ML-Based Predictive Modelling of Stock Market Returns
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作者:
Bogdanova, Boryana
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Sofia Univ St Kliment Ohridski, Fac Econ & Business Adm, Dept Stat & Econometr, 125 Tsarigradsko Shose Blvd,Block 3, Sofia 1113, BulgariaSofia Univ St Kliment Ohridski, Fac Econ & Business Adm, Dept Stat & Econometr, 125 Tsarigradsko Shose Blvd,Block 3, Sofia 1113, Bulgaria
Bogdanova, Boryana
[1
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Stancheva-Todorova, Eleonora
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Sofia Univ St Kliment Ohridski, Fac Econ & Business Adm, Dept Finance & Accounting, 125 Tsarigradsko Shose Blvd,Block 3, Sofia 1113, BulgariaSofia Univ St Kliment Ohridski, Fac Econ & Business Adm, Dept Stat & Econometr, 125 Tsarigradsko Shose Blvd,Block 3, Sofia 1113, Bulgaria
Stancheva-Todorova, Eleonora
[2
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机构:
[1] Sofia Univ St Kliment Ohridski, Fac Econ & Business Adm, Dept Stat & Econometr, 125 Tsarigradsko Shose Blvd,Block 3, Sofia 1113, Bulgaria
[2] Sofia Univ St Kliment Ohridski, Fac Econ & Business Adm, Dept Finance & Accounting, 125 Tsarigradsko Shose Blvd,Block 3, Sofia 1113, Bulgaria
Many recent papers conclude on short-term profitable patterns based on trading strategies relying on the belief that best (worst) performing securities over the past short-term period tend to continue to perform well (poorly) over the subsequent period of up to 12 months. Along with exploiting past price patterns, ever since the early 1980s the researchers' attention is drawn on the usefulness of company financial statements in predicting stock market returns. We argue on the necessity to develop a framework that would enable investors to support their everyday decisions by taking into account information retrieved from financial statements in an automated manner We propose an ML-based AI system that inputs historic price information as well as information on a number of balance sheet items, profit and loss items, and cash flow items for the company of interest and predicts the probability of its stock price going down in the next period. The prediction relies on a dynamic automated selection of significant accounting and historic features. Tracking the dynamics in the structure of significant features could shed additional light on company specific issues that might be taken into account by investors when making their decisions.
机构:
James Madison Univ, Dept Finance & Business Law, Harrisonburg, VA 22807 USAJames Madison Univ, Dept Finance & Business Law, Harrisonburg, VA 22807 USA
Chowdhury, Jaideep
Sonaer, Gokhan
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Duquesne Univ, Dept Finance, Palumbo Donahue Sch Business, Pittsburgh, PA 15219 USAJames Madison Univ, Dept Finance & Business Law, Harrisonburg, VA 22807 USA
Sonaer, Gokhan
Celiker, Umut
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Cleveland State Univ, Dept Finance, Cleveland, OH 44115 USAJames Madison Univ, Dept Finance & Business Law, Harrisonburg, VA 22807 USA
机构:
Finance Department, Strome College of Business, Old Dominion University, 2125 Constant Hall, Norfolk, 23529, VAFinance Department, Strome College of Business, Old Dominion University, 2125 Constant Hall, Norfolk, 23529, VA