Recommendation engine

A recommendation engine uses data filtering algorithms to suggest content, offers, and products based on individual or audience profiles. It does this by using collaborative, content-based, or personality-based rules to surface recommendations.

It's time for personalization to grow up. Read the report ›

The challenges of using recommendation engines.

 

If you’re looking to provide better user experiences and higher returns, you’ll face multiple challenges. To succeed, you must lean on data and manage content efficiently.

Poorly integrated tools.

Poorly integrated tools.

Manual processes.

Manual processes.

Lack of marketer control.

Lack of marketer control.

Poor data quality.

Poor data quality.

The benefits of recommendation engines.

 

Recommendation engines do more than make it easy for users to find music, movies, or news they enjoy — they help strengthen your relationship with your customers.

Relationship discovery.

Relationship discovery.

Self-learning algorithms find relationships between products quickly then connect user behavior to determine how likely a consumer will convert. This leads to faster product discovery.
 

Lift in engagement opportunities.

Lift in engagement opportunities.

Recommendations can increase content consumption, shorten the path to relevant content, and boost time engaged with your brand.

Enriched customer profiles.

Enriched customer profiles.

As users engage with recommended content, more granular customer profiles and personas are automatically built, which helps with targeting look-alike audiences. Historical and real-time data are combined to provide continual updates.

More cross-sell/upsell activity.

More cross-sell/upsell activity.

Recommended products increase purchase size and lift customer lifetime value through improved personalized experiences.
 

Adobe can help.

Adobe can help.


Adobe Target gives you unprecedented control with its recommendation capabilities, including automatic content optimization and customizable algorithm settings. Target helps you drive users to the most relevant content and products.


Recommendation engines are just one piece of the puzzle.

 

See how Adobe helps today's brands build complete personalized experiences.

It’s important that we first understand how customer journeys are performing.

“It’s important that we first understand how customer journeys are performing, and secondly…look to optimize those journeys.”
- Will Harmer,
Senior Manager of Insights and Optimization, EE

It's critical for us to give a good experience prior to [a] trip.

“It's critical for us to give a good experience prior to [a] trip, making sure we give them information on places they're interested in."
- Marlies Roberts,
VP Marketing Operations, Overseas Adventure Travel

Recommendation engines FAQ.

How does a recommendation engine work?
Most recommendation algorithms cycle through three phases: feedback collection, learning, and prediction. Data sets collected during feedback collection can be memory based, model based, or observation based.


Does a recommendation engine use real-time data?
Yes. Systems can be set up to analyze real-time data. However, some engines perform batch processing, which updates recommendations periodically.


How do recommendation engines select products to display?
Systems use filtering algorithms to provide product selections. Filters include collaborative, content-based, and hybrid recommendations that look for similarities in items or user behaviors.

What are explicit and implicit feedback?
Explicit feedback is collected as users interact with the recommendations. Implicit feedback infers user preferences by analyzing actions like purchase history, navigation history, and time spent on web pages.


Are there recommendation engines for mobile environments?
Yes. Automated mobile recommendations offer personalized, context-sensitive recommendations, which can be based on location, season, daypart, and more.


How do you measure a recommendation engine’s performance?
A/B testing can reveal a system’s performance. Marketers use several metrics, including customer lifetime value, click-through rate, conversion rate, and ROI to measure results.

 

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