The global eCommerce market is on a massive growth trajectory, but it also brings an equally massive operational challenge: the high cost of returns. In 2025, total returns for the retail industry reached a staggering $850 billion, with nearly 20% of all online sales sent back.
As tariffs push landed costs up 10-25%, returns destroy more margin than they did a year ago. A product that once cost $35 to land may now cost $45. Add the $33 average processing cost per return, and the financial impact becomes impossible to ignore.
Even as retail executives talk about AI and data, few connect those conversations to returns - perhaps the most underutilized first‑party signal in retail. The challenge is that meaningful return insights are often buried in logistics reports that growth teams never see. And, they don’t come close to revealing the root causes.
Returns intelligence, however, reveals exactly what customers thought of your product after receiving it, at the SKU level, and at scale, without survey bias. Instead of just processing returns, retailers need to use this data to make active buying, sourcing, and site decisions.
To truly unlock this value, retailers must break down the silos that separate insight from action. Returns intelligence shouldn’t live only in the supply chain. It must flow to e‑commerce, merchandising, and customer experience teams, with AI routing recommendations directly to the people who can act on them
This shift from reacting to preventing changes the economics of retail. Nearly three‑quarters of returns are preventable. Leading brands are reducing them by improving size guides, tightening manufacturing specs, and optimizing PDP content using product‑level retention scores.
For example, most supply chain teams discover supplier quality issues a season too late. AI‑powered returns intelligence acts as a real‑time early‑warning system, correlating return reasons with factories, materials, or distribution centers. Using Returnalyze, Abercrombie & Fitch traced a spike to a mold defect in a Mexico facility and fixed it before the next order shipped. And, J. Crew uncovered millions in recoverable margin by making same-week PDP updates to fit guidance, sizing copy, and stylist tips.
For the C-suite, this translates to massive financial wins. A $1 billion retailer preventing just 25% of its controllable returns typically recovers $30-45 million in EBITDA annually. This represents a direct margin improvement of 2-4%. The brands winning in today's retail landscape are reallocating these savings to strategic growth plays such as market expansion, customer acquisition, and innovation.
At Returnalyze, we help retailers uncover the hidden profit signals inside their returns data – because when you understand your returns, you understand your business.
Returns intelligence is the process of analyzing return data to uncover patterns, root causes, and profit opportunities. It helps retailers understand why products are being sent back and what changes can reduce future returns.
Returns are becoming more costly because higher landed costs, rising tariffs, and return processing expenses all cut deeper into margins. A product with strong sales can quickly become unprofitable if return rates are too high.
Retailers can use return data to identify product issues, improve size guides, update PDP content, refine sourcing decisions, and catch supplier defects earlier. These actions can lower return rates and recover lost margin.
Returns data shows what customers actually experienced after receiving the product. Unlike surveys, it reflects real behavior at the SKU level and can reveal consistent problems across products, factories, materials, or fulfillment channels.
AI helps by spotting patterns in return reasons faster, connecting them to root causes, and routing recommendations to the right teams. This allows retailers to act quickly on issues involving fit, quality, product descriptions, or supplier performance.
Returns intelligence can reveal when customers are confused about fit, sizing, material, or product expectations. Retailers can then update PDP copy, imagery, size charts, and styling guidance to better set expectations before purchase.
Reducing controllable returns can create major EBITDA gains by lowering reverse logistics costs and protecting revenue. For larger retailers, even a modest reduction in preventable returns can translate into millions of dollars in recovered margin.
Returnalyze helps retailers turn returns data into clear, actionable insights that support better decisions across merchandising, sourcing, and e-commerce. The goal is not just to process returns, but to prevent them and protect profit.