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Dimensionality reduction on slope one predictor in the food recommender system

机译:食品推荐系统中的斜坡一维斜率减少的维数

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Slope One Predictor is one of the most successful approaches for predicting the online rating-base collaborative filtering. The researcher examined the use of dimensionality reduction to improve performance for a new data set analysis in the process Slope One prediction which is used for analyzing data related to persons' likes or interests in the menu of food that people do not want to eat similar dishes iteratively. This paper presents a method for extracting the user's relationally similar behavior by searching for best neighbors in computing deviations between varied pairs of items or deviation matrix used this matrix to make predictions. The goals of improving accuracy of recommender systems that the researchers consider the menu fit for the data; therefore, finding the best technique and using the recommended data as needed by the inquirer is essential and vital in the future.
机译:斜率一个预测器是预测在线额定基础协同滤波的最成功的方法之一。研究人员研究了使用维度降低的使用,以提高流程斜率的新数据集分析的性能,这是一种预测,该预测用于分析与人们不想吃类似的食物的食物中的人口或兴趣的数据迭代地。本文介绍了一种通过在使用该矩阵之间的计算偏差中搜索最佳邻居来提取用户的关系性类似行为的方法,这些矩阵使用该矩阵来进行预测。提高研究人员认为菜单适合数据的推荐系统的准确性的目标;因此,寻找最佳技术并根据要求使用推荐数据,在未来至关重要和至关重要。

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