数字收藏的众包指标

Tuula Pääkkönen
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引用次数: 6

摘要

在芬兰国家图书馆(NLF)中,有数百万份数字化的报纸和期刊页面,可以通过公共网站http://digi.kansalliskirjasto.fi公开获取。为了更好地为用户服务,去年对前端进行了彻底的改革,其主要目标是实现众包功能,例如,让最终用户有机会从数字馆藏中创建数字剪报和个人剪贴簿。但是你怎么知道众包是否产生了影响呢?到目前为止使用了多少众包功能?众包成功了吗?在这篇论文中,我们分析了不同数字化材料类型(报纸、期刊、蜉蝣)中最近众包工作的统计数据和指标。分析用户给出的主题、类别和关键词,看看哪些主题最吸引人。重点介绍了众包文章剪报的一些值得注意的公共用途。这些指标告诉我们,终端用户是如何根据自己的兴趣调查和使用数字馆藏的。因此,建议的指标说明了用户信息需求的多样性,从公民科学到研究目的都有所不同。通过分析用户模式,我们可以对用户的新需求做出微小的改变,以适应最活跃的参与者,同时让那些第一次尝试这些功能的人更容易接近服务。参与剪录和注释可以以意想不到的方式丰富材料,并可能为在研究背景下更多地使用众包的机会铺平道路。这为开放科学的目标创造了更多的机会,因为源数据变得可用,使研究人员有可能向公众寻求帮助。从长远来看,例如,利用文本挖掘方法可以让这些不同的终端用户群体实现更多目标。基于我们目前的初步经验,我们认为众包为图书馆环境提供了一个机会,使其更接近用户群,并深入了解数字化内容为他们和图书馆提供的众多机会。为这个特定的众包案例收集第一个原型定性和定量指标,可以提供有关如何进一步改进服务和指标的信息,以便为决策提供有效信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowdsourcing metrics of digital collections
In the National Library of Finland (NLF) there are millions of digitized newspaper and journal pages, which are openly available via the public website  http://digi.kansalliskirjasto.fi . To serve users better, last year the front end was completely overhauled with its main aim in crowdsourcing features, e.g., by giving end-users the opportunity to create digital clippings and a personal scrapbook from the digital collections. But how can you know whether crowdsourcing has had an impact? How much crowdsourcing functionalities have been used so far? Did crowdsourcing work? In this paper the statistics and metrics of a recent crowdsourcing effort are analysed across the different digitized material types (newspapers, journals, ephemera). The subjects, categories and keywords given by the users are analysed to see which topics are the most appealing. Some notable public uses of the crowdsourced article clippings are highlighted. These metrics give us indications on how the end-users, based on their own interests, are investigating and using the digital collections. Therefore, the suggested metrics illustrate the versatility of the information needs of the users, varying from citizen science to research purposes. By analysing the user patterns, we can respond to the new needs of the users by making minor changes to accommodate the most active participants, while still making the service more approachable for those who are trying out the functionalities for the first time. Participation in the clippings and annotations can enrich the materials in unexpected ways and can possibly pave the way for opportunities of using crowdsourcing more also in research contexts. This creates more opportunities for the goals of open science since source data becomes ­available, making it possible for researchers to reach out to the general public for help. In the long term, utilizing, for example, text mining methods can allow these different end-user segments to achieve more. Based on our current initial experiences, we feel that crowdsourcing gives an opportunity for a library context to get closer to the user base and to obtain insight into the numerous opportunities, which the digitized content provides for them and for the library. Gathering the first prototype qualitative and quantitative metrics for this particular crowdsourcing case gives information on how to further improve both the service and the metrics so that they can give valid information for decision-making.
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