• Title/Summary/Keyword: Hayashi Quantification III

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Shrinkage Solution of Quantification Method III (수량화 제3 방법의 축소 해)

  • Huh Myung-Hoe;Lee Yong-Goo
    • The Korean Journal of Applied Statistics
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    • v.19 no.2
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    • pp.331-338
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    • 2006
  • Quantification method III is designed by C. Hayashi as visualizing technique for two-way cross-classified tables. Specially in Japan, its usefulness is timely proven in social and marketing surveys. In several instances, relatively large quantification scores are assigned to low-frequency categories. Thus, they lead to unreliable data interpretation. The aim of this study is to develop stable solution to overcome such traits of quantification method III. The solution is of shrinkage type induced by small perturbations and is applied to a multiple response data obtained in a Korean social survey.

Visualizing Large Two-way Crosstabs by PLS Method (PLS 방법에 의한 "큰" 2원 교차표의 시각화)

  • Lee, Yong-Goo;Choi, Youn-Im
    • Communications for Statistical Applications and Methods
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    • v.16 no.3
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    • pp.421-428
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    • 2009
  • On the visualization of categorical data, if the number of categories is small, we can consider Hayashi Quantification Method 3 for visualization of the categories of the variables. But it is known that the method is unstable because it quantifies more significantly for the small frequency categories rather than large frequency categories. The purpose of this research is to propose the visualization of large two-way crosstabulation data by PLS methods for checking the relationship between the categories of row and column variables. In this research, we utilize the PLS visualization methods (Huh et al., 2007) that is proposed for visualization of the qualitative data to visualize the categories of the large categorical data. We also compared both methods by applying them to real data, and studied the results from PLS visualization method on the real categorized data with many categories.

Clothing-Recommendation system based on emotion and weather information (감정과 날씨 정보에 따른 의상 추천 시스템)

  • Ugli, Sadriddinov Ilkhomjon Rovshan;Park, Doo-Soon
    • Proceedings of the Korea Information Processing Society Conference
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    • 2021.11a
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    • pp.528-531
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    • 2021
  • Nowadays recommendation systems are so ubiquitous, where our many decisions are being done by the means of them. We can see recommendation systems in all areas of our daily life. Therefore the research of this sphere is still so active. So far many research papers were published for clothing recommendations as well. In this paper, we propose the clothing-recommendation system according to user emotion and weather information. We used social media to analyze users' 6 basic emotions according to Paul Eckman theory and match the colour of clothing. Moreover, getting weather information using visualcrossing.com API to predict the kind of clothing. For sentiment analysis, we used Emotion Lexicon that was created by using Mechanical Turk. And matching the emotion and colour was done by applying Hayashi's Quantification Method III.

Personalized Clothing and Food Recommendation System Based on Emotions and Weather (감정과 날씨에 따른 개인 맞춤형 옷 및 음식 추천 시스템)

  • Ugli, Sadriddinov Ilkhomjon Rovshan;Park, Doo-Soon
    • KIPS Transactions on Software and Data Engineering
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    • v.11 no.11
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    • pp.447-454
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    • 2022
  • In the era of the 4th industrial revolution, we are living in a flood of information. It is very difficult and complicated to find the information people need in such an environment. Therefore, in the flood of information, a recommendation system is essential. Among these recommendation systems, many studies have been conducted on each recommendation system for movies, music, food, and clothes. To date, most personalized recommendation systems have recommended clothes, books, or movies by checking individual tendencies such as age, genre, region, and gender. Future generations will want to be recommended clothes, books, and movies at once by checking age, genre, region, and gender. In this paper, we propose a recommendation system that recommends personalized clothes and food at once according to the user's emotions and weather. We obtained user data from Twitter of social media and analyzed this data as user's basic emotion according to Paul Eckman's theory. The basic emotions obtained in this way were converted into colors by applying Hayashi's Quantification Method III, and these colors were expressed as recommended clothes colors. Also, the type of clothing is recommended using the weather information of the visualcrossing.com API. In addition, various foods are recommended according to the contents of comfort food according to emotions.