Title
On using crowd-sourced network measurements for performance prediction
Abstract
Geo-location-based bandwidth prediction together with careful download scheduling for mobile clients can be used to minimize download times, reduce energy usage, and improve streaming performance. Although crowd-sourced measurements provide an important prediction tool, little is known about the prediction accuracy and improvements such datasets can provide. In this paper we use a large-scale crowd-sourced dataset from Bredbandskollen, Sweden's primary speedtest service, to evaluate the prediction accuracy and achievable performance improvements with such data. We first present a scalable performance map methodology that allows fast insertion/retrieval of geo-sparse measurements, and use this methodology to characterize the Bredbandskollen usage. Second, we analyze the bandwidth variations and predictability of the download speeds observed within and across different locations, when accounting for various factors. Third, we evaluate the relative performance improvements achievable by users leveraging different subsets of measurements (capturing effects of limited sharing or filtering based on operator, network technology, or both) when predicting opportune locations to perform downloads. Our results are encouraging for both centralized and peer-to-peer performance map solutions. For example, most measurements are done in locations with many measurements and good prediction accuracy, and further improvements are possible through filtering (e.g., based on operator and technology) or limited information sharing.
Year
Venue
Keywords
2016
2016 12th Annual Conference on Wireless On-demand Network Systems and Services (WONS)
crowd-sourced network measurements,performance prediction,geolocation-based bandwidth prediction,mobile clients,Bredbandskollen,Sweden,peer-to-peer performance,information sharing
Field
DocType
Citations 
Mobile computing,Predictability,Computer science,Scheduling (computing),Computer network,Bandwidth (signal processing),Performance prediction,Mobile telephony,Information sharing,Scalability
Conference
0
PageRank 
References 
Authors
0.34
11
5
Name
Order
Citations
PageRank
Tova Linder100.34
Pontus Persson200.34
Anton Forsberg300.68
Jakob Danielsson400.34
Niklas Carlsson558551.31