What is Size Finder?
Goal of Size Finder technologies to help shoppers find the right size the first time to reduce the number of returned clothing and footwear products due to sizing to improve customer satisfaction and give a good reason to shop in stores that offer Size Finder. And the bigger picture is sustainability, and the profitability of the business.
The Evolution of Size Finder Technology
Due to the fascinating evolution of technology, we have moved way beyond those Basic Size Charts. Now retailers use Size Finder technologies that use many data sources, different algorithms to try to predict the perfect size and fit for shoppers online.
The concept of a Size Finder is not entirely new; however, its capabilities have been vastly enhanced over the years. Initially, these tools relied on basic algorithms that considered general measurements to suggest sizes. Today, advanced Size Finders leverage sophisticated artificial intelligence and machine learning algorithms to provide highly accurate and personalised size recommendations. By analysing a shopper’s unique body measurements, preferences, and even past purchase behaviours, these tools can suggest sizes with remarkable precision.

Size Finder Types
The ultimate question is can Size Finders actually solve the problem and can we say goodbye to those online refunds due to sizing – that’s the dream. We are breaking down a bunch of different types of Size Finder technologies here, so you can think of them as a spectrum of complexity. So, on the simpler side we have Size Chart Comparative digital versions and on the most complex side we have Predictive AI with Adaptive Hybrid Systems.
Comparateurs de diagrammes de taille statiques Versions numériques
Static size chart comparative digital versions of the size charts you find in every store. These are generic based on what the brand thinks should fit, but no relation to individual product style. Easy for retailers to implement some free apps on the Shopify App Store and other app stores, but these are not very personalised to the brand, nor to the shopper, and we are not even going into more variables that affect sizing. So, these are not very helpful and not groundbreaking, it is level one of Size finder technologies.
Outils statistiques de base
Think of them as the predecessors to the more advanced systems. These types of tools on Shopify App store cost around $50 and less per month, despite various pricing models each has. This type of Size Finder technology takes a few basic measurements into account, despite them asking about height, weight and some body shapes, it lacks the complexity and the predictive power of the fancier ones of the more advanced systems that use more sophisticated statistical methods or incorporate machine learning. So, they are not quite smart with limited data and no understanding about actual products or body shapes whatsoever. In more simple terms it’s like a calculator.
Comparateurs de marque à marque
C'est comme si vous regardiez un tableau des tailles et que vous vous disiez : "Je suis taille moyenne chez H&M, donc je suis taille moyenne dans cette marque". C'est magique, n'est-ce pas ? Dans de nombreux cas, vous constaterez que vos données sont identiques à la réponse que vous obtiendrez. Ce n'est pas très sophistiqué. Comme vous le savez, chaque style et chaque taille peuvent être totalement différents et même le même produit dans des couleurs différentes peut être différent. Les acheteurs et les journalistes l'ont signalé à maintes reprises. ici to see an example. In other words this type of Size Finder is rubbish in, rubbish out. Some of them have elements of Machine Learning (which is labelled in marketing materials as AI) to bridge the gap between rubbish in, rubbish out, however it is impossible to bridge this gap as each product is unique on how it fits, how it stretches, in what style it should be worn etc. Then this needs thousands if not millions data points, by the time it collects this data even at global scale product reaches its end of season, meaning these technologies can never learn at fit level, and they are lightyears away from understanding product fit at Product ID level, and the colour level is even further away than lightyears, and then add in the mix of different sized people that are tall and thin, wide hips etc. You can see the limitations clearly already. Sizing is so inconsistent across different brands and even inside the brand making Brand to Brand Comparators, the results are very icy. Read here about H&Ms sizing inconsistency ici.
Outils de comparaison statistique
This is a step up in level of sophistication in Size Finder technologies. These use data from a lot of shoppers to make size recommendations at category level, some try at product ID level, but product ID level is too challenging for this technology. They take thousands, millions of shoppers, associate things like weight, height, some body shape inputs, with the purchases and assume that other shoppers with the identical inputs might fit into the same size. Which is not the case in the first place, secondly these need millions of data points and these are typically available for well known brands and the most common sizes like S, M, L. Anything beyond these becomes a struggle and peppered with inaccuracies. This type of Size Finder technology gets better over time as they analyse more data, but as mentioned, accuracy diminishes when going beyond people that are in the middle of the sizing spectrum. When going for fit, the product ID level results become very flaky, so there is no need to even discuss further about the capabilities at the colour level of such technology. These quite often claim to be Artificial Intelligence, this is where the grey zone starts about the definition of “What is AI?”.
L'IA prédictive avec les systèmes hybrides
We are talking about systems that leverage artificial intelligence and machine learning to create highly personalised size recommendations. Systems also gather information about age, weight, height, body shape form which can be outputted body measurements. AI analyses all information about the actual shoppers visiting specific online stores, past purchases. It learns purely from the actual customers in that store, not something that has happened in another country in another store with similar products. In other words, data is not clouded about history somewhere else. It purely learns from a single retailer’s actual data and if a retailer trades in multiple locales, the evolution is specific to the locale goods being traded. All this, along with brand specific size charts and it uses really complex algorithms to understand every single SKU from the actual inventory that the retailer holds, yet again not similar products. Since visually the same product produced in different factories or in a different year can fit differently and the same person would need a different size. Technology is like your personal shopping assistant that consciously learns at multi-level dimensions. Getting data from various sources, visual analysis, customer feedback, sales, refunds data, past purchases and more. Different sizing by category, fit and even product ID, despite everything looking the same at the front end, the customer in the back end, there are complex neural networks and adaptive AI systems orchestrating the process to determine the right size for the shopper. You can then imagine what insights you can get with the collected data to optimise the business. Do you know how much money you leave on the table? You not only unlock missed sales opportunities, but reduce operational costs due to less refunds, making your business more profitable. But these types of tools come with their own price tag. This is not your Shopify App store, a copy/paste app printed for every single retailer the same. This type of Size Finder requires precision in connecting systems and the custom integration is carried out for every single client to adapt to their systems and data sources.
Solutions de balayage corporel
Body scanning tools used to try and help these sizing issues have not been a popular choice amongst customers. The invasive process of having to upload images of your body to an app has left some customers feeling uneasy and uncomfortable. It is intrusive and too time consuming, thus pretty much no customers are using them. Read a case study about a retailer who moved from body scanning solution to Prime AI’s Size Finder ici. Vous pouvez également lire ici to see the comparison of Prime AI’s Size Finder vs. Body Scanning Solutions.
Why Use Size Finder?
- Le développement durable est de plus en plus important pour tous les secteurs, et la mode en ligne ne fait pas exception. Pensez à tous ces retours, à tous ces vêtements expédiés dans les deux sens. Si la technologie peut aider ne serait-ce qu'un petit pourcentage d'acheteurs à trouver la bonne taille du premier coup, l'impact sur l'environnement deviendra vraiment substantiel lorsque cette technologie sera adoptée à grande échelle. C'est bon pour les consommateurs, c'est bon pour la planète. Il devrait donc être obligatoire pour les détaillants de se doter d'une telle technologie. Pour en savoir plus sur les avantages McKinsey & Company rapport.
- Des recommandations précises en matière de taille ont permis de réduire le nombre de retours liés à la taille et de résoudre des problèmes tels que le "bracketing", où les clients commandent plusieurs tailles pour les essayer chez eux. Vogue Business.
- Even Amazon decided to give more reasons for shoppers to shop on their marketplace by moving into the Size Finder technology domain by switching off their try before you buy at home service – read ici.