Repository logo
 

ALF-Score++, a novel approach to transfer knowledge and predict network-based walkability scores across cities

Date

2022-08

Authors

Alfosool, Ali M. S.
Chen, Yuanzhu
Fuller, Daniel

Journal Title

Journal ISSN

Volume Title

Publisher

Scientific Reports

ORCID

Type

Article

Degree Level

Abstract

Walkability is an important measure with strong ties to our health. However, there are existing gaps in the literature. Our previous work proposed new approaches to address existing limitations. This paper explores new ways of applying transferability using transfer-learning. Road networks, POIs, and road-related characteristics grow/change over time. Moreover, calculating walkability for all locations in all cities is very time-consuming. Transferability enables reuse of already-learned knowledge for continued learning, reduce training time, resource consumption, training labels and improve prediction accuracy. We propose ALF-Score++, that reuses trained models to generate transferable models capable of predicting walkability score for cities not seen in the process. We trained transfer-learned models for St. John’s NL and Montréal QC and used them to predict walkability scores for Kingston ON and Vancouver BC. MAE error of 13.87 units (ranging 0–100) was achieved for transfer-learning using MLP and 4.56 units for direct-training (random forest) on personalized clusters.

Description

Keywords

walkability, ALF Score, Canada

Citation

Degree

Department

Program

Advisor

Committee

Part Of

item.page.relation.ispartofseries

DOI

https://doi.org/10.1038/s41598-022-17713-y

item.page.identifier.pmid

item.page.identifier.pmcid