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基于GA改进LSTM-BP神经网络的智慧楼宇用能行为预测方法 被引量:9
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作者 江世雄 黄鸿标 +1 位作者 陈苏芳 肖荣洋 《沈阳工业大学学报》 CAS 北大核心 2022年第4期366-371,共6页
针对大部分预测方法难以适用于多源异构数据的处理,且存在能源类型考虑不全面等问题,提出了基于GA改进LSTM-BP神经网络的智慧楼宇用能行为预测方法.该方法通过K-means聚类算法分析用能行为并减少用能数据规模,利用遗传算法优化长短时记... 针对大部分预测方法难以适用于多源异构数据的处理,且存在能源类型考虑不全面等问题,提出了基于GA改进LSTM-BP神经网络的智慧楼宇用能行为预测方法.该方法通过K-means聚类算法分析用能行为并减少用能数据规模,利用遗传算法优化长短时记忆网络(LSTM)结合反向传播神经网络(BP)的预测模型,实现对智慧楼宇的能耗预测.基于TensorFlow深度学习框架进行实验分析,结果表明所提方法在12 h及120 h内预测结果的MAE值分别为1.79 J和2.11 J,预测效果稳定并优于其他对比方法,故具有一定的应用前景. 展开更多
关键词 智慧楼宇 用能行为预测 LSTM-BP神经网络 遗传算法 K-MEANS聚类算法 TensorFlow深度学习框架 多源异构数据
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Preference transfer model in collaborative filtering for implicit data
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作者 Bin JU Yun-tao QIAN Min-chao YE 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2016年第6期489-500,共12页
Generally, predicting whether an item will be liked or disliked by active users, and how much an item will be liked, is a main task of collaborative filtering systems or recommender systems. Recently, predicting most ... Generally, predicting whether an item will be liked or disliked by active users, and how much an item will be liked, is a main task of collaborative filtering systems or recommender systems. Recently, predicting most likely bought items for a target user, which is a subproblem of the rank problem of collaborative filtering, became an important task in collaborative filtering. Traditionally, the prediction uses the user item co-occurrence data based on users' buying behaviors. However, it is challenging to achieve good prediction performance using traditional methods based on single domain information due to the extreme sparsity of the buying matrix. In this paper, we propose a novel method called the preference transfer model for effective cross-domain collaborative filtering. Based on the preference transfer model, a common basis item-factor matrix and different user-factor matrices are factorized.Each user-factor matrix can be viewed as user preference in terms of browsing behavior or buying behavior. Then,two factor-user matrices can be used to construct a so-called ‘preference dictionary' that can discover in advance the consistent preference of users, from their browsing behaviors to their buying behaviors. Experimental results demonstrate that the proposed preference transfer model outperforms the other methods on the Alibaba Tmall data set provided by the Alibaba Group. 展开更多
关键词 Recommender systems Collaborative filtering Preference transfer model Cross domain Implicit data
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