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An optimally weighted user- and item-based collaborative filtering approach to predicting baseline data for Friedreich's Ataxia patients

机译:基于最佳的基于用户和项目的协作过滤方法,以预测Friedreich的共济失调患者的基线数据

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摘要

In this paper, a modified collaborative filtering (MCF) algorithm with improved performance is developed for recommendation systems with application in predicting baseline data of Friedreich's Ataxia (FRDA) patients. The proposed MCF algorithm combines the individual merits of both the user-based collaborative filtering (UBCF) method and the item-based collaborative filtering (IBCF) method, where both the positively and negatively correlated neighbors are taken into account. The weighting parameters are introduced to quantify the degrees of utilizations of the UBCF and IBCF methods in the rating prediction, and the particle swarm optimization algorithm is applied to optimize the weighting parameters in order to achieve an adequate tradeoff between the positively and negatively correlated neighbors in terms of predicting the rating values. To demonstrate the prediction performance of the proposed MCF algorithm, the developed MCF algorithm is employed to assist with the baseline data collection for the FRDA patients. The effectiveness of the proposed MCF algorithm is confirmed by extensive experiments and, furthermore, it is shown that our algorithm outperforms some conventional approaches. (c) 2020 Elsevier B.V. All rights reserved.
机译:在本文中,为推荐系统开发了一种改进的性能的改进的协作滤波(MCF)算法,其具有预测Friedreich的共济失调(FRDA)患者的基线数据。所提出的MCF算法结合了基于用户的协作滤波(UBCF)方法的个体优点和基于项目的协同滤波(IBCF)方法,其中呈阳性和负相关的邻居被考虑。引入加权参数以量化额定值预测中UBCF和IBCF方法的利用程度,并应用粒子群优化算法以优化加权参数,以便在正相关和负相关的邻居之间实现足够的折衷预测评级值的条款。为了证明所提出的MCF算法的预测性能,采用开发的MCF算法来帮助FRDA患者的基线数据收集。所提出的MCF算法的有效性是通过广泛的实验证实的,并且还证明了我们的算法优于一些传统方法。 (c)2020 Elsevier B.v.保留所有权利。

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