询价中的可解释人工智能

Qiqin Zhou
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引用次数: 0

摘要

在当代金融领域,准确预测询价(RFQ)成交的可能性对于提高流动性较低的资产类别的市场效率至关重要。本文探讨了如何应用可解释人工智能(XAI)模型来预测询价成功的可能性。通过利用逻辑回归、随机森林、XGBoost 和贝叶斯神经树等先进算法,我们能够提高 RFQ 满足率预测的准确性,并为做市商生成最有效的报价。XAI 是一款强大而透明的工具,可帮助市场参与者更准确地驾驭复杂的 RFQ。
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Explainable AI in Request-for-Quote
In the contemporary financial landscape, accurately predicting the probability of filling a Request-For-Quote (RFQ) is crucial for improving market efficiency for less liquid asset classes. This paper explores the application of explainable AI (XAI) models to forecast the likelihood of RFQ fulfillment. By leveraging advanced algorithms including Logistic Regression, Random Forest, XGBoost and Bayesian Neural Tree, we are able to improve the accuracy of RFQ fill rate predictions and generate the most efficient quote price for market makers. XAI serves as a robust and transparent tool for market participants to navigate the complexities of RFQs with greater precision.
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