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A recommendation algorithm based on fine-grained feature analysis

机译:一种基于细粒度特征分析的推荐算法

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摘要

Most existing recommender methods have insufficient power to capture or recover fine-grained features of products and user preferences. Knowledge graphs contain considerable information about products and mutual relationships in the world. To analyze the fine-grained features during the process of recommendation, we propose a knowledge-aware collaborative learning framework (KACL), which is the first work to combine users' historical reviews with knowledge graphs. First, we use a named-entity recognition (NER) system to recognize the named entities that correspond to item features in the unstructured reviews. After that, we use an entity-linking (EL) system to map entities which identified in the first step to the corresponding entity in Wikipedia. Next, we constructed a sub-graph that depends on the extracted entity and the related ones and embedded the sub-graph into a low latent vector space as pretrain item embedding through the knowledge graph embedding model TransR. In the next step, we will fine-tune item embedding through deep learning built by 4 levels of relu and combine collaborative information with pretrain item embedding. And in accordance with the user review behavior, the item embedding will be averagely poled to express the user embedding, we will put the item embedding and the user embedding into the classification model. Finally, we use the KACL to integrate collaborative filtering with entity representation and make recommendations. Experiments are performed on realworld datasets to evaluate the effectiveness of our new method. The results show that the analysis of fine-grained features based on a knowledge graph helps our KACL improve recommender accuracy compared with the selected state-of-the-art models. (C) 2020 Published by Elsevier Ltd.
机译:大多数现有的推荐方法都没有足够的电源来捕获或恢复产品和用户偏好的细粒度特征。知识图表包含有关世界各地产品和相互关系的相当大的信息。为了分析建议过程中的细粒度特征,我们提出了一个知识意识的协作学习框架(KACL),这是第一个与知识图表结合用户历史评论的工作。首先,我们使用命名实体识别(ner)系统来识别与非结构化评论中的项目功能相对应的命名实体。之后,我们使用实体链接(EL)系统来映射在第一步中标识到维基百科的相应实体的实体。接下来,我们构建了一种依赖于提取的实体和相关的子图,并将子图嵌入到低潜伏的向量空间中作为嵌入通过知识图形嵌入模型转帧的掠夺项。在下一步中,我们将通过4级Relu构建的深度学习进行微调项目,并将协作信息与Pretrain Item Embedding建造。并根据用户审查行为,将项目嵌入的嵌入式嵌入为表示用户嵌入,我们将将项目嵌入和用户嵌入到分类模型中。最后,我们使用KACL将协作过滤与实体表示并提出建议。实验是对RealWorld数据集进行的,以评估我们新方法的有效性。结果表明,基于知识图的细粒度特征的分析有助于我们的KACL与所选最先进的模型相比提高推荐准确性。 (c)2020由elestvier有限公司发布

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