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Fashion forecasting

Fashion forecasting began in France during the reign of Louis XIV.[1] It started as a way of communicating about fashion and slowly transformed into a way to become ahead of the times in the fashion industry. Fashion forecasting predicts the moods of society and consumers, along with their behavior and buying habits and bases what they may release in the coming future off of the forecast. Fashion trends tend to repeat themselves every 20 years, and fashion forecasting predicts what other trends might begin with the rotation of fashion as well. Fashion forecasting can be used for many different reasons, the main reason being staying on top of current trends and knowing what your consumer is going to want in the future. This method helps fashion brands know what to expect and what to begin producing ahead of time. Top name brands and high end companies such as Vogue[2] and Gucci even use this method to help their designers become even more informed on what is to come in the fashion industry.

Overview edit

Fashion forecasting is a global career that focuses on upcoming fashion trends. A fashion forecaster predicts the colors, patterns, fabrics, textures, materials, prints, graphics, beauty grooming, accessories, footwear, street styles, and many other styles that will be presented on different runway shows and in stores in upcoming seasons. The concept applies to not one but every single level of the fashion industry from smaller box stores like Urban Planet  to massive high end fashion companies like PRADA.[3] The fashion forecast process includes basic steps of understanding the vision of the business and profile of target customers, collecting information about available merchandise, preparing information, determining trend, and choosing merchandise appropriate for the company and target customers. For example, fashion trend forecasting saw trends for 2022 consisting of oversize shirts and sweatshirts, with a continuation of the puff sleeve trend, and dresses and tops retaining their volume[clarification needed] through to the end of the year.

Fashion forecasting consists of many different parts in order for it to be effective. There is long-term forecasting, which is the process of analyzing and evaluating trends that can be identified by scanning many different sources for information, and ensuring that the trend is lasting for over two years. Then there is short-term forecasting which focuses on current events both domestically and internationally as well as pop culture in order to identify possible trends that can be communicated to customers through different color plates, fabric, etc.

Long-term forecasting is the process of analyzing and evaluating trends that can be identified by scanning a variety of sources for information.[4] It is a fashion which lasts over two years.[5] When scanning the market and the consumers, fashion forecasters must follow demographics of certain areas, both urban and suburban, as well as examine the impact on retail and its consumers due to the economy, political system, environment, and culture. Long-term forecasting seeks to identify: major changes in international and domestic demographics, shifts in the fashion industry along with market structures, consumer expectations, values, and impulsion to buy, new developments in technology and science, and shifts in the economic, political, and cultural alliances between certain countries.[6] There are many specialized marketing consultants that focus on long-term forecasting and attend trade shows and other events that notify the industry on what is to come. Any changes in demographics and psychographics that are to affect the consumers needs and which will influence a company's business and particular niche market are determined.[6]

Short-term forecasting edit

Short-term forecasting focuses on current events both domestically and internationally as well as pop culture in order to identify possible trends that can be communicated to the customer through the seasonal color palette, fabric, and silhouette stories.[6] It gives fashion a modern twist to a classic look that intrigues our eyes. Some important areas to follow when scanning the environment are: current events, art, sports, science and technology. Short-term forecasting can also be considered fad forecasting.[6]

Difference between short-term and long-term forecasting edit

Two types of fashion forecasting are used: short-term forecasting, which envisions trends one to two years in the future and focuses on new product features such as color, textile, and style and long-term forecasting, which predicts trends five or more years out and focuses on the directions of the fashion industry with regard to materials, design production and retailing. Long-term forecasts contribute to a fashion firm's development strategies and help it make decisions related to repositioning or extending product lines, initiating new business, and reviving brand images.[7]

Responsibility for trend forecasting edit

Each retailer's trend forecasting varies and is mainly dependent upon whether the company is a wholesale brand or private label developer. "Every season, there are hundreds of designers showing breathtaking collections that the average consumer will never see. What does matter is who sees them—the in-house designers and buyers at fast fashion retailers, people who are paying close attention, identifying and predicting which styles, patterns and cuts will appeal to the average woman."[8]

Larger companies such as Forever 21 have their own trend departments where they follow the styles, fabrics, and colors for the upcoming seasons. This can also be referred to as vertical integration.[6] A company with its own trend department has a better advantage than those who do not because its developers are able to work together to create a unified look for their sales floor. Each seasonal collection offered by a product developer is the result of trend research focused on the target market it has defined for itself.

Product developers may offer anywhere from two to six seasonal collections per year, depending on the impact of fashion trends in a particular product category and price point.[9] Women's wear companies are more sensitive to the whims of fashion and may produce four to six lines a year. Men's wear companies present two to four lines a year, and children's wear firms typically present three to four seasonal collections. For each season a collection is designed by the product developers and is based on a specific theme, which is linked to the color and fabric story.[6]

A merchandiser also plays a key role in the direction of upcoming trends.[6] Different from developers, merchandisers have much more experience in buying and are knowledgeable in what consumers will be looking for. The designer takes the particular trends and then determines the styles, silhouettes and colors for the line and garments while creating an overall theme for the particular season.[6]

The higher classes' clothes start to lose their distinctiveness as the lower classes progressively emulate them. When this happens, new concepts that serve as the new class markers must take the place of the current trends. As a result, the upper classes start to influence the growth of fashion, while the lower classes serve as “replicators”.[citation needed]

Individual bloggers also contribute to fashion forecasting and influence designers and product teams.

Various ways to forecast trends edit

The classical way for fashion brands and agencies to forecast trends is by analyzing runway shows, trade shows, newspapers & magazines' information, and market research[10] In the past, these sources were the only ones available to fashion forecasters and brands and retailers would use this information to plan their future collections.[11] But the fashion industry has changed, and descriptive analytics is now accompanied by prescriptive and predictive analytics. The Internet, and consequently, social media, has accelerated the life cycle of trends and birthed phenomena like fast fashion and global supply chains. Trend virality, time-to-market speed, and consumer behavior has shifted in the last decade as a result of the digital age. There are now fashion forecasting services using new technologies and mostly AI, to predict what's coming next[12] Artificial intelligence in fashion forecasting is often used to analyze text and hashtags on social media, online collections published by brands and magazines, and consumer behavior on e-commerce.[13] On social media, machine learning is another way that AI is used to forecast fashion trends. This is the algorithmic process of analyzing a large database of images to determine the many different features of clothing and accessories. This raw data can then be translated into trend forecasts with human intervention, from determining a trend’s online visibility to its future market demand. Artificial intelligence has many applications in fashion forecasting that touch product assortment, customer behavior, design processes, marketing, and more. The growing importance of social media and customer perception has quickened the adoption pace of AI in fashion forecasting.

Demand forecasting edit

One of the most significant challenges confronting retailers and wholesalers in any sector is demand forecasting. Businesses may make informed judgments regarding pricing and company expansion plans thanks to the vital information that accurate demand forecasting provides about prospective earnings in their present market. Future sales may be lost if demand is overestimated; on the other hand, if suppliers are left with a surplus, significant discount strategies may be required, potentially resulting in losses and cash flow difficulties.

Demand forecasting is particularly complicated in the fashion business because of seasonal trends, a lack of data, and overall unpredictability.

Numerous factors must be considered by a smart fashion forecaster, including the political and economic context, geographical demography, customer expectations, market trends, internal corporate plans, and many more. Projecting previous patterns into the future and seeking indicators of change in order to anticipate impending events are the two basic objectives of "forecasting" in this context.

Forecasting methods edit

Usual methods edit

The primary building block of usual methods is typically a standard forecast, taken from a particular piece of software or the sales from the previous year. The practitioner then revises this standard by taking into consideration the explanatory factors. Pros of this method are that the influence of seasonality and the primary explanatory factors might make the outcome highly accurate. Cons of this method are that if there are too many variables being processed, the analysis will become inaccurate and difficult, making the task exceedingly tiresome. In addition to this, if there are too many elements, the findings will vary depending on the operator's level of expertise.

Advanced methods edit

The existence of historical data is the first factor to consider while developing a forecasting model.

The fashion industry tends to need forecasts at two levels of data aggregation:

The "family level" allows businesses to plan and arrange mid-term purchases, manufacturing, and supply since it consists of products from the same category (T-shirts, trousers, etc.). There is often historical data for this level of aggregation.

To restock and distribute goods in stores over a shorter time horizon, the "SKU level" is essential. References (SKU)  are fleeting since they are made for a single season only. As a result, historical data are unavailable.

Bibliography edit

  1. "Fashion Forecasting & Trend Resources." UC Libraries | University of Cincinnati. Web. 10 April 2011. <http://libraries.uc.edu/libraries/daap/resources/researchguides/design/forecasting.html>.
  2. "Forecasting Fashion Trends : NPR." NPR : National Public Radio : News & Analysis, World, US, Music & Arts : NPR. Web. 10 April 2011. https://www.npr.org/2003/09/17/1432978/forecasting-fashion-trends.
  3. Keiser, Sandra J., and Myrna B. Garner. Beyond Design: the Synergy of Apparel Product Development. New York: Fairchild Publications, 2008. Print.
  4. Miller, Claire Cain. Designers of High Fashion Enter the Age of High Tech: New York Times . 8 September 2008. <https://www.nytimes.com/2008/09/08/technology/08trend.html?pagewanted=print&_r=0>.
  5. "Fashion Trends: Analysis and Forecasting" Kim Eundeok Fiore (2013-05-09)
  6. "The Fashion Forecasters - a Hidden History of Color and Trend Prediction", edited by Regina Lee Blaszczyk and Ben Wubbs, 275 pages, published by Bloomsbury
  7. Svendsen, L., & Irons, J. (2006). Fashion: A Philosophy. Reaktion Books.[14]
  8. Gardino, G. B., Meo, R., & Craparotta, G. (2020). Multi-view Latent Learning Applied to Fashion Industry. Information Systems Frontiers, 23(1), 53–69. https://doi.org/10.1007/s10796-020-10005-8[15]
  9. Choi, T. M., Hui, C. L., & Yu, Y. (Eds.). (2014). Intelligent Fashion Forecasting Systems: Models and Applications. Scholars Portal Books. https://doi.org/10.1007/978-3-642-39869-8[16]

See also edit

References edit

  1. ^ Garcia, Clarice (2022). "Fashion forecasting: an overview from material culture to industry". Journal of Fashion Marketing and Management. 26 (3): 436–451. doi:10.1108/JFMM-11-2020-0241. S2CID 237650223. Retrieved 2023-02-05.
  2. ^ Cary, Alice. "Sexy Grunge, Maxi Skirts and Tom Ford's Gucci: The Trends Tipped To Take Over In 2023". Vogue. Retrieved 2023-02-05.
  3. ^ "Prada definition presented by Apparel Search". www.apparelsearch.com. Retrieved 2023-02-18.
  4. ^ Keiser, Sandra J.; Garner, Myrna B. (2012-06-15). Beyond Design: The Synergy of Apparel Product Development. A&C Black. ISBN 9781609012267.
  5. ^ "NellyRodi". www.nellyrodi.com (in French). Retrieved 2016-05-31.
  6. ^ a b c d e f g h K, Akhil J. (2015-09-22). Fashion Forecasting. Akhil JK.
  7. ^ Kim, Eundeok; Fiore, Ann Marie; Kim, Hyejeong (2013-05-09). Fashion Trends: Analysis and Forecasting. Berg. ISBN 9780857853158.
  8. ^ Mayer, Lindsay. "Q&A with the Founder of SHIPSHOW". Retrieved April 21, 2014.
  9. ^ "Product developers may offer anywhere from two to six seasonal collections per year, depending on the impact of fashion trends in a particular product category and price point. - Google Search". www.google.com. Retrieved 2016-03-08.
  10. ^ "Fashion Trend Forecasting".
  11. ^ ’The Fashion Forecasters - a Hidden History of Color and Trend Prediction’, edited by Regina Lee Blaszczyk and Ben Wubbs, 275 pages, published by Bloomsbury
  12. ^ Shi, Mengyun; Van Dyk Lewis (2020). "Using Artificial Intelligence to Analyze Fashion Trends". arXiv:2005.00986 [cs.CV].
  13. ^ "Trend Forecasting: How Does It Really Work?". Highsnobiety. 2017-04-05. Retrieved 2021-04-17.
  14. ^ Bancroft, Alison (September 2008). "Fashion: A Philosophy by Lars Svendsen. Translated by John Irons". Fashion Theory. 12 (3): 393–395. doi:10.2752/175174108x332369. ISSN 1362-704X. S2CID 191304781.
  15. ^ Gardino, Giovanni Battista; Meo, Rosa; Craparotta, Giuseppe (2021-02-01). "Multi-view Latent Learning Applied to Fashion Industry". Information Systems Frontiers. 23 (1): 53–69. doi:10.1007/s10796-020-10005-8. ISSN 1572-9419. S2CID 254574807.
  16. ^ Choi, Tsan-Ming; Hui, Chi-Leung; Yu, Yong, eds. (2014). Intelligent Fashion Forecasting Systems: Models and Applications. doi:10.1007/978-3-642-39869-8. ISBN 978-3-642-39868-1.

fashion, forecasting, this, article, multiple, issues, please, help, improve, discuss, these, issues, talk, page, learn, when, remove, these, template, messages, this, article, need, rewritten, comply, with, wikipedia, quality, standards, help, talk, page, con. This article has multiple issues Please help improve it or discuss these issues on the talk page Learn how and when to remove these template messages This article may need to be rewritten to comply with Wikipedia s quality standards You can help The talk page may contain suggestions July 2023 This article needs additional citations for verification Please help improve this article by adding citations to reliable sources Unsourced material may be challenged and removed Find sources Fashion forecasting news newspapers books scholar JSTOR October 2023 Learn how and when to remove this message Learn how and when to remove this message Fashion forecasting began in France during the reign of Louis XIV 1 It started as a way of communicating about fashion and slowly transformed into a way to become ahead of the times in the fashion industry Fashion forecasting predicts the moods of society and consumers along with their behavior and buying habits and bases what they may release in the coming future off of the forecast Fashion trends tend to repeat themselves every 20 years and fashion forecasting predicts what other trends might begin with the rotation of fashion as well Fashion forecasting can be used for many different reasons the main reason being staying on top of current trends and knowing what your consumer is going to want in the future This method helps fashion brands know what to expect and what to begin producing ahead of time Top name brands and high end companies such as Vogue 2 and Gucci even use this method to help their designers become even more informed on what is to come in the fashion industry Contents 1 Overview 2 Short term forecasting 3 Difference between short term and long term forecasting 4 Responsibility for trend forecasting 5 Various ways to forecast trends 6 Demand forecasting 7 Forecasting methods 7 1 Usual methods 7 2 Advanced methods 8 Bibliography 9 See also 10 ReferencesOverview editFashion forecasting is a global career that focuses on upcoming fashion trends A fashion forecaster predicts the colors patterns fabrics textures materials prints graphics beauty grooming accessories footwear street styles and many other styles that will be presented on different runway shows and in stores in upcoming seasons The concept applies to not one but every single level of the fashion industry from smaller box stores like Urban Planet to massive high end fashion companies like PRADA 3 The fashion forecast process includes basic steps of understanding the vision of the business and profile of target customers collecting information about available merchandise preparing information determining trend and choosing merchandise appropriate for the company and target customers For example fashion trend forecasting saw trends for 2022 consisting of oversize shirts and sweatshirts with a continuation of the puff sleeve trend and dresses and tops retaining their volume clarification needed through to the end of the year Fashion forecasting consists of many different parts in order for it to be effective There is long term forecasting which is the process of analyzing and evaluating trends that can be identified by scanning many different sources for information and ensuring that the trend is lasting for over two years Then there is short term forecasting which focuses on current events both domestically and internationally as well as pop culture in order to identify possible trends that can be communicated to customers through different color plates fabric etc Long term forecasting is the process of analyzing and evaluating trends that can be identified by scanning a variety of sources for information 4 It is a fashion which lasts over two years 5 When scanning the market and the consumers fashion forecasters must follow demographics of certain areas both urban and suburban as well as examine the impact on retail and its consumers due to the economy political system environment and culture Long term forecasting seeks to identify major changes in international and domestic demographics shifts in the fashion industry along with market structures consumer expectations values and impulsion to buy new developments in technology and science and shifts in the economic political and cultural alliances between certain countries 6 There are many specialized marketing consultants that focus on long term forecasting and attend trade shows and other events that notify the industry on what is to come Any changes in demographics and psychographics that are to affect the consumers needs and which will influence a company s business and particular niche market are determined 6 Short term forecasting editShort term forecasting focuses on current events both domestically and internationally as well as pop culture in order to identify possible trends that can be communicated to the customer through the seasonal color palette fabric and silhouette stories 6 It gives fashion a modern twist to a classic look that intrigues our eyes Some important areas to follow when scanning the environment are current events art sports science and technology Short term forecasting can also be considered fad forecasting 6 Difference between short term and long term forecasting editTwo types of fashion forecasting are used short term forecasting which envisions trends one to two years in the future and focuses on new product features such as color textile and style and long term forecasting which predicts trends five or more years out and focuses on the directions of the fashion industry with regard to materials design production and retailing Long term forecasts contribute to a fashion firm s development strategies and help it make decisions related to repositioning or extending product lines initiating new business and reviving brand images 7 Responsibility for trend forecasting editEach retailer s trend forecasting varies and is mainly dependent upon whether the company is a wholesale brand or private label developer Every season there are hundreds of designers showing breathtaking collections that the average consumer will never see What does matter is who sees them the in house designers and buyers at fast fashion retailers people who are paying close attention identifying and predicting which styles patterns and cuts will appeal to the average woman 8 Larger companies such as Forever 21 have their own trend departments where they follow the styles fabrics and colors for the upcoming seasons This can also be referred to as vertical integration 6 A company with its own trend department has a better advantage than those who do not because its developers are able to work together to create a unified look for their sales floor Each seasonal collection offered by a product developer is the result of trend research focused on the target market it has defined for itself Product developers may offer anywhere from two to six seasonal collections per year depending on the impact of fashion trends in a particular product category and price point 9 Women s wear companies are more sensitive to the whims of fashion and may produce four to six lines a year Men s wear companies present two to four lines a year and children s wear firms typically present three to four seasonal collections For each season a collection is designed by the product developers and is based on a specific theme which is linked to the color and fabric story 6 A merchandiser also plays a key role in the direction of upcoming trends 6 Different from developers merchandisers have much more experience in buying and are knowledgeable in what consumers will be looking for The designer takes the particular trends and then determines the styles silhouettes and colors for the line and garments while creating an overall theme for the particular season 6 The higher classes clothes start to lose their distinctiveness as the lower classes progressively emulate them When this happens new concepts that serve as the new class markers must take the place of the current trends As a result the upper classes start to influence the growth of fashion while the lower classes serve as replicators citation needed Individual bloggers also contribute to fashion forecasting and influence designers and product teams Various ways to forecast trends editThe classical way for fashion brands and agencies to forecast trends is by analyzing runway shows trade shows newspapers amp magazines information and market research 10 In the past these sources were the only ones available to fashion forecasters and brands and retailers would use this information to plan their future collections 11 But the fashion industry has changed and descriptive analytics is now accompanied by prescriptive and predictive analytics The Internet and consequently social media has accelerated the life cycle of trends and birthed phenomena like fast fashion and global supply chains Trend virality time to market speed and consumer behavior has shifted in the last decade as a result of the digital age There are now fashion forecasting services using new technologies and mostly AI to predict what s coming next 12 Artificial intelligence in fashion forecasting is often used to analyze text and hashtags on social media online collections published by brands and magazines and consumer behavior on e commerce 13 On social media machine learning is another way that AI is used to forecast fashion trends This is the algorithmic process of analyzing a large database of images to determine the many different features of clothing and accessories This raw data can then be translated into trend forecasts with human intervention from determining a trend s online visibility to its future market demand Artificial intelligence has many applications in fashion forecasting that touch product assortment customer behavior design processes marketing and more The growing importance of social media and customer perception has quickened the adoption pace of AI in fashion forecasting Demand forecasting editOne of the most significant challenges confronting retailers and wholesalers in any sector is demand forecasting Businesses may make informed judgments regarding pricing and company expansion plans thanks to the vital information that accurate demand forecasting provides about prospective earnings in their present market Future sales may be lost if demand is overestimated on the other hand if suppliers are left with a surplus significant discount strategies may be required potentially resulting in losses and cash flow difficulties Demand forecasting is particularly complicated in the fashion business because of seasonal trends a lack of data and overall unpredictability Numerous factors must be considered by a smart fashion forecaster including the political and economic context geographical demography customer expectations market trends internal corporate plans and many more Projecting previous patterns into the future and seeking indicators of change in order to anticipate impending events are the two basic objectives of forecasting in this context Forecasting methods editUsual methods edit The primary building block of usual methods is typically a standard forecast taken from a particular piece of software or the sales from the previous year The practitioner then revises this standard by taking into consideration the explanatory factors Pros of this method are that the influence of seasonality and the primary explanatory factors might make the outcome highly accurate Cons of this method are that if there are too many variables being processed the analysis will become inaccurate and difficult making the task exceedingly tiresome In addition to this if there are too many elements the findings will vary depending on the operator s level of expertise Advanced methods edit The existence of historical data is the first factor to consider while developing a forecasting model The fashion industry tends to need forecasts at two levels of data aggregation The family level allows businesses to plan and arrange mid term purchases manufacturing and supply since it consists of products from the same category T shirts trousers etc There is often historical data for this level of aggregation To restock and distribute goods in stores over a shorter time horizon the SKU level is essential References SKU are fleeting since they are made for a single season only As a result historical data are unavailable Bibliography edit Fashion Forecasting amp Trend Resources UC Libraries University of Cincinnati Web 10 April 2011 lt http libraries uc edu libraries daap resources researchguides design forecasting html gt Forecasting Fashion Trends NPR NPR National Public Radio News amp Analysis World US Music amp Arts NPR Web 10 April 2011 https www npr org 2003 09 17 1432978 forecasting fashion trends Keiser Sandra J and Myrna B Garner Beyond Design the Synergy of Apparel Product Development New York Fairchild Publications 2008 Print Miller Claire Cain Designers of High Fashion Enter the Age of High Tech New York Times 8 September 2008 lt https www nytimes com 2008 09 08 technology 08trend html pagewanted print amp r 0 gt Fashion Trends Analysis and Forecasting Kim Eundeok Fiore 2013 05 09 The Fashion Forecasters a Hidden History of Color and Trend Prediction edited by Regina Lee Blaszczyk and Ben Wubbs 275 pages published by Bloomsbury Svendsen L amp Irons J 2006 Fashion A Philosophy Reaktion Books 14 Gardino G B Meo R amp Craparotta G 2020 Multi view Latent Learning Applied to Fashion Industry Information Systems Frontiers 23 1 53 69 https doi org 10 1007 s10796 020 10005 8 15 Choi T M Hui C L amp Yu Y Eds 2014 Intelligent Fashion Forecasting Systems Models and Applications Scholars Portal Books https doi org 10 1007 978 3 642 39869 8 16 See also editDemographics Psychographics Niche marketReferences edit Garcia Clarice 2022 Fashion forecasting an overview from material culture to industry Journal of Fashion Marketing and Management 26 3 436 451 doi 10 1108 JFMM 11 2020 0241 S2CID 237650223 Retrieved 2023 02 05 Cary Alice Sexy Grunge Maxi Skirts and Tom Ford s Gucci The Trends Tipped To Take Over In 2023 Vogue Retrieved 2023 02 05 Prada definition presented by Apparel Search www apparelsearch com Retrieved 2023 02 18 Keiser Sandra J Garner Myrna B 2012 06 15 Beyond Design The Synergy of Apparel Product Development A amp C Black ISBN 9781609012267 NellyRodi www nellyrodi com in French Retrieved 2016 05 31 a b c d e f g h K Akhil J 2015 09 22 Fashion Forecasting Akhil JK Kim Eundeok Fiore Ann Marie Kim Hyejeong 2013 05 09 Fashion Trends Analysis and Forecasting Berg ISBN 9780857853158 Mayer Lindsay Q amp A with the Founder of SHIPSHOW Retrieved April 21 2014 Product developers may offer anywhere from two to six seasonal collections per year depending on the impact of fashion trends in a particular product category and price point Google Search www google com Retrieved 2016 03 08 Fashion Trend Forecasting The Fashion Forecasters a Hidden History of Color and Trend Prediction edited by Regina Lee Blaszczyk and Ben Wubbs 275 pages published by Bloomsbury Shi Mengyun Van Dyk Lewis 2020 Using Artificial Intelligence to Analyze Fashion Trends arXiv 2005 00986 cs CV Trend Forecasting How Does It Really Work Highsnobiety 2017 04 05 Retrieved 2021 04 17 Bancroft Alison September 2008 Fashion A Philosophy by Lars Svendsen Translated by John Irons Fashion Theory 12 3 393 395 doi 10 2752 175174108x332369 ISSN 1362 704X S2CID 191304781 Gardino Giovanni Battista Meo Rosa Craparotta Giuseppe 2021 02 01 Multi view Latent Learning Applied to Fashion Industry Information Systems Frontiers 23 1 53 69 doi 10 1007 s10796 020 10005 8 ISSN 1572 9419 S2CID 254574807 Choi Tsan Ming Hui Chi Leung Yu Yong eds 2014 Intelligent Fashion Forecasting Systems Models and Applications doi 10 1007 978 3 642 39869 8 ISBN 978 3 642 39868 1 Retrieved from https en wikipedia org w index php title Fashion forecasting amp oldid 1178637807, wikipedia, wiki, book, books, library,

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