Empowering Volunteer Crowdsourcing Services: A Serverless-assisted, Skill and Willingness Aware Task Assignment Approach for Amicable Volunteer Involvement

Riya Samanta, Biswajeet Sethi, Soumya K Ghosh
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Abstract

Volunteer crowdsourcing (VCS) leverages citizen interaction to address challenges by utilizing individuals' knowledge and skills. Complex social tasks often require collaboration among volunteers with diverse skill sets, and their willingness to engage is crucial. Matching tasks with the most suitable volunteers remains a significant challenge. VCS platforms face unpredictable demands in terms of tasks and volunteer requests, complicating the prediction of resource requirements for the volunteer-to-task assignment process. To address these challenges, we introduce the Skill and Willingness-Aware Volunteer Matching (SWAM) algorithm, which allocates volunteers to tasks based on skills, willingness, and task requirements. We also developed a serverless framework to deploy SWAM. Our method outperforms conventional solutions, achieving a 71% improvement in end-to-end latency efficiency. We achieved a 92% task completion ratio and reduced task waiting time by 56%, with an overall utility gain 30% higher than state-of-the-art baseline methods. This framework contributes to generating effective volunteer and task matches, supporting grassroots community coordination and fostering citizen involvement, ultimately contributing to social good.
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增强志愿者众包服务的能力:无服务器辅助、了解技能和意愿的任务分配法促进志愿者的友好参与
志愿者众包(VCS)利用公民互动,通过利用个人的知识和技能来应对挑战。复杂的社会任务往往需要具备不同技能的志愿者协作完成,而他们是否愿意参与其中至关重要。将任务与最合适的志愿者相匹配仍然是一项重大挑战。志愿者服务平台在任务和志愿者请求方面面临着不可预测的需求,这使得预测志愿者与任务分配过程中的资源需求变得更加复杂。为了应对这些挑战,我们引入了技能和意愿感知志愿者匹配(SWAM)算法,该算法根据技能、意愿和任务要求将志愿者分配到任务中。我们还开发了一个无服务器框架来部署 SWAM。我们的方法优于传统解决方案,在端到端延迟效率方面提高了 71%。我们的任务完成率达到了 92%,任务等待时间减少了 56%,总体效用收益比最先进的基线方法高出 30%。该框架有助于产生有效的志愿者和任务匹配,支持基层社区协调,促进公民参与,最终为社会公益做出贡献。
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