Pricing engine: components
The image at the top of the page illustrates the essential components of the Wheelhouse pricing engine. The three most foundational models included in the illustration above are:
- The Base Price Model
- The Predictive Demand Model
- The Reactive Demand Model
As you explore this write-up, you will learn how these high-level components either include, or are amplified by, multiple additional models and statistical approaches, including:
- Location Impact
- Occupancy Impact
- Impact of Prior Bookings
- Booking Curves
- Gamma Warping
- Price Response Function
- Model Blending
- Calendar Control
- Vacancy Gaps
- Last Minute Discounting
- Dynamic Pacing Model
While complex, we believe that the 22% increase in revenue these models have driven for our users has made our efforts worthwhile!
Each day, our platform ingests, cleans, and processes ~20 billion new data points, analyzing 21MM listings across every major OTA in the short-term rental space, in order to inform a continuously relevant and accurate set of recommendations.
All of the models & approaches we list above inform how each listing should respond to booking patterns we see at the listing, neighborhood, market and regional level.
Let's step through these models, starting with our pricing engine’s foundation, the Base Price Model.