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Context-Aware Recommendation of Task Allocations in Service Systems

机译:服务系统中任务分配的上下文感知建议

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In a service system comprising of knowledge intensive tasks, a pull-based allocation strategy (where knowledge workers decide on tasks to commit to, as opposed to having these commitments decided for them) can often be quite effective. Such a scenario is characterized by different types of tasks and workers with varying efficiencies. As workers and tasks change with time, a key challenge faced by knowledge workers is in deciding the most suitable tasks to commit to. Organizational roles of workers provide them the privilege of working on the tasks that the role is authorized to perform, but the suitability of a worker to perform a task varies because workers could have varying operational performance on different types of tasks. Past allocations, when correlated with execution histories annotated with quality of service (or performance) measures, can provide insights on the suitability of a task for a worker. It has been recognized that the effectiveness of a resource in performing a task often depends on the context in which the task is executed. In this work, we present a context-aware collaborative filtering recom-mender system that predicts a worker's suitability for a task, in different contexts or situations. The context-aware recommender uses information on the performance of similar resources in similar contexts to predict a resource's suitability for a task. Experiments performed on real-world execution logs demonstrate the effectiveness of the proposed approach.
机译:在由知识密集型任务组成的服务系统中,基于拉式的分配策略(知识工作者在其中决定要执行的任务,而不是为他们确定这些承诺)通常是非常有效的。这种情况的特点是不同类型的任务和工作人员的效率各不相同。随着工作人员和任务随时间变化,知识工作者面临的关键挑战是确定最适合的任务。工人的组织角色为他们提供了执行该角色授权执行的任务的特权,但是工人执行任务的适用性各不相同,因为工人在不同类型的任务上可能具有不同的操作性能。过去的分配与以服务质量(或性能)度量标注的执行历史相关联时,可以提供有关任务对工人的适用性的见解。已经认识到,资源在执行任务中的有效性通常取决于执行任务的环境。在这项工作中,我们提出了一个上下文感知的协同过滤推荐系统,该系统可以预测工人在不同上下文或情况下对某项任务的适用性。上下文感知推荐器使用有关相似资源在相似上下文中的性能的信息来预测资源对任务的适用性。在现实世界的执行日志上进行的实验证明了该方法的有效性。

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