2022
DOI: 10.1155/2022/5745457
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Clothing Design Style Recommendation Using Decision Tree Algorithm Combined with Deep Learning

Abstract: Most clothing recommendation methods have problems such as high resource consumption and inconsistent subjectively labeled clothing labels. Based on this, a multilabel classification algorithm based on deep learning (DL) theory is introduced, based on which the clothing style recognition model is constructed. Next, the concept of the decision tree algorithm is given, and the clothing recommendation model is built based on this algorithm. Moreover, the clothing style recognition model based on a multilabel clas… Show more

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Cited by 5 publications
(1 citation statement)
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“…Data preprocessing was applied to the disease data of patients collected from Kaggle, deleting partial data, incomplete, digitized text data. Next, the processed data were respectively trained by naive Bayes algorithm [ 24 ], logistic-regression algorithm [ 25 ], decision-tree algorithm [ 26 ], random-forest algorithm [ 27 ], gradient-enhanced-tree algorithm, and multi-layer perceptron [ 28 ]. Finally, the results after training were analyzed by LIME algorithm [ 29 , 30 ] to explain the reasons for recommending the results.…”
Section: Proposed Methodsmentioning
confidence: 99%
“…Data preprocessing was applied to the disease data of patients collected from Kaggle, deleting partial data, incomplete, digitized text data. Next, the processed data were respectively trained by naive Bayes algorithm [ 24 ], logistic-regression algorithm [ 25 ], decision-tree algorithm [ 26 ], random-forest algorithm [ 27 ], gradient-enhanced-tree algorithm, and multi-layer perceptron [ 28 ]. Finally, the results after training were analyzed by LIME algorithm [ 29 , 30 ] to explain the reasons for recommending the results.…”
Section: Proposed Methodsmentioning
confidence: 99%