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dpSmart: A Flexible Group Based Recommendation Framework for Digital Repository Systems

机译:DPSMART:基于灵活的基于组的数字存储库系统推荐框架

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Digital Repository Systems have been used in most modern digital library platforms. Even so, Digital Repository Systems often suffer from problems such as low discoverability, poor usability, and high drop-off visit rates. With these problems, the majority of the content in the digital library platforms may not be exposed to end users, while at the same time, users are desperately looking for something which may not be returned from the platforms. The recommendation systems for digital libraries were proposed to solve these problems. However, most recommendation systems have been implemented by directly adopting one specific type of recommender like Collaborative-Filtering (CF), Content-Based Filtering (CBF), Stereotyping, or hybrid recommenders. As such, they are either (1) not able to accommodate the variation of the user groups, (2) require too much labor, or (3) require intensive computational complexity. In this paper, we design and implement a new recommendation system framework for Digital Repository Systems, named dpSmart, which allows multiple recommenders to work collaboratively on the same platform. In the proposed system, a user-group based recommendation strategy is applied to accommodate the requirements from the different types of users. A user recognition model is built, which can avoid the intensive labor of the stereotyping recommender. We implement the system prototype as a sub-system of the FIU library site (http://dpanther.fiu.edu) and evaluate it on January 2019 and February 2019. During this time, the Page Views have increased from 8,502 to 10,916 and 10,942 to 12,314 respectively, compared to 2018, demonstrating the effectiveness of our proposed system.
机译:数字存储库系统已用于大多数现代数字图书馆平台。即便如此,数字存储库系统通常会遭受低发现性,可用性差和高下拉访问率等问题。通过这些问题,数字图书馆平台中的大多数内容可能不会暴露于最终用户,而同时用户迫切地寻找可能不会从平台返回的东西。提出了数字图书馆的推荐系统来解决这些问题。但是,大多数推荐系统都是通过直接采用一种特定类型的推荐人来实现,如协作过滤(CF),基于内容的过滤(CBF),刻板印象或混合推荐人。因此,它们是(1)不能容纳用户组的变化,(2)需要过多的劳动力,或者(3)需要密集的计算复杂性。在本文中,我们设计并实施了一个名为DPSMart的数字存储库系统的新推荐系统框架,它允许多个推荐在同一平台上协作地工作。在所提出的系统中,应用基于用户组的推荐策略来适应不同类型的用户的要求。构建了用户识别模型,可以避免刻板推荐的强化劳动。我们将系统原型作为FIU库站点的子系统(http://dpanther.fiu.edu),并于2019年1月和2019年2月评估。在此期间,页面浏览量从8,502增加到10,916和10,916与2018相比,10,942至12,314分别展示了我们所提出的系统的有效性。

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