This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer analytics, show the importance of being able to forecast fashion consumer trends and then presents a univariate forecast evaluation of fashion consumer Google Trends to motivate more academic research in this subject area. Using Burberry—a British luxury fashion house—as an example, we compare several parametric and nonparametric forecasting techniques to determine the best univariate forecasting model for “Burberry„ Google Trends. In addition, we also introduce singular spectrum analysis as a useful tool for denoising fashion consumer Google Trends and apply a recently developed hybrid neural network model to generate...
This study examined whether the behaviour of Internet search users obtained from Google Trends contr...
Compared to other retail industries, fashion retail industry faces many challenges to foresee future...
Developing models and algorithms to draw causal inference for time series is a long standing statist...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
In time-series forecasting, statistical methods and various newly emerged models, such as artificial...
eTryon’s WP3 is centered around building systems for 1) pattern recognition in fashion imagery, 2) f...
This thesis explored how artificial intelligence (AI), media platforms, and media users affect pract...
About this book:In a fast-moving global industry how does anyone know what the next trend will be? T...
Under its partnership with the Banque de France, the Federation of E-Commerce and Distance Selling (...
[EN] Consumer expenditure constitutes the largest component of Gross Domestic Product in developed c...
Companies in the fashion industry are struggling with forecasting demand due to the short-selling se...
Estimating the preferences of consumers is of utmost importance for the fashion industry as appropri...
Compared to other industries, fashion apparel retail faces many challenges in predicting future dema...
none3In this paper, we show how artificial intelligence techniques can be applied for the forecastin...
This study examined whether the behaviour of Internet search users obtained from Google Trends contr...
Compared to other retail industries, fashion retail industry faces many challenges to foresee future...
Developing models and algorithms to draw causal inference for time series is a long standing statist...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
In time-series forecasting, statistical methods and various newly emerged models, such as artificial...
eTryon’s WP3 is centered around building systems for 1) pattern recognition in fashion imagery, 2) f...
This thesis explored how artificial intelligence (AI), media platforms, and media users affect pract...
About this book:In a fast-moving global industry how does anyone know what the next trend will be? T...
Under its partnership with the Banque de France, the Federation of E-Commerce and Distance Selling (...
[EN] Consumer expenditure constitutes the largest component of Gross Domestic Product in developed c...
Companies in the fashion industry are struggling with forecasting demand due to the short-selling se...
Estimating the preferences of consumers is of utmost importance for the fashion industry as appropri...
Compared to other industries, fashion apparel retail faces many challenges in predicting future dema...
none3In this paper, we show how artificial intelligence techniques can be applied for the forecastin...
This study examined whether the behaviour of Internet search users obtained from Google Trends contr...
Compared to other retail industries, fashion retail industry faces many challenges to foresee future...
Developing models and algorithms to draw causal inference for time series is a long standing statist...