Aalto University, Department of Computer Science, Helsinki Institute for Information Technology HIIT, P.O. Box 15400, FI-00076 AALTO, Finland.
University of Helsinki, Department of Computer Science, Helsinki Institute for Information Technology HIIT, P.O. Box 68, FI-00014 University of Helsinki, Finland.
Sci Rep. 2016 Dec 8;6:38580. doi: 10.1038/srep38580.
Finding relevant information from large document collections such as the World Wide Web is a common task in our daily lives. Estimation of a user's interest or search intention is necessary to recommend and retrieve relevant information from these collections. We introduce a brain-information interface used for recommending information by relevance inferred directly from brain signals. In experiments, participants were asked to read Wikipedia documents about a selection of topics while their EEG was recorded. Based on the prediction of word relevance, the individual's search intent was modeled and successfully used for retrieving new relevant documents from the whole English Wikipedia corpus. The results show that the users' interests toward digital content can be modeled from the brain signals evoked by reading. The introduced brain-relevance paradigm enables the recommendation of information without any explicit user interaction and may be applied across diverse information-intensive applications.
从大型文档集合(如万维网)中查找相关信息是我们日常生活中的常见任务。为了从这些集合中推荐和检索相关信息,需要估计用户的兴趣或搜索意图。我们介绍了一种脑信息接口,用于通过直接从脑信号推断的相关性来推荐信息。在实验中,要求参与者阅读有关一系列主题的维基百科文档,同时记录他们的 EEG。基于单词相关性的预测,对个体的搜索意图进行建模,并成功地从整个英文维基百科语料库中检索到新的相关文档。结果表明,可以通过阅读引起的脑信号来对数字内容的用户兴趣进行建模。引入的脑相关性范式使得无需任何显式用户交互即可进行信息推荐,并且可以应用于各种信息密集型应用。