Calibrating Agent-Based Models of Innovation Diffusion with Gradient

Florian Kotthoff, Thomas Hamacher

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

Consumer behavior and the decision to adopt an innovation are governed by various motives, which models find difficult to represent. A promising way to introduce the required complexity into modeling approaches is to simulate all consumers individually within an agent-based model (ABM). However, ABMs are complex and introduce new challenges. Especially the calibration of empirical ABMs was identified as a key difficulty in many works. In this work, a general ABM for simulating the Diffusion of Innovations is described. The ABM is differentiable and can employ gradient-based calibration methods, enabling the simultaneous calibration of large numbers of free parameters in large-scale models. The ABM and calibration method are tested by fitting a simulation with 25 free parameters to the large data set of privately owned photovoltaic systems in Germany, where the model achieves a coefficient of determination of R2 ≃ 0.7.

Original languageEnglish
Article number4
JournalJASSS
Volume25
Issue number3
DOIs
StatePublished - 30 Jun 2022

Keywords

  • Adoption Model
  • Agent-Based Modeling
  • Calibration
  • DecisioMaking
  • Innovation Diffusion
  • Multi-Agent Simulation

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