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January 14, 2019

AI can help retailers understand the consumer

Credit: IBM
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Credit: IBM

Consumer brands and retailers often struggle to fully understand ever-changing customer needs. That is why you mostly find XL sizes in your favorite fashion store and no M sizes. That is why you have to spend hours looking for the style you saw on Instagram and still not find it. That is why the cost of dead inventory to fashion retailers in the US alone is an estimated to be a whopping . And that is part of the reason why the US generated .

This is not because of any lack of intention or effort in the industry; rather, it is extremely difficult to understand at scale. Characterizing consumers with broad brush definitions of age, gender and income is not effective given diverse and ever-changing , and retailers now need to look at —even down to single individuals. Increasingly, consumers are driving trends rather than merchants defining them, and this goes hand in hand with much more experimentation and disruption in the market.

To create and sell the "next big thing" in such a dynamic environment, designers, buyers and merchandisers must use their own creativity but also consider, with unprecedented granularity, how consumer preferences are changing and how different design, merchandising and marketing choices will perform. This is where AI and automation come in.

For example, consider a fashion retail buyer. She is responsible for the financial success of the merchandise she selects in any given season, but it's impossible for her to predict the performance of any design 12 months before the target season, or to identify the best promotional interventions to apply in-season. This is because she has very little visibility into how consumer preferences are changing across her stores over time, and how competing products are performing in the market.

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Imagine an AI driven system that could analyze the natural language text of millions of online customer reviews and the images of all products in the market to summarize key relationships between location-specific customer sentiment and product features. For instance, how customers are responding to color block pullovers in Kansas City versus in Buffalo, and what attribute is the likely cause of lower customer sentiment for her color block pullovers versus competing color block pullovers. Such information for her in-market products and new planned products would help her dramatically improve her assortment, pricing and markdown, and marketing plans.

Market sentiment computed for visually similar floral tops across three different brands. The dashboard shows consumer preference for this type of product in different parts of the country, and recommended stock interventions at different stores.

Similarly, consider a sales manager for a yogurt brand. With a system that could analyze cross-brand sales of foods across the country to produce high quality predictions of the demand for the spinach artichoke flavored yogurt produced by the company, the sales manager then could negotiate product introductions and planograms with retailers. A majority of such negotiations fail today in the absence of such capability.

In fact, IBM's recent study of more than 1,900 retail and consumer product leaders shows that the adoption of intelligent automation in the retail and consumer products industries is projected to balloon from 40 percent of companies today to more than 80 percent in three years.

Our team at IBM Research – India collaborated with the IBM MetroPulse team to bring such first-of-a-kind, AI-driven capabilities to MetroPulse, an industry platform that brings together voluminous market, external and client datasets. The new capabilities use AI and automation to fuse these structured and unstructured datasets around semantic, visual and location contexts and uncovers fine-grained insights about customer preferences hidden in this fused data. These insights will help consumer brands and retailers make smarter choices about product design, inventory planning, demand forecasting and product assortment that are in tune with dynamic consumer preferences.

The platform has three layers, each with deep industry content:

The data layer, which consists of

Incorporating such multiple data sets is critical to getting demand sensing and forecasting right, as also noted in Supply Chain Management 2018: In Service of The Customer, Retail Systems Research, Dec 2018 where 60 – 70 percent of respondents see "a lot of value" from considering new data such as sentiment, trade area data and past promotions into demand forecasting.

The knowledge layer, which consists of

The industry intelligence layer, which consists of

You can try out these new MetroPulse capabilities with real-world data at the event in New York City in January, 2019, or see for further details.

Provided by IBM

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