纽约证券交易所股票价格预测的模型比较

IF 0.3 Q4 MATHEMATICS
Victoria Switlyk, Junfeng Shang
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引用次数: 0

摘要

股票市场是投资和经济不可分割的一部分。股票价格的预测是一个令人兴奋和具有挑战性的问题,由于市场的复杂性和噪音,以及从准确的预测中可以产生的潜在利润,许多人都考虑过这个问题。我们的目标是构建和比较用于预测纽约证券交易所(NYSE)一些顶级股票的每周收盘价的模型,并讨论股票价格与预测变量之间的关系。本研究探讨的关系包括宏观经济变量(如联邦基金利率和M1货币供应量)和市场指数(如芝加哥期权交易所波动率指数、Wilshire 5000总市值指数、芝加哥期权交易所10年期国库券和债券利率)以及纽交所商品指数(包括xxi和HUI)。采用回归分析和时间序列分析方法建立模型。通过考虑模型的预测能力、准确性、对模型基本假设的拟合以及在应用中的有用性,对模型进行分析和比较。最后考虑的模型是一个涉及所有股票每周收盘价中位数的混合回归模型,一个考虑每个个股每周收盘价的变截距模型,以及一个基于过去价格预测每周收盘价中位数的ARIMA时间序列模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Comparison for the Prediction of Stock Prices in the NYSE
The stock market is an integral part of investments as well as the economy. The prediction of stock prices is an exciting and challenging problem that has been considered by many due to the complexity and noise within the market and to the potential profit that can be yielded from accurate predictions. We aim to construct and compare models used for the prediction of weekly closing prices for some of the top stocks in the New York Stock Exchange (NYSE) and to discuss the relationship between stock prices and the predictor variables. Relationships explored in the study include that with macroeconomic variables such as the Federal Funds Rate and the M1 money supply and market indexes such as the CBOE Volatility Index, the Wilshire 5000 Total Market Full Cap Index, the CBOE interest rate for 10-year T-notes and bonds, and NYSE commodity indexes including XOI and HUI. Models are built using methods of regression analysis and time series analysis. Models are analyzed and compared with one another by considering their predictive ability, accuracy, fit to the underlying model assumptions, and usefulness in application. The final models considered are a pooled regression model involving the median weekly closing price across all stocks, a varying intercept model considering the weekly closing price for each individual stock, and an ARIMA time series model that predicts the median weekly closing stock price based on past prices.
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CiteScore
0.70
自引率
33.30%
发文量
0
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