软件
軟件
연건
SOFT WARE
2013年
12期
156-159,185
,共5页
推荐系统算法%受限波兹曼机%深度学习%吉布斯采样
推薦繫統算法%受限波玆曼機%深度學習%吉佈斯採樣
추천계통산법%수한파자만궤%심도학습%길포사채양
recommendation algorithm%RBM%deep learning%gibbs sampling
本文针对推荐系统中传统推荐算法在处理较稀疏数据效果表现不佳的问题,将一种最新的机器学习方法带入到推荐算法中,利用多层波兹曼机组成的深度结构模型与传统最近邻推荐方法相结合,形成一种新的推荐模型算法。本文还利用有限步吉布斯采样的最小化散度差(Constrastive Divergence)方法解决了该模型的无监督训练问题,并且通过预训练和反馈微调使得模型的训练得以实现;最后利用深度结构抽取的抽象特征结合最近邻方法进行预测推荐。另外,本文利用传统基于相似度最近邻方法,矩阵分解方法和新模型算法在相关数据集上进行多组实验,实验结果表明该算法不仅在稀疏的数据上也表现出更好的效果,并且拥有着更快的收敛速度。
本文針對推薦繫統中傳統推薦算法在處理較稀疏數據效果錶現不佳的問題,將一種最新的機器學習方法帶入到推薦算法中,利用多層波玆曼機組成的深度結構模型與傳統最近鄰推薦方法相結閤,形成一種新的推薦模型算法。本文還利用有限步吉佈斯採樣的最小化散度差(Constrastive Divergence)方法解決瞭該模型的無鑑督訓練問題,併且通過預訓練和反饋微調使得模型的訓練得以實現;最後利用深度結構抽取的抽象特徵結閤最近鄰方法進行預測推薦。另外,本文利用傳統基于相似度最近鄰方法,矩陣分解方法和新模型算法在相關數據集上進行多組實驗,實驗結果錶明該算法不僅在稀疏的數據上也錶現齣更好的效果,併且擁有著更快的收斂速度。
본문침대추천계통중전통추천산법재처리교희소수거효과표현불가적문제,장일충최신적궤기학습방법대입도추천산법중,이용다층파자만궤조성적심도결구모형여전통최근린추천방법상결합,형성일충신적추천모형산법。본문환이용유한보길포사채양적최소화산도차(Constrastive Divergence)방법해결료해모형적무감독훈련문제,병차통과예훈련화반궤미조사득모형적훈련득이실현;최후이용심도결구추취적추상특정결합최근린방법진행예측추천。령외,본문이용전통기우상사도최근린방법,구진분해방법화신모형산법재상관수거집상진행다조실험,실험결과표명해산법불부재희소적수거상야표현출경호적효과,병차옹유착경쾌적수렴속도。
Aiming at solving the problems of poor performance in recommendation system when using traditional content-based or collaborative-iflter based methods,a new recommendation model was proposed to deal with recommendation task in this article. This new model was a deep structure composed of several layers of restricted boltzmann machine which were learned using a unsupervised learning method called Constrastive Divergence algorithm adopting limited steps of gibbs sampling,besides, other strategies such as pre-training and ifne-tune were used to make the model trained possible. At last, this article carried out several experiments among traditional matrix decomposition and the new model,the result turned out that the new model not only performed well in speed in iteration,and even performed better in sparse data compared to the traditional ones.