A language independent user adaptable approach for word auto-completion

S. Prisca, R. Potolea, M. Dînsoreanu
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引用次数: 1

Abstract

In this paper, we address the problem of word auto-completion for free text (e.g. messages, emails, articles, poems, etc.) written in different languages. We focus on improving the user experience by developing a user-oriented model that is able to learn different writing styles, while still providing initial predictions without any user written documents. We show that by learning from the user, the performance of an auto-completion system can be improved by up to 18% compared to a generic, not user-adaptable approach. In order to keep query processing times low, we deploy a binary search technique that retrieves groups of words from an inverted index based on their first letters. This retrieval method reduces the query processing time by up to 80%.
一种独立于语言的用户自适应的单词自动补全方法
在本文中,我们解决了用不同语言书写的自由文本(如消息、电子邮件、文章、诗歌等)的单词自动补全问题。我们专注于通过开发一个面向用户的模型来改善用户体验,该模型能够学习不同的写作风格,同时在没有任何用户编写文档的情况下仍然提供初始预测。我们表明,通过向用户学习,自动补全系统的性能可以比一般的、不适合用户的方法提高18%。为了降低查询处理时间,我们部署了一种二进制搜索技术,该技术根据单词的首字母从倒排索引中检索单词组。这种检索方法最多可减少80%的查询处理时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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