🌙

限价订单簿中的深度注意力生存分析:基于卷积-Transformer的成交概率估计

Deep attentive survival analysis in limit order books: estimating fill probabilities with convolutional-transformers

Quantitative Finance · 2024
被引 18 · 同刊同年前 4%
人大 BABS 3

中文导读

提出一种基于卷积-Transformer的深度生存分析模型,用于估计限价订单簿中不同层级限价订单的成交时间分布,显著优于传统方法,并分析了特征的重要性。

Abstract

One of the key decisions in execution strategies is the choice between a passive (liquidity providing) or an aggressive (liquidity taking) order to execute a trade in a limit order book (LOB). Essential to this choice is the fill probability of a passive limit order placed in the LOB. This paper proposes a deep learning method to estimate the filltimes of limit orders posted in different levels of the LOB. We develop a novel model for survival analysis that maps time-varying features of the LOB to the distribution of filltimes of limit orders. Our method is based on a convolutional-Transformer encoder and a monotonic neural network decoder. We use proper scoring rules to compare our method with other approaches in survival analysis, and perform an interpretability analysis to understand the informativeness of features used to compute fill probabilities. Our method significantly outperforms those typically used in survival analysis literature. Finally, we carry out a statistical analysis of the fill probability of orders placed in the order book (e.g. within the bid-ask spread) for assets with different queue dynamics and trading activity.

限价订单簿生存分析深度学习市场微观结构成交概率