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Journal ArticleDOI

Efficient task assignment for spatial crowdsourcing

TLDR
A novel distance-reliability ratio algorithm based on a combinatorial fractional programming approach that reduces travel costs by 80% while maximizing reliability when compared to existing algorithms and a novel algorithm that uses an interval estimation heuristic to approximate worker reliabilities is proposed.
Abstract
We introduce min-cost max-reliability assignment problem in spatial crowdsourcing.We propose a novel distance-reliability ratio approach to address the problem.We extend the proposed approach for dynamic estimation of worker reliabilities.We present the performance of algorithms on synthetic and real-world datasets.The proposed approach achieves lower travel costs while maximizing the reliability. Spatial crowdsourcing has emerged as a new paradigm for solving problems in the physical world with the help of human workers. A major challenge in spatial crowdsourcing is to assign reliable workers to nearby tasks. The goal of such task assignment process is to maximize the task completion in the face of uncertainty. This process is further complicated when tasks arrivals are dynamic and worker reliability is unknown. Recent research proposals have tried to address the challenge of dynamic task assignment. Yet the majority of the proposals do not consider the dynamism of tasks and workers. They also make the unrealistic assumptions of known deterministic or probabilistic workers' reliabilities. In this paper, we propose a novel approach for dynamic task assignment in spatial crowdsourcing. The proposed approach combines bi-objective optimization with combinatorial multi-armed bandits. We formulate an online optimization problem to maximize task reliability and minimize travel costs in spatial crowdsourcing. We propose the distance-reliability ratio (DRR) algorithm based on a combinatorial fractional programming approach. The DRR algorithm reduces travel costs by 80% while maximizing reliability when compared to existing algorithms. We extend the DRR algorithm for the scenario when worker reliabilities are unknown. We propose a novel algorithm (DRR-UCB) that uses an interval estimation heuristic to approximate worker reliabilities. Experimental results demonstrate that the DRR-UCB achieves high reliability in the face of uncertainty. The proposed approach is particularly suited for real-life dynamic spatial crowdsourcing scenarios. This approach is generalizable to the similar problems in other areas in expert systems. First, it encompasses online assignment problems when the objective function is a ratio of two linear functions. Second, it considers situations when intelligent and repeated assignment decisions are needed under uncertainty.

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Citations
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Book ChapterDOI

Nonlinear Fractional Programming

TL;DR: In this paper, a nonlinear fractional programming problem is considered, where the objective function has a finite optimal value and it is assumed that g(x) + β + 0 for all x ∈ S,S is non-empty.
Journal ArticleDOI

Spatial crowdsourcing: a survey

TL;DR: A comprehensive and systematic review of existing research on four core algorithmic issues in spatial crowdsourcing: (1) task assignment, (2) quality control, (3) incentive mechanism design, and (4) privacy protection.
Journal ArticleDOI

Multi-Objective Optimization Based Allocation of Heterogeneous Spatial Crowdsourcing Tasks

TL;DR: Effective heuristic methods, including multi-round linear weight optimization and enhanced multi-objective particle swarm optimization algorithms are proposed to achieve adequate Pareto-optimal allocation in heterogeneous spatial crowdsourcing.
Journal ArticleDOI

Heterogeneous Multi-Task Assignment in Mobile Crowdsensing Using Spatiotemporal Correlation

TL;DR: By leveraging the implicit spatiotemporal correlations among heterogeneous tasks, this work proposes a two-stage HMTA problem-solving approach to effectively handle multiple concurrent tasks in a shared resource pool and evaluates the approach extensively using two large-scale real-world data sets.
Journal ArticleDOI

Spatial crowdsourcing: challenges, techniques, and applications

TL;DR: This tutorial surveys new designs in task assignment, quality control, incentive mechanism design and privacy protection on spatial crowdsourcing platforms, as well as the new trend to incorporate crowdsourcing to enhance existing spatial data processing techniques.
References
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Book

Reinforcement Learning: An Introduction

TL;DR: This book provides a clear and simple account of the key ideas and algorithms of reinforcement learning, which ranges from the history of the field's intellectual foundations to the most recent developments and applications.
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Network Flows: Theory, Algorithms, and Applications

TL;DR: In-depth, self-contained treatments of shortest path, maximum flow, and minimum cost flow problems, including descriptions of polynomial-time algorithms for these core models are presented.
Journal ArticleDOI

Finite-time Analysis of the Multiarmed Bandit Problem

TL;DR: This work shows that the optimal logarithmic regret is also achievable uniformly over time, with simple and efficient policies, and for all reward distributions with bounded support.
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