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Implementation Of Naive Bayes Algorithm With Particle Swarm Optimization In Classification Of Dress Recommendation

机译:穿衣推荐分类中朴素贝叶斯算法与粒子群算法的实现

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Fashion is considered as a cycle of reflection of unique social, cultural and environmental characteristics in time besides playing an important role in completing one's self-image. Current developments in technology and information are foremost for the growth in the amount of data held been recorded and stored in large databases (data mountains) to turn into a piece of knowledge by classifying using machine learning. One of the classification methods that can be used is Naïve Bayes. The purpose of this study is Dress Classification Recommendation using the Particle Swarm Optimization-based Naïve Bayes algorithm by increasing the existing accuracy value. This study uses a public Dresses Attribute Sales dataset downloaded at the UCI Machine Learning repository with 13 Attributes and has two labels, 1 for recommendation and 0 for no recommendation. The amount of data is 500 data. The evaluation used is to use the Confusion Matrix, to determine the value of accuracy, precision, and recall. The results of the experiments carried out by using the optimization feature particle swarm optimization with population size 20 parameters and maximum of number generation 35, then using Cross-Validation with Naïve Bayes algorithm. The value of Cross-Validation used is 3, 5, 7 and 10, that the highest value of accuracy is to use the value of Cross-Validation (K Fold) K 10, with an accuracy value of 65.40% with precision 67.28% and recall 80.34%.
机译:除了在完成一个人的自我形象方面发挥重要作用外,时尚被认为是时间上独特的社会,文化和环境特征的反映循环。技术和信息的最新发展最重要的是,所记录的数据存储和存储在大型数据库(数据山)中的数量的增长,通过使用机器学习进行分类,可以转化为一种知识。可以使用的分类方法之一是朴素贝叶斯。这项研究的目的是通过增加现有的精度值,使用基于粒子群优化的朴素贝叶斯算法进行着装分类推荐。这项研究使用从UCI机器学习存储库下载的公共着装属性销售数据集,该数据集具有13个属性,并且具有两个标签,其中1个为推荐,0个为不推荐。数据量为500个数据。所使用的评估是使用混淆矩阵来确定准确性,精确度和召回率的值。实验的结果是通过使用种群数量为20且参数最大数目为35的优化特征粒子群优化方法,然后使用带有朴素贝叶斯算法的交叉验证进行的。所使用的交叉验证的值为3、5、7和10,精度的最高值是使用交叉验证(K折)K 10的值,精度值为65.40%,精度为67.28%,而召回率80.34%。

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