TL;DR: Results demonstrate that the multilayer perceptron may not be the most accurate neural network model, and that both the mixture-of-experts and radial basis function neural network models should be considered for credit scoring applications.
Book ChapterDOI

Combining News and Technical Indicators in Daily Stock Price Trends Prediction

TL;DR: A system that combines the information from both related news releases and technical indicators to enhance the predictability of the daily stock price trends is presented, which shows that this system can achieve higher accuracy and return than a single source system.
Journal ArticleDOI

A comparison of forecasting models of the volatility in Shenzhen Stock Market

TL;DR: Based on the weekly closing price of Shenzhen Integrated Index, Wang et al. as discussed by the authors studied the volatility of the Shenzhen stock market using three different models: Logistic, AR(1) and AR(2).
Journal Article

An Application of Logistic Regression Model in Credit Risk Analysis

TL;DR: In this paper, a Logistic regression credit evaluation model by running SPSS software is used to classify the 106 listed companies of China iin 2000 into two patterns: bad group and normal group.
Proceedings ArticleDOI

An application of logistic model in stock forecasting

TL;DR: The results prove that most of the results are reasonably exact, whereas only several forecasting outcome produce a little deviation, while only the results of RMSE have a little error.
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