Data Provenance for Agent-Based Models in a Distributed Memory

Author:

Davis Delmar,Featherston Jonathan,Vo Hoa,Fukuda Munehiro,Asuncion Hazeline

Abstract

Agent-Based Models (ABMs) assist with studying emergent collective behavior of individual entities in social, biological, economic, network, and physical systems. Data provenance can support ABM by explaining individual agent behavior. However, there is no provenance support for ABMs in a distributed setting. The Multi-Agent Spatial Simulation (MASS) library provides a framework for simulating ABMs at fine granularity, where agents and spatial data are shared application resources in a distributed memory. We introduce a novel approach to capture ABM provenance in a distributed memory, called ProvMASS. We evaluate our technique with traditional data provenance queries and performance measures. Our results indicate that a configurable approach can capture provenance that explains coordination of distributed shared resources, simulation logic, and agent behavior while limiting performance overhead. We also show the ability to support practical analyses (e.g., agent tracking) and storage requirements for different capture configurations.

Funder

US National Science Foundation

University of Washington

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction,Communication

Reference55 articles.

1. Multi-Agent Systems: An Introduction to Distributed Artificial Intelligence;Ferber,1999

2. Simulating with reactive agents;Ferber,1994

3. Using provenance to manage knowledge of In Silico experiments

4. Why and Where: A Characterization of Data Provenance;Buneman,2001

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