Geo-spatial Information Science (Mar 2024)

An investigation of the temporality of OpenStreetMap data contribution activities

  • Tessio Novack,
  • Leonard Vorbeck,
  • Alexander Zipf

DOI
https://doi.org/10.1080/10095020.2022.2124127
Journal volume & issue
Vol. 27, no. 2
pp. 259 – 275

Abstract

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ABSTRACTOpenStreetMap (OSM) is a dataset in constant change and this dynamic needs to be better understood. Based on 12-year time series of seven OSM data contribution activities extracted from 20 large cities worldwide, we investigate the temporal dynamic of OSM data production, more specifically, the auto- and cross-correlation, temporal trend, and annual seasonality of these activities. Furthermore, we evaluate and compare nine different temporal regression methods for forecasting such activities in horizons of 1–4 weeks. Several insights could be obtained from our analyses, including that the contribution activities tend to grown linearly in a moderate intra-annual cycle. Also, the performance of the temporal forecasting methods shows that they yield in general more accurate estimations of future contribution activities than a baseline metric, i.e. the arithmetic average of recent previous observations. In particular, the well-known ARIMA and the exponentially weighted moving average methods have shown the best performances.

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