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This study delves into customer behavior within nonlinear pricing schemes using two wireless calling plans as a scenario. It analyzes the impact of access fees, marginal prices, and consumption on customer actions and firm profitability. The research develops structural models focusing on plan choice, minute consumption, defection decisions, and policy experiments, catering to both myopic and forward-looking customers.
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Structural Models for Customer Behavior under Nonlinear Pricing Schemes Raghu Iyengar Columbia University
Scenario • Consider two wireless calling plans - • How do customers choose a plan and decide on usage? • Impact of access fee and marginal price on - • Customer behavior • Firm profitability
Pricing Scheme – Wireless Services p2 > p1 Plan A Access fee = $30 Free minutes = 200 Marginal price =$0.40 R2 p1 = 0 Cost of Consumption F overage underage qt1 qt2 Included Minutes Consumption • If consumption is qt1 then total cost = F (access fee) • If consumption is qt2 then R2 = F + (qt2 – Incl. Min.) p2
Issues • Marginal price depends on consumption • Choice and consumption are related • Customers can defect
Dissertation • Develop structural models for explaining: • Choice of calling plans within a service provider • Consumption of minutes • Defection decisions (churn) • Policy experiments (Firm decisions) • Myopic customers (Essay-1) • Forward-looking customers (Essay-2)
Presentation Outline • Past Research • Structural model (Essay-1) • Data description • Null models / estimation results • Policy experiments • Essay-2 (brief description)
Past Research • Marketing • Subset of decisions • Simpler pricing schemes – linear price, two-part tariffs • Economics • Labor supply • Nonlinear income taxes
Anticipated Consumption Plan Choice Defection Actual Usage Modeling – Choice and Consumption Process (beginning of month) (during the month)
Utility Specification For customer i , plan j and decision time t : • x1ijt : Minutes consumed • x2it : Outside good (numeraire) • zijt, wijt : Vectors containing covariates (past usage) • ij : Plan specific intercept • ijt : Choice errors
Utility Maximization – Budget Set Plan1 Plan2 Optimal Consumption Optimal Consumption F1 F2 p1 p2 p1 C1 p2 C2 C1 C2 A1 B A2 B • For customer i , plan j and time t :
Choice Decision • Value of a plan = Maximum utility that a consumer derives under that plan • Value = f (Optimal Consumption) • Customers choose plan with the highest value at the beginning of every time period
Actual Qty. Optimal Qty. Optimization error Actual Consumption • Actual Consumption = Optimal Consumption + Error • If Aj < Optimal Qty. < B
Economic Restrictions • Slutsky restrictions • Ensures quasiconcavity of utility function
Customer Heterogeneity • i – Set of all customer-specific parameters • Sicontains demographics for customer i • and are population-level parameters • Hierarchical Bayesian Model
Data • Wireless Service Provider • Monthly billing data : September, 2001- May, 2003 • New customers : August, 2001- December, 2001 • 300 customers • 5151 observations – each a monthly bill • Average 17 months per customer
Data • Four calling plans • 200, 300, 350 and 500 peak minutes • Access Fee - $30, $35, $40, $50 • Marginal Price - $0.40 per minute • 70% of the data covered by these four plan types • Summary statistics • 98 people churn • 5% observations have a plan change
Variables • State dependence • Effect of past choices on current decisions • Dummy variable that captures past choice • Past usage variables • Promotional events • Free roadside assistance, valentine’s day promotion • Dummy variable that captures a promotion
Expected Consumption Plan Choice Defection Actual Usage Null Models • Biggest challenge – how to incorporate the entire pricing schedule • Two null models – they differ in how the expectation process is specified
Null Models • Null Model - 1 • Previous month’s usage as the expected consumption • Null Model – 2 • Expectation formation uses covariates • Both models incorporate customer heterogeneity
Model Comparison • Structural model is overwhelmingly supported by the data (Kass and Raftery, 1995)
Estimates – Structural Model • The subscripts z and w refer to the covariates in the vector zijt and wijt respectively
Estimates – Structural Model • Overage variables • Negative effect on choice and consumption • Upgrade plans or lower usage • Underage variables • Negative effect on utility of plans • Positive effect on consumption • Downgrade plans or increase usage
Managerial Questions • How do the different components of the pricing scheme affect customers’ decisions? • What is the relationship between pricing, customer responses and customer lifetime value?
Policy Experiments • Access price / marginal price • Price increase / price decrease • Temporary / permanent
Plan 3 – Price Increase Plan 3 – Price Decrease Plan 1 2 3 4 200 Minutes 300 500 350 Policy Experiments – Marginal Price Change Effect of 25% Permanent Change in Marginal Price for Plan 3 • Time varying elasticity • Adjacent plan effect • Asymmetric price effect
Plan 3 – Price Increase Plan 3 – Price Decrease Policy Experiments – Marginal Price Change Effect of 25% Temporary Change in Marginal Price for Plan 3 • Ripple effect
Plan 1 2 3 4 Minutes 200 300 350 500 $30 $35 $40 $50 Access Fee Policy Experiments – Customer Value 5% Decrease in the plan prices • Access price effect is higher than marginal price for most cases • Highest effect of access price on “low usage” users on Plan 1 • Highest effect of marginal price on “high usage” users on Plan 4
Conclusions • Developed a structural model • Adaptable to other service contexts • Used policy experiments for gauging the effect of changes in pricing schemes on • Customer behavior • Firm profitability
Essay-2 : Learning Models • Myopic learning model • Consumers are uncertain about actual usage while choosing plans • They have prior beliefs about the distribution of actual usage • They observe their actual usage and update (learn) their beliefs
; Essay-2 : Myopic Learning Model Belief specification Usage
Essay-2 : Forward-Looking Model • Assumptions • Mental hassle costs associated with plan changes • Customer and plan-specific variance • Customers’ beliefs • Priors on the different variances • Usage on a plan leads to an update of the belief parameters associated with only that plan
Essay-2 : Forward-Looking Model • Tradeoff • Stick with a plan : get more precise information about the variance associated with only that plan • Change plans : improve the knowledge of the variance under the chosen plan but pay mental hassle costs of switching • Dynamic Programming
Extensions • Competition • Rollover and other features • Roaming, long distance and other types of minutes