Adding new product attributes to your catalog can drive big wins in search relevance, user experience, and conversions—but only if those attributes actually matter to your customers.
Before investing time and resources into expanding your product data model, it’s critical to validate the potential impact of the attributes you’re considering. Fortunately, you don’t have to rely on guesswork. With the right methods, you can estimate how new attributes might affect search visibility, engagement, and even revenue.
In this post, we explore two proven approaches: Search Volume Analysis and Predictive Modeling. Used together or independently, these techniques help merchandisers and ecommerce teams make smarter, data-driven decisions.
Search volume analysis gives you a window into what your customers are actually searching for. If an attribute aligns with high-volume or trending search behavior, it likely deserves a place in your product catalog.
Here’s how to approach it:
Start by creating a list of potential new attributes you’re considering adding. These might include product characteristics like:
"Organic Cotton"
"Water-Resistant"
"Vegan"
"RFID Compatible"
Prioritize attributes that are relevant to your product categories and align with known customer interests or emerging trends.
Your own site search logs are a goldmine of insights. Look for keyword patterns and queries that indicate users are already searching by specific attributes.
For example, if terms like "sustainable," "moisture-wicking," or "machine washable" frequently appear in queries, it’s a strong signal that customers care about those features.
Supplement internal search insights with external data:
Google Keyword Planner: Gauge monthly search volume for specific terms.
Google Trends: Understand seasonality and long-term interest.
SEMrush or Ahrefs: Analyze keyword difficulty and competitive usage.
Look for attributes with steady or growing search interest. These are indicators of lasting relevance and customer demand.
Once you’ve identified high-interest attributes, estimate how adding them might affect product visibility. Attributes that frequently appear in searches, filters, or external queries could increase the chances of your products appearing in relevant results—on your site and in search engines.
Predictive modeling takes a more data-scientific approach to estimating attribute performance. Instead of measuring current search interest, it uses historical performance data to predict outcomes based on patterns.
This method is especially useful for:
Testing less common or newer attributes
Scaling impact analysis across large catalogs
Building long-term models for performance forecasting
Here’s how to build a predictive framework:
Start by analyzing the performance of similar attributes you’ve already introduced. Look at changes in:
Click-through rate (CTR)
Conversion rate
Engagement metrics
Return rates or customer satisfaction scores
If past attribute additions (e.g., "breathable fabric") drove positive outcomes, similar ones (like "moisture-wicking") may have comparable effects.
Apply regression techniques to explore the relationship between existing attributes and KPIs like:
Search ranking
Conversion probability
Average order value
This helps quantify how much influence specific attributes have on performance. If attributes like "waterproof" or "USB-C compatible" correlate strongly with higher sales, that insight can guide future additions.
For teams working with large-scale datasets, machine learning can take predictive modeling further. Algorithms trained on historical catalog and performance data can learn:
Which attributes drive conversions across product types
Which attributes correlate with search performance or engagement
How new attribute additions are likely to impact performance
These models can also provide probabilistic forecasts and scenario testing for different attribute strategies.
Once you’ve added a new attribute, the job isn’t done. Set up tracking to monitor:
Click-through and conversion rates for enriched products
Attribute-based filter usage in site navigation
Changes in search ranking or visibility
Validating the real-world impact helps you refine future models and optimize your attribute roadmap over time.
Let’s say a fashion retailer is considering adding "sustainable fabric" as a new attribute. Using internal search data, they find that terms like "eco-friendly" and "recycled" appear frequently in customer queries. Google Trends shows that "sustainable fashion" has seen a 5-year upward trajectory in search interest.
From a predictive modeling perspective, the team reviews past performance of related attributes like "organic cotton" and "vegan leather"—both of which led to increased engagement and conversions. Regression analysis confirms a strong correlation between these attributes and positive shopping behavior.
They decide to roll out the new attribute across core SKUs, track the results for 60 days, and see a 12% boost in filter usage and an 8% increase in conversions on enriched product pages.
Adding new product attributes can be a powerful way to enhance discovery and engagement—but only if the data supports it.
By combining search volume analysis and predictive modeling, ecommerce teams can:
Align attribute strategy with real customer behavior
Avoid wasting resources on low-impact features
Improve search performance and product relevance
Drive measurable business outcomes
Whether you're considering sustainability tags, technical specs, or trend-driven descriptors, validating the impact before implementation leads to smarter catalog management and better customer experiences. And that's strategy that goes Beyond The Catalog.
Need help forecasting attribute impact at scale?
Schedule a CatalogIQ demo and see how we use AI to prioritize, score, and enrich the product attributes that matter most.