Data representation is usually a natural form with their attribute values. On this basis, data processing is an attribute-centered calculation. However, there are three limitations in the attribute-centered calculation, saying, inflexible calculation, preference computation, and unsatisfactory output. To attempt the issues, a new data representation, named as hyper-classes representation, is proposed for improving recommendation. First, the cross entropy, KL divergence and JS divergence of features in data are defined. And then, the hyper-classes in data can be discovered with these three parameters. Finally, a kind of recommendation algorithm is used to evaluate the proposed hyper-class representation of data, and shows that the hyper-class representation is able to provide truly useful reference information for recommendation systems and makes recommendations much better than existing algorithms, i.e., this approach is efficient and promising.
翻译:数据表述通常是一种自然形式,带有属性值。 在此基础上, 数据处理是一种以属性为中心的计算方法。 但是, 以属性为中心的计算有三个局限性, 即不灵活的计算、 偏重计算和不令人满意的输出。 为了尝试这些问题, 提议了一个新的数据表述方法, 称为超等表示法, 来改进建议。 首先, 定义了数据特征的跨星云、 KL 差异和 JS 差异。 然后, 数据中的超级分类可以与这三个参数一起发现。 最后, 使用一种建议算法来评价拟议的超级数据表述法, 并表明超级代表法能够为建议系统提供真正有用的参考信息, 并比现有的算法更好提出建议, 也就是说, 这种方法既有效又有希望。