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Collaborative Filtering and Artificial Neural Network Based Recommendation System for Advanced Applications

机译:基于协同过滤和人工神经网络的高级推荐系统

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To make recommendation on items from the user for historical user rating several intelligent systems are using. The most common method is Recommendation systems. The main areas which play major roles are social networking, digital marketing, online shopping and E-commerce. Recommender system consists of several techniques for recommendations. Here we used the well known approach named as Collaborative filtering (CF). There are two types of problems mainly available with collaborative filtering. They are complete cold start (CCS) problem and incomplete cold start (ICS) problem. The authors proposed three novel methods such as collaborative filtering, and artificial neural networks and at last support vector machine to resolve CCS as well ICS problems. Based on the specific deep neural network SADE we can be able to remove the characteristics of products. By using sequential active of users and product characteristics we have the capability to adapt the cold start product ratings with the applications of the state of the art CF model, time SVD++. The proposed system consists of Netflix rating dataset which is used to perform the baseline techniques for rating prediction of cold start items. The calculation of two proposed recommendation techniques is compared on ICS items, and it is proved that it will be adaptable method. The proposed method can be able to transfer the products since cold start transfers to non-cold start status. Artificial Neural Network (ANN) is employed here to extract the item content features. One of the user preferences such as temporal dynamics is used to obtain the contented characteristics into predictions to overcome those problems. For the process of classification we have used linear support vector machine classifiers to receive the better performance when compared with the earlier methods.
机译:为了对用户的项目进行推荐以进行历史用户评级,正在使用几种智能系统。最常见的方法是推荐系统。发挥主要作用的主要领域是社交网络,数字营销,在线购物和电子商务。推荐系统由几种建议技术组成。在这里,我们使用了众所周知的协作过滤(CF)方法。存在两种类型的问题,协作过滤主要解决这些问题。它们是完全冷启动(CCS)问题和不完全冷启动(ICS)问题。作者提出了三种新颖的方法,例如协同过滤,人工神经网络以及最后的支持向量机来解决CCS和ICS问题。基于特定的深度神经网络SADE,我们可以删除产品的特征。通过使用顺序激活的用户和产品特性,我们可以根据最新CF模型,时间SVD ++的应用来调整冷启动产品额定值。拟议的系统由Netflix评级数据集组成,该数据集用于执行冷启动项目评级预测的基线技术。在ICS项上比较了两种推荐技术的计算结果,证明了该方法的适应性。由于冷启动转移到非冷启动状态,因此所提出的方法能够转移产品。这里采用人工神经网络(ANN)提取项目内容特征。用户偏好之一(例如时间动态)用于将满足的特征获取到预测中以克服这些问题。在分类过程中,与早期方法相比,我们使用了线性支持向量机分类器来获得更好的性能。

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