Deakin University
Browse
loke-heuristicsforspatial-2016.pdf (3.65 MB)

Heuristics for spatial finding using iterative mobile crowdsourcing

Download (3.65 MB)
journal contribution
posted on 2016-12-01, 00:00 authored by Seng LokeSeng Loke
AbstractCrowdsourcing has become a popular method for involving humans in socially-aware computational processes. This paper proposes and investigates algorithms for finding regions of interest using mobile crowdsourcing. The algorithms are iterative, using cycles of crowd-querying and feedback till specified targets are found, each time adjusting the query according to the feedback using heuristics. We describe three (computationally simple) heuristics, incorporated into crowdsourcing algorithms, to reducing the costs (the number of questions required) and increasing the efficiency (or reducing the number of rounds required) in using such crowdsourcing: (i) using additional questions in each round in the expectation of failures, (ii) using neighbourhood associations in the case where regions of interest are clustered, and (iii) modelling regions of interest via spatial point processes. We demonstrate the improved performance of using these heuristics using a range of stylised scenarios. Our research suggests that finding in the city is not as difficult as it can be, especially for phenomena that exhibit some degree of clustering.

History

Journal

Human-centric Computing and Information Sciences

Volume

6

Issue

1

Article number

ARTN 4

Publisher

SPRINGEROPEN

ISSN

2192-1962

eISSN

2192-1962

Language

English

Publication classification

C Journal article; C1.1 Refereed article in a scholarly journal

Copyright notice

2016, Loke et al.