Mobility data are inherently uncertain due to several contributing factors related to di↵erent phases of their life cycle, from acquisition to interpretation. When data are processed, uncertainty propagates to intermediate and final results. Thus, it is important to be aware of uncertainty in trajectory data and explicitly account for it in their modelling and managing. For example, consider a simple scenario where people move around a city and disclose their position twice an hour; to avoid stalking, the disclosed position is randomly selected from inside a circle with a radius of one kilometer, which contains the position of the user. Not being aware of uncertainty could lead to inconsistent conclusions. For instance, we could erroneously assume that a group of people have met or that someone has visited a privacy-sensitive place. On the contrary, taking uncertainty into account, we can avoid such erroneous conclusions; for example if someone was farther than one kilometer from the place of an accident, we can certainly assume that this person was not involved in that accident. We next introduce a well-known taxonomy of uncertainty (see Bibliographic Notes section), aimed at clearly defining terms that are often given multiple meanings in the literature.

Mobility and uncertainty

SILVESTRI, Claudio;
2013-01-01

Abstract

Mobility data are inherently uncertain due to several contributing factors related to di↵erent phases of their life cycle, from acquisition to interpretation. When data are processed, uncertainty propagates to intermediate and final results. Thus, it is important to be aware of uncertainty in trajectory data and explicitly account for it in their modelling and managing. For example, consider a simple scenario where people move around a city and disclose their position twice an hour; to avoid stalking, the disclosed position is randomly selected from inside a circle with a radius of one kilometer, which contains the position of the user. Not being aware of uncertainty could lead to inconsistent conclusions. For instance, we could erroneously assume that a group of people have met or that someone has visited a privacy-sensitive place. On the contrary, taking uncertainty into account, we can avoid such erroneous conclusions; for example if someone was farther than one kilometer from the place of an accident, we can certainly assume that this person was not involved in that accident. We next introduce a well-known taxonomy of uncertainty (see Bibliographic Notes section), aimed at clearly defining terms that are often given multiple meanings in the literature.
2013
Mobility Data: Modelling Management and Understanding
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10278/27791
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