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Worker Recommendation for Crowdsourced QA Services: A Triple-Factor Aware Approach

机译:众包Q&A服务的工人推荐:一个三因素意识到的方法

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Worker Recommendation (WR.) is one of the most important functions for crowdsourced Q&A services. Specifically, given a set of tasks to be solved, WR recommends each task with a certain group of workers, whom are expected to give timely answers with high qualities. To address the WR problem, recent studies have introduced a number of recommendation approaches, which take advantage of workers' expertises or preferences towards different types of tasks. However, without a thorough consideration of workers' characters, such approaches will lead to either inadequate task fulfillment or inferior answer quality. In this work, we propose the Triple-factor Aware Worker Recommendation framework, which collectively considers workers' expertises, preferences and activenesses to maximize the overall production of high quality answers. We construct the Latent Hierarchical Factorization Model, which is able to infer the tasks" underlying categories and workers' latent characters from the historical data; and we propose a novel parameter inference method, which only requires the processing of positive instances, giving rise to significantly higher time efficiency and better inference quality. What's more, the sampling-based recommendation algorithm is developed, such that the near optimal worker recommendation can be generated for a presented batch of tasks with considerably reduced time consumption. Comprehensive experiments have been carried out using both real and synthetic datasets, whose results verify the effectiveness and efficiency of our proposed methods.
机译:工人建议(WR)是用于众包Q&A服务的最重要的功能之一。具体地,给出一组任务需要解决,WR建议具有一定的一群工人,谁有望得到具有高品质及时解答的每一个任务。为了解决这个问题,WR,最近的研究已经推出了一些推荐的方法,其中利用工人的专长或喜好对不同类型的任务。但是,由于没有充分考虑工人的角色,这种方法会导致要么任务完成不足或低劣的答案质量。在这项工作中,我们提出了三因素感知工作者建议框架,它们共同认为工人的专长,喜好和activenesses最大限度地提高整体生产高质量的答案。我们构建了潜层次分解模型,该模型能够推断基本类别和工人从历史数据的潜在角色的任务”,并提出了一种新的参数推断方法,只需要积极的情况下的处理,从而引发显著较高的时间效率和更好的推断质量。更重要的是,基于采样的推荐算法开发,这样可以为呈现批次大大减少时间消耗任务的生成接近最优的工作人员建议。综合实验一直使用进行真正的和合成的数据集,其结果验证了我们提出的方法的有效性和效率。

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