基于深度学习的推荐框架(DLRF)多偏好集成算法(MPIA)

Vikram Maditham, N. Reddy, Madhavi Kasa
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引用次数: 2

摘要

目的:基于深度学习的推荐框架(DLRF)是基于一个改进的长短期记忆(LSTM)结构和额外的控制器;因此,它考虑了状态转换的上下文信息。它还处理数据中的不规则性,以提高生成推荐的性能,同时模拟短期偏好。提出了一种多偏好集成算法(MPIA),对上述两种用户偏好进行动态集成。使用Amazon基准数据集进行了大量的实验,并将结果与许多现有的推荐系统(RSs)进行了比较。设计/方法论/方法根据用户的偏好为他们提供高质量的信息过滤。在当今时代,基于rss的在线协同过滤(CF)技术被广泛用于模拟用户的长期偏好。有了深度学习模型,比如循环神经网络(rnn),对用户的短期偏好进行建模就变得可行了。在现有的RSs中,缺乏长期和短期偏好的动态集成。在本文中,作者提出了一个DLRF,用于改进短期偏好建模和生成推荐的技术状态。实证研究结果表明,MPIA在使用曲线下面积(AUC)和f1分数等指标衡量的性能方面优于现有算法。在AUC方面的改善百分比分别为1.3、2.8、3和1.9%,在F-1得分方面的改善百分比为0.98、2.91、2和2.01%。该算法使用基于注意力的方法,通过结合上下文信息来整合偏好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-preference integrated algorithm (MPIA) for the deep learning-based recommender framework (DLRF)
PurposeThe deep learning-based recommender framework (DLRF) is based on an improved long short-term memory (LSTM) structure with additional controllers; thus, it considers contextual information for state transition. It also handles irregularities in the data to enhance performance in generating recommendations while modelling short-term preferences. An algorithm named a multi-preference integrated algorithm (MPIA) is proposed to have dynamic integration of both kinds of user preferences aforementioned. Extensive experiments are made using Amazon benchmark datasets, and the results are compared with many existing recommender systems (RSs).Design/methodology/approachRSs produce quality information filtering to the users based on their preferences. In the contemporary era, online RSs-based collaborative filtering (CF) techniques are widely used to model long-term preferences of users. With deep learning models, such as recurrent neural networks (RNNs), it became viable to model short-term preferences of users. In the existing RSs, there is a lack of dynamic integration of both long- and short-term preferences. In this paper, the authors proposed a DLRF for improving the state of the art in modelling short-term preferences and generating recommendations as well.FindingsThe results of the empirical study revealed that the MPIA outperforms existing algorithms in terms of performance measured using metrics such as area under the curve (AUC) and F1-score. The percentage of improvement in terms AUC is observed as 1.3, 2.8, 3 and 1.9% and in terms of F-1 score 0.98, 2.91, 2 and 2.01% on the datasets.Originality/valueThe algorithm uses attention-based approaches to integrate the preferences by incorporating contextual information.
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