A methodology for neural spatial interaction modelling
This paper presents a methodology for neural spatial interaction modelling. Particular emphasis is laid on design, estimation and performance issues in both cases, unconstrained and singly constrained spatial interaction. Families of classical neural network models, but also less classical ones such as product unit neural network models are considered. Some novel classes of product unit and summation unit models are presented for the case of origin or destination constrained spatial interaction flows. The models are based on a modular connectionist architecture that may be viewed as a linked collection of functionally independent neural modules with identical feedforward topologies, operating under supervised learning algorithms. Parameter estimation is viewed as Maximum Likelihood (ML) learning. The nonconvex nature of the loss function makes the Alopex procedure, a global search procedure, an attractive and appropriate optimising scheme for ML learning. A benchmark comparison against the classical gravity models illustrates the superiority of both, the unconstrained and the origin constrained, neural network model versions in terms of generalization performance measured by Kullback and Leibler`s information criterion. Hereby, the authors make use of the bootstrapping pairs approach to overcome the largely neglected problem of sensitivity to the specific splitting of the data into training, internal validation and testing data sets, and to get a better statistical picture of prediction variability of the models. Keywords: Neural spatial interaction models, origin constrained or destination constrained spatial interaction, product unit network, Alopex procedure, boostrapping, benchmark performance tests.
Year of publication: |
2002
|
---|---|
Authors: | Fischer, Manfred M. ; Reismann, Martin |
Publisher: |
Louvain-la-Neuve : European Regional Science Association (ERSA) |
Saved in:
freely available
Saved in favorites
Similar items by person
-
Knowledge spillovers and total factor productivity. Evidence using a spatial panel data model.
Fischer, Manfred M., (2009)
-
Knowledge spillovers and total factor productivity. Evidence using a spatial panel data model
Fischer, Manfred M., (2008)
-
Evaluating Neural Spatial Interaction Modelling by Bootstrapping
Fischer, Manfred M., (2000)
- More ...