家装行业的建议,挑战和机遇

Khalifeh Al Jadda
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引用次数: 0

摘要

零售业受到电子商务革命的冲击比其他任何行业都要大。一些大型零售商因此倒闭或申请破产,比如西尔斯和玩具反斗城。然而,由于缺乏电子商务解决方案,零售行业的一些垂直行业仍然很强劲,没有受到干扰,这些解决方案无法说服客户放弃现有的实体店,转而选择在线体验。家装是这种垂直领域的最佳例子,在这个领域,电子商务“尚未”颠覆这个领域,也没有给仍然严重依赖实体店的领先公司带来问题。话虽如此,家装零售商认识到,如果不投资建立一个强大的在线业务,为他们的实体店提供无缝体验,就会有风险。因此,在这个价值数千亿美元的行业中,大多数领先的零售商都开始为所有具有挑战性的问题建立自己的内部解决方案,让购物者在网上购物时获得无缝体验。像其他在线零售商一样,推荐系统在这个行业中扮演着至关重要的角色。因此,投资建立个性化、可扩展和可靠的推荐系统非常重要,该系统可以主动帮助购物者在网站上发现吸引他们的产品,并符合他们的意图和兴趣,然后在他们离开网站后通过电子邮件或社交媒体重新吸引他们与他们感兴趣的产品和内容。作为世界上最大的家装零售商The Home Depot的核心推荐团队的高级经理,我处理利用人工智能,机器学习和数据科学的尖端技术构建这样的推荐系统的挑战。在这次演讲中,我想讨论和强调在家装建议中面临的以下挑战:(1)基于项目的建议:家装零售的一个独特方面是基于项目的购物。大多数家装零售的顾客被归类为“自己动手”,这些顾客不是家装专业人士,但他们对自己在家里建造或修理东西感兴趣。对于那些大多数时候更喜欢去实体店的客户来说,他们可以和商店的店员谈谈他们的项目,让店员帮助他们获得项目所需的工具和材料。在网上建立类似的体验是非常具有挑战性的,所以我将谈谈我们在家得宝所做的,利用多模式学习来建立基于项目的推荐,以实现这一目标。(2)项目相关组(IRG):家装门户网站上最重要的建议之一是项目相关组(IRG),其中包括配件(滤水器是冰箱的配件),收藏品(水龙头有淋浴头,毛巾条和毛巾环,与收藏品的风格相匹配)和零件(抽屉手柄)。推荐这些不同IRG的挑战从视觉兼容性到功能理解各不相同。我将讨论我们如何利用计算机视觉、深度学习、NLP、NLU和领域知识来解决这些问题,并生成高质量的IRG建议。我也会在这次演讲中谈到家装行业中推荐系统面临的其他挑战比如兴趣和意图变化的速度以及客户和产品之间互动的稀缺性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommendation in home improvement industry, challenges and opportunities
Retail industry has been disrupted by the e-commerce revolution more than any other industry. Some giant retailers went out of business or filed for bankruptcy as a result of that like Sears and Toys R Us. However, some verticals in the retail industry are still robust and not been disrupted due to the lack of e-commerce solutions that convinced customers to turn their back to the existing physical stores in favor of the online experience. Home improvement is the best example of such vertical where e-commerce has not "yet" disrupted the domain and caused problems to the leading companies which still rely heavily on physical stores. That being said, home improvement retailers recognized the risk of not investing in building a robust online business that support their physical stores in a seamless experience so most of the leading retailers in this hundred-billion-dollar industry started building their in-house solutions for all the challenging problems to give their shoppers a seamless experience when they shop online. Recommender systems playing crucial role in this industry like any other online retailers. Therefore, it is very important to invest in building personalized, scalable, and reliable recommender system that proactively help shoppers discover products that engage them and match their intent and interest while on the website then reengage them with products and content that align with their interest after they leave the website via email or social media. As a Sr. Manager of Core Recommendations team at The Home Depot which is the largest home improvement retailer in the world, I deal with the challenges of building such recommender system utilizing the cutting-edge technologies in AI, machine learning, and data science. In this talk I would like to discuss and highlight the following challenges in the recommendations for home improvement: (1) Project-based recommendations: One of the unique aspects on home improvement retail is project-based shopping. Most of the visitors of home improvement retails are classified as "Do It Yourself" where those customers who are non-home improvement professionals, but they are interested in building or fixing something in their home themselves. For those customers they prefer to go to the physical store most of the time, so they can talk to a store associate about their project and get the associate help in getting the needed tools and materials for their project. It is very challenging to build similar experience online so I will talk about what we have done at Home Depot to build a project-based recommendation utilizing multi-modal learning to achieve that goal. (2) Item Related Groups (IRG): One of the most important recommendations on the home improvement portals is the Item Related Groups (IRG) which includes accessories (water filter is an accessory for a fridge), collections (faucet has shower head, towel bar, and towel ring which match the style as collection), and Parts (handler of a drawer). The challenges in recommending those different IRG vary from visual compatibility to functionality understanding. I will discuss how we are leveraging computer vision, Deep Learning, NLP, NLU, and domain knowledge to tackle these problems and generate high quality IRG recommendations. I will also cover in this talk the other challenges that face recommender systems in home improvement industry like the velocity of changing interest and intent and the sparsity of interactions between customers and products.
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