Towards Evology: a Market Ecology Agent-Based Model of US Equity Mutual Funds

10/20/2022
by   Aymeric Vie, et al.
0

The profitability of various investment styles in investment funds depends on macroeconomic conditions. Market ecology, which views financial markets as ecosystems of diverse, interacting and evolving trading strategies, has shown that endogenous interactions between strategies determine market behaviour and styles' performance. We present Evology: a heterogeneous, empirically calibrated multi-agent market ecology agent-based model to quantify endogenous interactions between US equity mutual funds, particularly Value and Growth investment styles. We outline the model design, validation and calibration approach and its potential for optimising investment strategies using machine learning algorithms.

READ FULL TEXT
research
02/02/2023

Towards Evology: a Market Ecology Agent-Based Model of US Equity Mutual Funds II

Agent-based models (ABMs) are fit to model heterogeneous, interacting sy...
research
09/15/2020

The impact of social influence in Australian real-estate: market forecasting with a spatial agent-based model

Housing markets are inherently spatial, yet many existing models fail to...
research
03/11/2021

Preventing Extreme Polarization of Political Attitudes

Extreme polarization can undermine democracy by making compromise imposs...
research
04/20/2021

Calibrating an adaptive Farmer-Joshi agent-based model for financial markets

We replicate the contested calibration of the Farmer and Joshi agent bas...
research
03/04/2023

Adaptive Predictive Portfolio Management Agent

The paper presents an advanced version of an adaptive market-making agen...
research
05/29/2020

Machine Learning Fund Categorizations

Given the surge in popularity of mutual funds (including exchange-traded...
research
08/22/2022

A simple learning agent interacting with an agent-based market model

We consider the learning dynamics of a single reinforcement learning opt...

Please sign up or login with your details

Forgot password? Click here to reset