利用时态卷积网络检测和处理欺骗行为

Kaushalya Kularatnam, Tania Stathaki
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引用次数: 0

摘要

随着算法交易和电子市场不断改变金融市场的面貌,检测和阻止不法代理以维护公平高效的市场至关重要。大型数据集的爆炸式增长和不断变化的交易技巧使我们很难适应新的市场环境,也很难发现不良行为者。为此,我们提出了一个框架,可以轻松地适应检测市场操纵领域的各种问题。我们的方法要求首先采用标签算法,并利用该算法创建一个训练集,以学习一个弱监督模型,从而识别潜在的可疑订单状态序列。我们的主要目标是学习订单簿的表示方法,以便于对未来事件进行比较。随后,我们提出加入专家评估,以仔细检查特定的标记订单状态。如果专家不在,我们就会对已识别的可疑订单状态采用更复杂的算法。然后,我们在订单簿的任何新表示与专家标记的表示之间进行相似性搜索,对弱学习器的结果进行排序。我们展示了一些初步结果,有望在此方向上进一步探索
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting and Triaging Spoofing using Temporal Convolutional Networks
As algorithmic trading and electronic markets continue to transform the landscape of financial markets, detecting and deterring rogue agents to maintain a fair and efficient marketplace is crucial. The explosion of large datasets and the continually changing tricks of the trade make it difficult to adapt to new market conditions and detect bad actors. To that end, we propose a framework that can be adapted easily to various problems in the space of detecting market manipulation. Our approach entails initially employing a labelling algorithm which we use to create a training set to learn a weakly supervised model to identify potentially suspicious sequences of order book states. The main goal here is to learn a representation of the order book that can be used to easily compare future events. Subsequently, we posit the incorporation of expert assessment to scrutinize specific flagged order book states. In the event of an expert's unavailability, recourse is taken to the application of a more complex algorithm on the identified suspicious order book states. We then conduct a similarity search between any new representation of the order book against the expert labelled representations to rank the results of the weak learner. We show some preliminary results that are promising to explore further in this direction
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