Intelligent Tag Prediction Algorithms for Acupuncture Experts

Qingtao Zeng, Anping Xu, Yeli Li, Chunhe Piao
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引用次数: 1

Abstract

How to further improve clinical efficacy of acupuncture, extend its application range is a key issue in the research and promotion of acupuncture. Famous acupuncturists represent the highest academic level and treatment ability, and have an important influence on development of acupuncture and rehabilitation of patients. Therefore, how to accurately find the acupuncturist is a difficult problem for both patients and peer doctors. At the same time, Internet is also full of a large number of false information, how to accurately analyze the real acupuncturist from these information is the key issue. We can automatically acquire these tags by using information collection technology, and select acupuncture experts from them by combining artificial intelligence. However, tags of social network users is sparse, only a small number of users have tags, and the number of tags is limited. Most users only publish articles and pay attention to other interested users and blogs. They do not tag themselves. There are problems of no tags or less tags, which make it more difficult to find acupuncturists. For untagged users, we can consider predicting tags from their social relationships. In this paper, we design an intelligent tag prediction algorithms for acupuncture experts, which first predicts intimate users of users, and then predicts the users' tags through intimate users' tags. Firstly, possible close users are selected as candidates through cosine similarity. If the user doesn't have an object of interest, then replace it with his fans. Subsequently, user tags are predicted according to the tags of the target audience or fans. Finally, the effectiveness of ITPAE is verified by simulation experiments.
针刺专家的智能标签预测算法
如何进一步提高针灸的临床疗效,扩大针灸的应用范围,是针灸研究和推广的关键问题。著名针灸师代表着最高的学术水平和治疗能力,对针灸的发展和患者的康复有着重要的影响。因此,如何准确地找到针灸师是困扰患者和同行医生的难题。同时,互联网上也充斥着大量的虚假信息,如何从这些信息中准确地分析出真实的针灸师是关键问题。我们可以通过信息收集技术自动获取这些标签,并结合人工智能从中选择针灸专家。然而,社交网络用户的标签是稀疏的,只有少数用户拥有标签,而且标签的数量有限。大多数用户只发表文章,关注其他感兴趣的用户和博客。他们不会给自己贴上标签。没有标签或标签少的问题,这使得寻找针灸师更加困难。对于没有标签的用户,我们可以考虑从他们的社会关系来预测标签。本文设计了一种针对针灸专家的智能标签预测算法,该算法首先预测用户的亲密用户,然后通过亲密用户的标签预测用户的标签。首先,通过余弦相似度选择可能接近的用户作为候选用户;如果用户没有感兴趣的对象,那就用他的粉丝来代替。随后,根据目标受众或粉丝的标签预测用户标签。最后,通过仿真实验验证了ITPAE的有效性。
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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