知识驱动的自主商品交易顾问

Yee Pin Lim, Shih-Fen Cheng
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引用次数: 8

摘要

近十年来,由于算法交易的激增,金融交易是一门艺术的神话基本上被摧毁了。在股票市场,就交易量而言,算法交易已经超越了人类交易员。这种趋势似乎是不可逆转的,其他资产类别也迅速成为机器交易员的主导。然而,对于需要对实物有更深理解的资产,比如大宗商品交易,人类交易者仍然比机器有明显的优势。在这样的市场中,人类交易者的主要优势是定性的专家知识,这要求交易者不仅要考虑财务信息,还要考虑各种各样的物理约束和信息。然而,由于快速的技术变革和现金充裕的对冲基金的“入侵”,即使是这种传统上以人为中心的资产类别,在应对日益复杂和动荡的环境时也在寻求帮助。在本文中,我们提出了一个自适应交易支持框架,使我们能够量化专家的知识来帮助人类交易者。该方法基于双状态切换卡尔曼滤波器,利用实时信息不断更新其状态估计。我们证明了我们的方法在棕榈油贸易中的有效性,近年来,由于棕榈油在生物燃料生产中的新用途,棕榈油贸易变得越来越复杂。研究表明,与传统的单态计量模型相比,经专家领域知识调整的双态切换卡尔曼滤波器可以有效地减少预测误差。通过一个简单的反向测试,我们也证明了即使预测误差的轻微减少也可以导致朴素交易算法的交易性能的显着提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge-Driven Autonomous Commodity Trading Advisor
The myth that financial trading is an art has been mostly destroyed in the recent decade due to the proliferation of algorithmic trading. In equity markets, algorithmic trading has already bypass human traders in terms of traded volume. This trend seems to be irreversible, and other asset classes are also quickly becoming dominated by the machine traders. However, for asset that requires deeper understanding of physicality, like the trading of commodities, human traders still have significant edge over machines. The primary advantage of human traders in such market is the qualitative expert knowledge that requires traders to consider not just the financial information, but also a wide variety of physical constraints and information. However, due to rapid technology changes and the "invasion" of cash-rich hedge funds, even this traditionally human-centric asset class is crying for help in handling increasingly complicated and volatile environment. In this paper, we propose an adaptive trading support framework that allows us to quantify expert's knowledge to help human traders. Our method is based on a two-state switching Kalman filter, which updates its state estimation continuously with real-time information. We demonstrate the effectiveness of our approach in palm oil trading, which is becoming more and more complicated in recent years due to its new usage in producing biofuel. We show that the two-state switching Kalman filter tuned with expert domain knowledge can effectively reduce prediction errors when compared against traditional single-state econometric models. With a simple back test, we also demonstrate that even a slight decrease in the prediction errors can lead to significant improvement in the trading performance of a naive trading algorithm.
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