Title
Feature Based Task Recommendation in Crowdsourcing with Implicit Observations.
Abstract
Existing research in crowdsourcing has investigated how to recommend tasks to workers based on which task the workers have already completed, referred to as {em implicit feedback}. We, on the other hand, investigate the task recommendation problem, where we leverage both implicit feedback and explicit features of the task. We assume that we are given a set of workers, a set of tasks, interactions (such as the number of times a worker has completed a particular task), and the presence of explicit features of each task (such as, task location). We intend to recommend tasks to the workers by exploiting the implicit interactions, and the presence or absence of explicit features in the tasks. We formalize the problem as an optimization problem, propose two alternative problem formulations and respective solutions that exploit implicit feedback, explicit features, as well as similarity between the tasks. We compare the efficacy of our proposed solutions against multiple state-of-the-art techniques using two large scale real world datasets.
Year
Venue
Field
2016
arXiv: Artificial Intelligence
Data mining,Problem Formulations,Computer science,Crowdsourcing,Exploit,Artificial intelligence,Feature based,Optimization problem,Machine learning
DocType
Volume
Citations 
Journal
abs/1602.03291
3
PageRank 
References 
Authors
0.38
8
3
Name
Order
Citations
PageRank
Habibur Rahman181.19
Lucas Joppa2176.23
Senjuti Basu Roy357741.92