在干草堆里找钱:彭博社的信息检索

Jonathan J. Dorando, Konstantine Arkoudas, P. Vasa, Gary Kazantsev, Gideon Mann
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引用次数: 0

摘要

金融市场是一个丰富的搜索领域,为所有金融专业人士提供服务并不简单,他们靠准确、及时和深入的信息为生。数据源很多,而且完全不同。这包括具有丰富结构化数据(如公司和安全属性)、文本数据(如研究报告)和时间敏感的新闻故事的域。不仅这个领域很复杂,而且一些适用于网络搜索的技术必须在企业环境中进行调整和重新考虑,因为企业环境的关注较少,但问题同样复杂。在彭博社,在过去的四年里,我们一直在搜索和可发现性小组中解决这些问题,大量利用来自学术和开源社区的见解来解决我们的问题。我们将讨论我们在自然语言问答(Natural Language Question & Answer, NLQA)、学习排序、联合搜索、众包方面所做的努力,以及这一切是如何结合在一起使搜索对我们的用户有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding Money in the Haystack: Information Retrieval at Bloomberg
The financial markets are a rich domain for search, and it is not simple to serving the entire scope of financial professionals, who make their living on accurate, timely, and deep information. The data sources are many and disparate. This includes domains with rich structured data such as company and security attributes, textual data like research reports, and time sensitive news stories. Not only is the domain complicated, but some of the techniques that work for web search have to be adapted and reconsidered in an enterprise context with fewer eyeballs but just as complicated questions. At Bloomberg, we have been addressing these problems over the past four years in the search and discoverability group, heavily leveraging the insights from the academic and open-source communities to apply to our problems. We'll discuss about our efforts in Natural Language Question & Answer (NLQA), learning to rank, federated search, crowd sourcing, and how this all comes together to make search effective for our users.
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