Abstract

Crowdsourcing has become an important tool for gathering knowledge for urban planning problems. The questions posted to the crowd for urban planning problems are quite different from the traditional crowdsourcing models. Unlike the traditional crowdsourcing models, due to the constraints among the multiple components (e.g., multiple locations of facilities) in a single question and non-availability of the defined option sets, aggregating of multiple diverse opinions that satisfy the constraints as well as finding the ranking of the crowd workers becomes challenging. Moreover, owing to the presence of the conflicting nature of features, the traditional ranking methods such as the Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) cannot always be feasible as the optimal solutions in terms of multiple objectives cannot occur simultaneously for the conflicting cases (e.g., benefit and cost criteria) for urban planning problems. Therefore, in this work, a multi-objective approach is proposed to produce better compromised solutions in terms of conflicting features from the general crowd. In addition, the solutions are employed to obtain a proper ideal solution for ranking the crowd. The experimental results are validated using two constrained crowd opinion datasets for real-world urban planning problems and compared with the state-of-the-art TOPSIS models.

Highlights

  • IntroductionCrowd-powered systems [1,2] have already been adopted as a powerful tool for resolving a complex task in a distributed manner within a limited time and a feasible budget

  • A majority of research available in the literature deals with the crowd judgment problem, where the opinions are basically either binary or multiple option types. This denotes that the option sets are defined and one particular opinion is chosen from the opinion set

  • The first dataset was prepared by posting a grid map of Ulsan National Institute of Science and Technology (UNIST) campus [23]

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Summary

Introduction

Crowd-powered systems [1,2] have already been adopted as a powerful tool for resolving a complex task in a distributed manner within a limited time and a feasible budget. With the passage of time, for different tasks, a spectrum of the methods have been proposed to aggregate multiple crowd opinions to derive proper judgment [6–14]. A majority of research available in the literature deals with the crowd judgment problem, where the opinions are basically either binary or multiple option types. This denotes that the option sets are defined and one particular opinion is chosen from the opinion set. Most of the state-of-the-art research deals with the problem of judgment analysis considering the crowd opinions as either binary (‘Yes’ and ‘No’) or multiple (’Yes’, ‘No’, ‘Skip’, ‘I can’t tell’, etc.) option set. The obtained improved solution is employed to define a proper ideal solution in order to find better ranking of the crowd workers

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