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Knowledge Recommendation Based on Item Response Theory

机译:基于项目反应理论的知识推荐

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In Knowledge Management System (KMS), the users have to spend much time searching for knowledge items because of the overabundance of information. For improving users' satisfaction, several approaches have been proposed to recommend knowledge by using user feedback, especially collaborative filtering algorithm. But the user feedback easily suffers from noise which affects the accuracy of recommendation. In this paper, we propose a new knowledge recommendation method that aims at extracting latent trait from user feedback and substituting latent trait to user feedback in recommendation model. First, motivated by the Item Response Theory (IRT), we view each feedback as a user's detailed response to an item, and assume the response is jointly determined by the ability of users and the difficulty of items. Second, we suppose that the user feedback obeys Gaussian distribution, in which the latent trait represents the users' ability of comprehending the knowledge items and is jointly determined by user feedback and parameters of model. The parameter mean of Gaussian distribution denotes the difficulty of items, and its parameter variance denotes the ability of users. Last, we recommend knowledge item by Matrix Factorization (MF) method, in which we minimize the squared error between the latent trait and its predictive value. The predictive value is the inner product value of the two latent matrix factorized from the known matrix. Extensive experiments on call center dataset show the effectiveness of the proposed solution by comparing the state-of-the-art methods of MF.
机译:在知识管理系统(KMS)中,由于信息过多,用户不得不花大量时间搜索知识项目。为了提高用户的满意度,已经提出了几种通过使用用户反馈来推荐知识的方法,特别是协作过滤算法。但是用户反馈很容易受到噪声的影响,从而影响推荐的准确性。在本文中,我们提出了一种新的知识推荐方法,该方法旨在从用户反馈中提取潜在特征,并在推荐模型中将潜在特征替换为用户反馈。首先,受项目响应理论(IRT)的启发,我们将每个反馈视为用户对项目的详细响应,并假定响应是由用户的能力和项目难度共同决定的。其次,我们假设用户反馈服从高斯分布,其中潜在特征代表用户理解知识项的能力,并由用户反馈和模型参数共同确定。高斯分布的参数均值表示项目的难易程度,其参数方差表示用户的能力。最后,我们通过矩阵分解(MF)方法推荐知识项目,在该知识项目中,我们将潜在特征与其预测值之间的平方误差最小化。预测值是从已知矩阵分解的两个潜矩阵的内积值。通过比较MF的最新方法,在呼叫中心数据集上进行的大量实验证明了所提出解决方案的有效性。

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