CNN기반 상품분류 딥러닝모델을 위한 학습데이터 영향 실증 분석
Empirical Study on Analyzing Training Data for CNN-based Product Classification Deep Learning Model
Citations

WEB OF SCIENCE

0
Citations

SCOPUS

0

초록

In e-commerce, rapid and accurate automatic product classification according to product information is important. Recent developments in deep learning technology have been actively applied to automatic product classification. In order to develop a deep learning model with good performance, the quality of training data and data preprocessing suitable for the model are crucial. In this study, when categories are inferred based on text product data using a deep learning model, both effects of the data preprocessing and of the selection of training data are extensively compared and analyzed. We employ our CNN model as an example of deep learning model. In the experimental analysis, we use a real e-commerce data to ensure the verification of the study results. The empirical analysis and results shown in this study may be meaningful as a reference study for improving performance when developing a deep learning product classification model.

키워드

Product ClassificationCNN ModelDeep LearningTraining DataPreprocessing상품분류CNN 모델딥러닝학습데이터사전처리
제목
CNN기반 상품분류 딥러닝모델을 위한 학습데이터 영향 실증 분석
제목 (타언어)
Empirical Study on Analyzing Training Data for CNN-based Product Classification Deep Learning Model
저자
이나경김주연심준호
DOI
10.7838/jsebs.2021.26.1.107
발행일
2021-02
저널명
한국전자거래학회지
26
1
페이지
107 ~ 126