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School of something FACULTY OF OTHER School of Geography FACULTY OF ENVIRONMENT Extending spatial interaction models with agents for understanding relationships in a dynamic retail market Alison Heppenstall & Mark Birkin University of Leeds Presenter: Andrew Evans
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School of Geography FACULTY OF ENVIRONMENT Overview An agent-based retail model – review An agent-based retail model – extension Experiments with an extended ABRM Future plans and reflections
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School of Geography FACULTY OF ENVIRONMENT Complex Geographical Systems Characteristics of a geographical system: Dynamic, nonlinear relationships among a multitude of components Complex, recursive or highly iterative interactions among components Evolve dynamically over time and space Exhibit chaotic and potentially self-organising behaviour Retail Petrol Market Highly competitive and sensitive market. Complex system: Internal, external factors. Effects of locality. Petrol brands operate unique rule sets? Networks of information geographically constrained?
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School of Geography FACULTY OF ENVIRONMENT Spatial Diffusion: Price Drop
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School of Geography FACULTY OF ENVIRONMENT
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School of Geography FACULTY OF ENVIRONMENT Agent-based retail model About 1000 people
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School of Geography FACULTY OF ENVIRONMENT Agent-based retail model Weighting for price and distance Portion of total fuel sold in this ward The greater the distance and price, the closer the weighting to zero
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School of Geography FACULTY OF ENVIRONMENT Agent-based retail model
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School of Geography FACULTY OF ENVIRONMENT ‘What if?’ analysis: aggressive drop t1 t4t2 t3
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School of Geography FACULTY OF ENVIRONMENT Agent-based retail model: Version 2 New agent rules Attraction = floorspace, not price Standard retail model as prices unknown – floorspace proxy for competitiveness. Adjustment mechanism based on provision (‘floorspace’) rather than price If operation is profitable then expand, otherwise contract. This has the advantage that unprofitable stations will close naturally. Retail agents not dispersed but homogeneous
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School of Geography FACULTY OF ENVIRONMENT ABRM: Version 2 Set floorspace Spatial Interaction Model Evaluate profit Profit >0? Increase floorspace Reduce floorspace
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School of Geography FACULTY OF ENVIRONMENT Agent-based retail model Set the effect of price to neutral. Introduce a new weighting associated with floorspace W j α : W j is adjusted in line with profits. Accessibility Attractiveness Price effect
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School of Geography FACULTY OF ENVIRONMENT ABRM: Version 2 Experiment 1 – Rectangular lattice of 27 x 27 zones Even distribution of population and accessibility Explore variations in provision (at equilibrium) for alternative configurations of accessibility (beta) and attractiveness (alpha) Adjustment mechanism: Wj = Profits / constant Means stations with negative profits shrink to nothing and gain no consumers.
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School of Geography FACULTY OF ENVIRONMENT Distance harder to travel Attractiveness more important Competition increases with ease of travel and attractiveness Distance harder to travel Attractiveness more important Agent-based model
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School of Geography FACULTY OF ENVIRONMENT Distance harder to travel Attractiveness more important Spatial Interaction Model
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School of Geography FACULTY OF ENVIRONMENT ABRM: Version 2 Significance of this result: Exactly parallels the simulations of Wilson & Clarke (1983), following Harris and Wilson (1978) Further applications to Residential location (Clarke & Wilson, 1984) Industrial location (Birkin & Wilson, 1986a,b) Agricultural location (Wilson & Birkin, 1987)
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School of Geography FACULTY OF ENVIRONMENT ABRMV2: Further Experiments A) Move to real geography Distribution of petrol stations comes from the Catalist data B) Add demographics D istance travelled comes from a paper by Haining and Plummer C) Calibrate model
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School of Geography FACULTY OF ENVIRONMENT Distance harder to travel Attractiveness more important Agent-based model
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School of Geography FACULTY OF ENVIRONMENT Where is the real world in this solution space?
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School of Geography FACULTY OF ENVIRONMENT What happens if we mess with the real world? EPS = sensitivity to profit Higher EPS = faster reaction to market = more instability =less survival
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School of Geography FACULTY OF ENVIRONMENT Models started with a model in which changes in both the interactions and petrol station profits were dictated by changing prices; but stations never closed. then we created a classical model in which the dynamics are determined by changes in retail floorspace. Stations could shrink. Now we want to look at a third model in which prices and floorspace (i.e. Location) are both changing simultaneously.
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School of Geography FACULTY OF ENVIRONMENT Eps1 (price sensitivity) =0.1 Eps2 (floorspace sensitivity) =0.1
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School of Geography FACULTY OF ENVIRONMENT Price constraint low, Floorspace important Price constraint medium, Floorspace neutral Price constraint high Floorspace unimportant
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School of Geography FACULTY OF ENVIRONMENT Future directions Variable patterns of price and location adjustment Discrete changes in strategy or provision Reactive behaviour and agent interactions
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School of Geography FACULTY OF ENVIRONMENT Summary and conclusions Agent-based modelling breathes new life into classical approaches Spatial interaction model emphasises the potential for practical deployment of simulation methods Extension of this work to agent-based models of consumer behaviour is the obvious next step
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