Market Impact in Trader-Agents: Adding Multi-Level Order-Flow Imbalance-Sensitivity to Automated Trading Systems
Zhen Zhang, Dave Cliff

TL;DR
This paper enhances automated trading agents by integrating multi-level order-flow imbalance sensitivity, leading to more realistic market impact effects in simulated markets, and critiques previous imbalance measures for robustness.
Contribution
It introduces a robust multi-level order-flow imbalance measure for trader-agents, improving their market impact simulation over prior methods.
Findings
Imbalance-sensitive trader-agents exhibit market impact effects.
The new measure outperforms previous imbalance metrics.
Enhanced agents are suitable for impact-aware trading environments.
Abstract
Financial markets populated by human traders often exhibit "market impact", where the traders' quote-prices move in the direction of anticipated change, before any transaction has taken place, as an immediate reaction to the arrival of a large (i.e., "block") buy or sell order in the market: e.g., traders in the market know that a block buy order will push the price up, and so they immediately adjust their quote-prices upwards. Most major financial markets now involve many "robot traders", autonomous adaptive software agents, rather than humans. This paper explores how to give such trader-agents a reliable anticipatory sensitivity to block orders, such that markets populated entirely by robot traders also show market-impact effects. In a 2019 publication Church & Cliff presented initial results from a simple deterministic robot trader, ISHV, which exhibits this market impact effect via…
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