Abstract |
The detection of city hotspots from geo-referenced urban data is a valuable knowl-edge support for planners, scientists, and policymakers. However, the application of classic density-based clustering algorithms on multi-density data can produce inaccu-rate results. Since metropolitan cities are heavily characterized by variable densities, multi-density clustering seems to be more appropriate to discover city hotspots. This paper presents CHD (City Hotspot Detector), a multi-density approach to discover ur-ban hotspots in a city, by reporting an extensive comparative analysis with three classic density-based clustering algorithms, on both state-of-the-art and real-world datasets. The comparative experimental evaluation in an urban scenario shows that the proposed multi-density algorithm, enhanced by an additional rolling moving av-erage technique, detects higher quality city hotspots than other classic density-based approaches proposed in literature.(c) 2022 Elsevier B.V. All rights reserved. |