Abstract

Point-of-interest (POI) data from map sources are increasingly used in a wide range of applications, including real estate, land use, and transport planning. However, uncertainties in data quality arise from the fact that some of this data are crowdsourced and proprietary validation workflows lack transparency. Comparing data quality between POI sources without standardized validation metrics is a challenge. This study reviews and implements the available POI validation methods, working towards identifying a set of metrics that is applicable across datasets. Twenty-three validation methods were found and categorized. Most methods evaluated positional accuracy, while logical consistency and usability were the least represented. A subset of nine methods was implemented to assess four real-world POI datasets extracted for a highly urbanized neighborhood in Singapore. The datasets were found to have poor completeness with errors of commission and omission, although spatial errors were reasonably low (<60 m). Thematic accuracy in names and place types varied. The move towards standardized validation metrics depends on factors such as data availability for intrinsic or extrinsic methods, varying levels of detail across POI datasets, the influence of matching procedures, and the intended application of POI data.

Highlights

  • Accepted: 23 October 2021Points of interest or POI refers to places of interest frequently visited by human traffic throughout the day, including restaurants, supermarkets, transportation hubs, parks, cafes, and tourist attractions

  • As some data sources might be more abundant in POIs of a particular place type compared to the others, the comparison was conducted for a subset of POIs of a particular place type, such as ‘school’, ‘university’, ‘secondary_school’, ‘primary_school’ and ‘college’

  • A review of POI validation methods led to the identification of 23 methods which were categorized into the various elements of data quality

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Summary

Introduction

Accepted: 23 October 2021Points of interest or POI refers to places of interest frequently visited by human traffic throughout the day, including restaurants, supermarkets, transportation hubs, parks, cafes, and tourist attractions. Given the ubiquitous use of mobile devices and advancements in various location-aware technologies [1,2], it is possible for mobile service providers and technology companies to analyze users’ mobility data at increasing geospatial-temporal resolutions to identify neighboring POIs [3]. LBSNs rely on their community of end-users to maintain their geospatial database. This is accomplished by soliciting reviews and different semantic information about a recently visited location, benefiting other users in the process [4]. Government agencies and commercial data providers maintain their own proprietary databases of business establishments and critical facilities, which support various purposes such as market research, policy-making, and urban planning

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