Schauen Sie sich alle unsere Webinare und Veranstaltungen an!

Ereignisse ansehen Video ansehen
CASE STUDY - 6 MIN READ

The Benefits of Defining Price Elasticity Analysis by Customer Group

This blog explores the significance of defining price elasticity by customer group or segment, delving into both B2B and B2C contexts.

BLOGS & ARTICLES

The Benefits of Defining Price Elasticity Analysis by Customer Group

This blog explores the significance of defining price elasticity by customer group or segment, delving into both B2B and B2C contexts.

Price elasticity, a key concept in economics, refers to the responsiveness of quantity demanded to changes in price. In the realm of business, understanding price elasticity is crucial for effective price optimization strategies. This blog explores the significance of defining price elasticity by customer group or segment, delving into both B2B and B2C contexts.

The Necessity to Categorise by Customer for Accurate Data:

Using separate and specific datasets allows for better control and accuracy when running a price elasticity analysis. It allows a company to run a price strategy best suited to that segment of their target audience, and therefore the optimal price for that customer segment.

A. In B2B:
  • Sector: In the B2B context, categorizing customers based on sector is essential. For instance, pricing strategies for clients in the manufacturing sector may differ significantly from those in the technology sector due to variations in cost structures and market dynamics.
  • Size: Customer size plays a crucial role in determining purchasing power and negotiation dynamics. Small and medium-sized enterprises (SMEs) may have different pricing considerations compared to large enterprises, requiring tailored approaches for optimal results.
  • Revenue: Grouping customers by revenue allows businesses to recognize the varying capacities of clients to absorb price changes. High-revenue clients may be less price-sensitive, while smaller clients may be more reactive to adjustments in pricing strategies.
  • Usage: Understanding how customers utilize products or services is key. Different usage patterns may influence pricing decisions, with heavy users possibly warranting volume-based discounts and infrequent users benefitting from flexible pricing models.
B. In B2C:
  • Memberships: Segmenting B2C customers by memberships allows businesses to cater to different tiers of customers. Premium or loyalty-based memberships may warrant exclusive pricing or discounts, creating value for dedicated customers.
  • Loyalty: Recognizing and rewarding customer loyalty is crucial. Loyal customers may respond positively to loyalty programs and personalized pricing incentives, fostering a stronger connection with the brand.
  • New or Repeat Customers: Distinguishing between new and repeat customers helps tailor marketing and pricing strategies. Special introductory offers for new customers and loyalty rewards for repeat customers contribute to a balanced approach.
  • Frequency of Buying: Analyzing the frequency of purchases enables businesses to optimize pricing based on customer behavior. High-frequency buyers may benefit from subscription-based pricing models, while occasional buyers may respond better to seasonal discounts or promotions.
C. Challenges with Narrowing Down to Specific Groups

While segmenting customers offers valuable insights, it comes with challenges. The foremost challenge is the need for sufficient data for each segment. Accurate results depend on substantial data within each category. It is imperative to assess data quality for each segment to ensure the reliability of the outcomes. This involves evaluating three key measures: count, variance, and correlation.

Quality of Input Data

Determining the quality of input data involves evaluating three critical measures.

  1. Count: This refers to the quantity of data points. A higher count score reflects a greater variation in prices among order lines. The goal is to aggregate order lines into one data point, ensuring similarity in prices.
  2. Variance: Assessing the variation in prices among order lines within a data point. A lower variance signifies more consistent pricing patterns.
  3. Correlation: Examining the relationship between price and quantity sold. A higher correlation score indicates a stronger relationship. The overall data quality score is a weighted combination of these measures.

Improving Data Quality: Enhancing data quality is essential for reliable outcomes. Importing more sales data from the past, increasing data points for analysis, and selling more products contribute to improved data quality. While challenging, these actions are crucial for preventing a "garbage in, garbage out" scenario, ensuring more accurate predictions of optimal prices and related values.

Conclusion

Defining price elasticity by customer group or segment is a strategic approach that enables businesses to tailor pricing strategies for maximum impact. While challenges exist, addressing them through careful data quality assessment and improvement measures enhances the effectiveness of price optimization efforts. In the dynamic landscape of commerce, understanding and leveraging price elasticity by customer group is a key driver for sustainable growth.

Do you want a free demo to try how SYMSON can help your business with margin improvement or pricing management? Do you want to learn more? Schedule a call with a consultant and book a 20 minute brainstorm session!

HAVE A QUESTION?

Frequently Asked
Questions

Related Blogs

Other case studies you might be interested in

No items found.

Ready to kickstart your pricing journey?

Talk to a SYMSON expert now