Abstract

Crowdsourcing in simple words is the outsourcing of a task to an online market to be performed by a diverse group of crowds in order to utilize human intelligence. Due to online labor markets and performing parallel tasks, the crowdsourcing activity is time- and cost-efficient. During crowdsourcing activity, selecting the proper labeled tasks and assigning them to an appropriate worker are a challenge for everyone. A mechanism has been proposed in the current study for assigning the task to the workers. The proposed mechanism is a multicriteria-based task assignment (MBTA) mechanism for assigning the task to the most suitable worker. This mechanism uses approaches for weighting the criteria and ranking the workers. These MCDM methods are Criteria Importance Through Intercriteria Correlation (CRITIC) and Technique for Order Preference by Similarity to Ideal Solution (TOPSIS). Criteria have been made for the workers based on the identified features in the literature. Weight has been assigned to these selected features/criteria with the help of the CRITIC method. The TOPSIS method has been used for the evaluation of workers, with the help of which the ranking of workers is performed in order to get the most suitable worker for the selected tasks to be performed. The proposed work is novel in several ways; for example, the existing methods are mostly based on single criterion or some specific criteria, while this work is based on multiple criteria including all the important features. Furthermore, it is also identified from the literature that none of the authors used MCDM methods for task assignment in crowdsourcing before this research.

Highlights

  • Related WorkThe task assignment models and methods are recommended with the help of different techniques. e competitor’s history of participation such as participation frequency and recency as well as winning frequency and recency along with tenure and last performance is derived in order to construct a model [6]

  • Crowdsourcing in simple words is the outsourcing of a task to an online market to be performed by a diverse group of crowds in order to utilize human intelligence

  • Weight has been assigned to these selected features/criteria with the help of the Criteria Importance rough Intercriteria Correlation (CRITIC) method. e TOPSIS method has been used for the evaluation of workers, with the help of which the ranking of workers is performed in order to get the most suitable worker for the selected tasks to be performed. e proposed work is novel in several ways; for example, the existing methods are mostly based on single criterion or some specific criteria, while this work is based on multiple criteria including all the important features

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Summary

Related Work

The task assignment models and methods are recommended with the help of different techniques. e competitor’s history of participation such as participation frequency and recency as well as winning frequency and recency along with tenure and last performance is derived in order to construct a model [6]. E SmartCrowd framework is proposed by the authors, which focuses on the optimization of crowd to the task assignment in a knowledge-intensive crowdsourcing environment. It focuses on the production of knowledge instead of simple tasks. E crowd select approach offers an algorithm for assigning workers to the tasks in a costefficient way and ensures the accuracy of the tasks. To measure the effect of personality on the selection of tasks, the experiment was conducted based on the task characteristics such as type, money, and time. E Learning Automata Based Task Assignment (LEATask) is proposed by the authors, which works upon the worker similarity in their performances. Various research fields can benefit from using the proposed approach such as IoT underlying heterogeneity [28], investigation of data aggregation in mobile sensor networks for IIoT [29], sharing of resource in heterogeneous vehicular network [30], and many other fields

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