On-line portfolio selection with moving average reversion
On-line portfolio selection has attracted increasing interests in machine learning and AI communities recently. Empirical evidences show that stock's high and low prices are temporary and stock price relatives are likely to follow the mean reversion phenomenon. While the existing mean reversion...
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sg-smu-ink.sis_research-33402020-04-02T07:07:06Z On-line portfolio selection with moving average reversion LI, Bin HOI, Steven C. H. On-line portfolio selection has attracted increasing interests in machine learning and AI communities recently. Empirical evidences show that stock's high and low prices are temporary and stock price relatives are likely to follow the mean reversion phenomenon. While the existing mean reversion strategies are shown to achieve good empirical performance on many real datasets, they often make the single-period mean reversion assumption, which is not always satisfied in some real datasets, leading to poor performance when the assumption does not hold. To overcome the limitation, this article proposes a multiple-period mean reversion, or so-called Moving Average Reversion (MAR), and a new on-line portfolio selection strategy named "On-Line Moving Average Reversion" (OLMAR), which exploits MAR by applying powerful online learning techniques. From our empirical results, we found that OLMAR can overcome the drawback of existing mean reversion algorithms and achieve significantly better results, especially on the datasets where the existing mean reversion algorithms failed. In addition to superior trading performance, OLMAR also runs extremely fast, further supporting its practical applicability to a wide range of applications 2012-07-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/2340 https://ink.library.smu.edu.sg/context/sis_research/article/3340/viewcontent/On_Line_Portfolio_Selection_with_Moving_Average_Reversion.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Data sets Empirical evidence Empirical performance Mean reversion Moving averages Online learning Portfolio selection Computer Sciences Databases and Information Systems Portfolio and Security Analysis Theory and Algorithms |
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Data sets Empirical evidence Empirical performance Mean reversion Moving averages Online learning Portfolio selection Computer Sciences Databases and Information Systems Portfolio and Security Analysis Theory and Algorithms LI, Bin HOI, Steven C. H. On-line portfolio selection with moving average reversion |
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On-line portfolio selection has attracted increasing interests in machine learning and AI communities recently. Empirical evidences show that stock's high and low prices are temporary and stock price relatives are likely to follow the mean reversion phenomenon. While the existing mean reversion strategies are shown to achieve good empirical performance on many real datasets, they often make the single-period mean reversion assumption, which is not always satisfied in some real datasets, leading to poor performance when the assumption does not hold. To overcome the limitation, this article proposes a multiple-period mean reversion, or so-called Moving Average Reversion (MAR), and a new on-line portfolio selection strategy named "On-Line Moving Average Reversion" (OLMAR), which exploits MAR by applying powerful online learning techniques. From our empirical results, we found that OLMAR can overcome the drawback of existing mean reversion algorithms and achieve significantly better results, especially on the datasets where the existing mean reversion algorithms failed. In addition to superior trading performance, OLMAR also runs extremely fast, further supporting its practical applicability to a wide range of applications |
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LI, Bin HOI, Steven C. H. |
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LI, Bin HOI, Steven C. H. |
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LI, Bin |
title |
On-line portfolio selection with moving average reversion |
title_short |
On-line portfolio selection with moving average reversion |
title_full |
On-line portfolio selection with moving average reversion |
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On-line portfolio selection with moving average reversion |
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On-line portfolio selection with moving average reversion |
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on-line portfolio selection with moving average reversion |
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Institutional Knowledge at Singapore Management University |
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2012 |
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https://ink.library.smu.edu.sg/sis_research/2340 https://ink.library.smu.edu.sg/context/sis_research/article/3340/viewcontent/On_Line_Portfolio_Selection_with_Moving_Average_Reversion.pdf |
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