Skip to Content
  • Γραφεία

    Γραφεία

    North & Latin America
    • Atlanta
    • Austin
    • Bogota
    • Boston
    • Buenos Aires
    • Chicago
    • Dallas
    • Denver
    • Houston
    • Los Angeles
    • Mexico City
    • Minneapolis
    • Monterrey
    • Montreal
    • New York
    • Rio de Janeiro
    • San Francisco
    • Santiago
    • São Paulo
    • Seattle
    • Silicon Valley
    • Toronto
    • Washington, DC
    Europe & Africa
    • Amsterdam
    • Athens
    • Berlin
    • Brussels
    • Copenhagen
    • Dusseldorf
    • Frankfurt
    • Helsinki
    • Istanbul
    • Johannesburg
    • Kyiv
    • Lisbon
    • London
    • Madrid
    • Milan
    • Munich
    • Oslo
    • Paris
    • Rome
    • Stockholm
    • Vienna
    • Warsaw
    • Zurich
    Middle East
    • Doha
    • Dubai
    • Riyadh
    Asia & Australia
    • Bangkok
    • Beijing
    • Bengaluru
    • Brisbane
    • Ho Chi Minh City
    • Hong Kong
    • Jakarta
    • Kuala Lumpur
    • Manila
    • Melbourne
    • Mumbai
    • New Delhi
    • Perth
    • Shanghai
    • Singapore
    • Sydney
    • Tokyo
    See all offices
  • Alumni
  • Media Center
  • Εγγραφή
  • Επικοινωνία
  • Greece | Elliniká

    Select your region and language

    Global
    • Global (English)
    North & Latin America
    • Brazil (Português)
    • Argentina (Español)
    • Canada (Français)
    • Chile (Español)
    • Colombia (Español)
    Europe, Middle East, & Africa
    • France (Français)
    • DACH Region (Deutsch)
    • Italy (Italiano)
    • Spain (Español)
    • Greece (Elliniká)
    Asia & Australia
    • China (中文版)
    • Korea (한국어)
    • Japan (日本語)
  • Saved items (0)
    Saved items (0)

    You have no saved items.

    Bookmark content that interests you and it will be saved here for you to read or share later.

    Explore Bain Insights
  • Κλάδοι
    Main menu

    Κλάδοι

    • Aerospace & Defense
    • Agribusiness
    • Chemicals
    • Construction & Infrastructure
    • Consumer Products
    • Financial Services
    • Healthcare & Life Sciences
    • Industrial Machinery & Equipment
    • Media & Entertainment
      Κλάδοι
      Media & Entertainment
      • Media Lab
    • Metals
    • Mining
    • Oil & Gas
    • Paper & Packaging
    • Private Equity
      Κλάδοι
      Private Equity
      • Due Diligence
      • Exit Planning
      • Firm Strategy & Operations
      • Portfolio Value Creation
    • Social Impact
    • Retail
    • Technology
    • Telecommunications
      Κλάδοι
      Telecommunications
      • Capital Expenditure
      • Telco Digital Transformation
    • Transportation
    • Travel & Leisure
    • Utilities & Renewables
  • Συμβουλευτικές Υπηρεσίες
    Main menu

    Συμβουλευτικές Υπηρεσίες

    • Customer Experience
    • Sustainability
    • Innovation
    • M&A
    • Operations
    • People & Organization
    • Private Equity
    • Sales & Marketing
    • Strategy
    • AI, Insights, and Solutions
    • Technology
    • Transformation
  • Digital
  • Πληροφορίες
    Main menu

    Πληροφορίες

    • Industry Insights
    • Services Insights
    • Bain Books
    • Webinars
    • Bain Futures
    View all Insights
    Featured topics
    • Artificial Intelligence
    • Managing Inflation
    • Thriving in Uncertainty
    • The Talent Imperative
    • Macro Trends
    • Healthcare Private Equity Report
    • CEO's Guide to Sustainability
    • Technology Report
    • Energy & Natural Resources Report
    • Paper & Packaging Report
    • CEO Insights
    • CFO Insights
    • COO Insights
    • CIO Insights
    • CMO Insights
    View all featured topics
  • Σχετικά με εμάς
    Main menu

    Σχετικά με εμάς

    • What We Do
    • What We Believe
    • Our People & Leadership
    • Client Results
    • Awards & Recognition
    • Global Affiliations
    • Social Impact
    • Sustainability
    • World Economic Forum
    Learn more about Further
  • Careers
    Main menu

    Careers

    • Work with Us
      Careers
      Work with Us
      • Find Your Place
      • Our Work Areas
      • Integrated Teams
      • Students
      • Internships & Programs
      • Recruiting Events
    • Life at Bain
      Careers
      Life at Bain
      • Blog: Inside Bain
      • Career Stories
      • Our People
      • Where We Work
      • Supporting Your Growth
      • Affinity Groups
      • Benefits
    • Impact Stories
    • Hiring Process
      Careers
      Hiring Process
      • What to Expect
      • Interviewing
    FIND JOBS
  • Γραφεία
    Main menu

    Γραφεία

    • North & Latin America
      Γραφεία
      North & Latin America
      • Atlanta
      • Austin
      • Bogota
      • Boston
      • Buenos Aires
      • Chicago
      • Dallas
      • Denver
      • Houston
      • Los Angeles
      • Mexico City
      • Minneapolis
      • Monterrey
      • Montreal
      • New York
      • Rio de Janeiro
      • San Francisco
      • Santiago
      • São Paulo
      • Seattle
      • Silicon Valley
      • Toronto
      • Washington, DC
    • Europe & Africa
      Γραφεία
      Europe & Africa
      • Amsterdam
      • Athens
      • Berlin
      • Brussels
      • Copenhagen
      • Dusseldorf
      • Frankfurt
      • Helsinki
      • Istanbul
      • Johannesburg
      • Kyiv
      • Lisbon
      • London
      • Madrid
      • Milan
      • Munich
      • Oslo
      • Paris
      • Rome
      • Stockholm
      • Vienna
      • Warsaw
      • Zurich
    • Middle East
      Γραφεία
      Middle East
      • Doha
      • Dubai
      • Riyadh
    • Asia & Australia
      Γραφεία
      Asia & Australia
      • Bangkok
      • Beijing
      • Bengaluru
      • Brisbane
      • Ho Chi Minh City
      • Hong Kong
      • Jakarta
      • Kuala Lumpur
      • Manila
      • Melbourne
      • Mumbai
      • New Delhi
      • Perth
      • Shanghai
      • Singapore
      • Sydney
      • Tokyo
    See all offices
  • Alumni
  • Media Center
  • Εγγραφή
  • Επικοινωνία
  • Greece | Elliniká
    Main menu

    Select your region and language

    • Global
      Select your region and language
      Global
      • Global (English)
    • North & Latin America
      Select your region and language
      North & Latin America
      • Brazil (Português)
      • Argentina (Español)
      • Canada (Français)
      • Chile (Español)
      • Colombia (Español)
    • Europe, Middle East, & Africa
      Select your region and language
      Europe, Middle East, & Africa
      • France (Français)
      • DACH Region (Deutsch)
      • Italy (Italiano)
      • Spain (Español)
      • Greece (Elliniká)
    • Asia & Australia
      Select your region and language
      Asia & Australia
      • China (中文版)
      • Korea (한국어)
      • Japan (日本語)
  • Saved items  (0)
    Main menu
    Saved items (0)

    You have no saved items.

    Bookmark content that interests you and it will be saved here for you to read or share later.

    Explore Bain Insights
  • Κλάδοι
    • Κλάδοι

      • Aerospace & Defense
      • Agribusiness
      • Chemicals
      • Construction & Infrastructure
      • Consumer Products
      • Financial Services
      • Healthcare & Life Sciences
      • Industrial Machinery & Equipment
      • Media & Entertainment
      • Metals
      • Mining
      • Oil & Gas
      • Paper & Packaging
      • Private Equity
      • Social Impact
      • Retail
      • Technology
      • Telecommunications
      • Transportation
      • Travel & Leisure
      • Utilities & Renewables
  • Συμβουλευτικές Υπηρεσίες
    • Συμβουλευτικές Υπηρεσίες

      • Customer Experience
      • Sustainability
      • Innovation
      • M&A
      • Operations
      • People & Organization
      • Private Equity
      • Sales & Marketing
      • Strategy
      • AI, Insights, and Solutions
      • Technology
      • Transformation
  • Digital
  • Πληροφορίες
    • Πληροφορίες

      • Industry Insights
      • Services Insights
      • Bain Books
      • Webinars
      • Bain Futures
      View all Insights
      Featured topics
      • Artificial Intelligence
      • Managing Inflation
      • Thriving in Uncertainty
      • The Talent Imperative
      • Macro Trends
      • Healthcare Private Equity Report
      • CEO's Guide to Sustainability
      • Technology Report
      • Energy & Natural Resources Report
      • Paper & Packaging Report
      • CEO Insights
      • CFO Insights
      • COO Insights
      • CIO Insights
      • CMO Insights
      View all featured topics
  • Σχετικά με εμάς
    • Σχετικά με εμάς

      • What We Do
      • What We Believe
      • Our People & Leadership
      • Client Results
      • Awards & Recognition
      • Global Affiliations
      Further: Our global responsibility
      • Social Impact
      • Sustainability
      • World Economic Forum
      Learn more about Further
  • Careers
    Popular Searches
    • Agile
    • Digital
    • Strategy
    Your Previous Searches
      Recently Visited Pages

      Content added to saved items

      Saved items (0)

      Removed from saved items

      Saved items (0)

      Expert Commentary

      Boosting Automotive Aftermarket Revenues through Advanced Analytics

      Boosting Automotive Aftermarket Revenues through Advanced Analytics

      The right model allows manufacturers to gain visibility into, and capture, a car’s full revenue potential.

      By Daniel Jäck and Grigory Sizov

      • min read
      }

      Article

      Boosting Automotive Aftermarket Revenues through Advanced Analytics
      en

      Aftermarket sales is a crucial part of business for auto manufacturers. Selling spare parts and services can significantly boost both revenues and profit, since revenues per car can amount to several thousand dollars over a car’s life.

      Yet car original equipment manufacturers (OEMs) and their dealers often capture only a portion of potential revenues. Historically, many of them lack transparency on the full potential of their sales and operations, even though they have vast data pools that could provide insights.

      Advanced analytics offers an effective approach that provides reliable, data-driven insights to determine which aftermarket areas are performing well, and which need improvement. This commentary summarizes an analytical model that Bain & Company recently developed for a large auto manufacturer. The model addressed the following questions:

      • What is the lifetime revenue potential of an individual car model for a specific aftermarket event or category, such as a brake change or 10,000-mile service?
      • What is the annual revenue potential for a car model in a certain time range (say, from 6 to 8 years) or mileage range (from 35,000 to 60,000 miles)?
      • Which aftermarket events drive revenue within these categories?
      • Which events serve as triggers for cross-selling or upselling?
      • What is the realized market share on these events?

      The model’s logic

      The analytical model computes full potential revenue and market shares based on various data sources provided by the OEM. The most relevant data includes anonymized invoices from the OEM’s service partners, prices and descriptions of existing spare parts, and car registrations per year for all relevant models.

      The model features two innovations: identification of aftermarket events from millions of invoices using a customized market basket analysis algorithm, and the calculation of event probabilities over a car’s life, considering both the underlying number of cars as well as customer loyalty.

      In this context, an aftermarket event corresponds to a combination of spare parts frequently seen on shop invoices. For example, the event “brake change” might contain the parts “brake disk,” “brake pad” and “screw,” belonging to the aftermarket category “wear.”

      The logic of the model can be broken down into three steps.

      1. Identify key events using market basket analysis. To boost revenues, car manufacturers want to target the most common aftermarket events, so they can raise their market share. Identifying common events can be challenging, since there are countless possible combinations of parts found on invoices.

      To solve this issue, we applied an adapted version of the Apriori algorithm, commonly used for market basket analysis. Apriori is a form of association rule learning, which iteratively generates frequent sets of items from a long list, such as spare parts on an invoice. We developed a customized version of Apriori, one that considers not only frequencies of parts and part combinations, but also their prices (see Figure 1).

      Figure 1
      A customized version of the Apriori model considers frequencies of parts and part combinations, along with their prices
      A customized version of the Apriori model considers frequencies of parts and part combinations, along with their prices
      A customized version of the Apriori model considers frequencies of parts and part combinations, along with their prices

      2. Compute the probability of events. After identifying relevant events, you can determine their occurrences over time by counting their presence on all available invoices. However, this renders only parts of the entire picture, and you will not be able to infer a car’s full revenue potential purely based on raw occurrence numbers, for two reasons:

      • Car registration skewness. On invoices, you will see more younger cars than older ones, due to the scrap rate of older cars. To account for this age disparity, the raw event occurrences across all age segments have to be brought to the level of the first year of registrations, so that the event occurrences get adjusted to the same number of cars.
      • Customer loyalty. Since many customers will bring their car to third-party shops, you need to apply a loyalty factor to the raw event occurrences. This factor indicates how many cars in a given age or mileage segment are visiting the OEM’s shops. To determine the factor, correct the number of invoices for the overall number of registrations for a specific age or mileage (see Figure 2).
      Figure 2
      Corrections for customer loyalty and car registrations are needed to calculate full potential revenue
      Corrections for customer loyalty and car registrations are needed to calculate full potential revenue
      Corrections for customer loyalty and car registrations are needed to calculate full potential revenue

      By correcting for these aspects, you do not need data on nonloyal customers. You can compute the probability of a given event by scaling up the raw event occurrences.

      3. Calculate the full potential and market share. We determined the full revenue potential per car by multiplying the event probabilities by the respective event price. In order to determine market shares, the full potential per car has to be scaled by the entire number of registrations. Hence, the market shares are the ratio of the actual revenue on invoices to the scaled full potential.

      The model uses a dashboard to display the output—the revenue full potential and the market shares over different dimensions, such as aftermarket events and categories, age ranges or countries. Key users of these insights include the aftermarket strategy teams as well as the respective country representatives, who are responsible for steering overall aftermarket operations and sales processes.

      To make this modeling as effective as possible, keep in mind the following principles.

      • Accept only high-quality data. Reliable insights hinge of starting with a large, well-maintained database. Data quality will directly affect the quality of your model.
      • Incorporate business knowledge. Experts in a particular slice of the aftermarket should participate throughout the entire development process, to provide domain-specific insights and validate results.
      • Collaborate in cross-functional teams. Teams of data scientists, generalist consultants, and domain experts are essential for developing analytics solutions in a fast and agile fashion.
      • Install reliable computing infrastructure. Complex pieces of model logic demand a reliable computing environment, in which cross-functional teams can iterate quickly over several model variations.

      Advanced analytics techniques can allow any company to capture hidden insights from existing data pools. In the automotive aftermarket, this OEM gained more visibility into a key business area. Using a powerful, data-driven approach to analyze millions of invoices, through over 50 logical steps, the company:

      • Gained deeper visibility into market performance (revenue full potential and current market shares);
      • identified and mitigated gaps in customer loyalty; and
      • tracked the effect of mitigation measures on loyalty.

      Future expansions of the model might include the integration of additional data sources, such as vehicle telematics data or spending data from external auto shops (privacy regulations permitting), as well as personalized offers and discounts for customers based on their past behavior.

      Authors
      • Daniel Jäck
        Manager, Data Science, Munich
      • Headshot of Grigory Sizov
        Grigory Sizov
        Alumni, Berlin
      Contact us
      Related Industries
      • Advanced Manufacturing & Services
      Advanced Manufacturing & Services
      Key Insights from Bain’s 2026 Paper & Packaging Report

      In this webinar recording, Bain's Ilkka Leppävuori, Michael Tonelli, and Eliza Kennedy share takeaways from our latest report.

      More
      Advanced Analytics Expert Commentary
      Defining the Intelligent Enterprise

      A recap from DeepLearning.AI’s AI Dev 25 × NYC.

      More
      Advanced Analytics Expert Commentary
      Making Friends with Collinearity: How Driver Interactions Can Inform Targeted Interventions

      Driver analysis helps inform decisions on which drivers deserve the greatest effort.

      More
      Advanced Manufacturing & Services
      Technology in Building Products: Turn Cost into Value

      Bain experts reveal how companies in the building products industry are unlocking growth with bold tech investments.

      More
      Advanced Analytics Expert Commentary
      Mission Possible: Driver Analysis with Collinear Variables

      Many commonly used methods have serious limitations when assessing the variable importance of collinear drivers.

      More
      First published in Οκτώβριος 2020
      Tags
      • Advanced Analytics Expert Commentary
      • Advanced Manufacturing & Services

      How We've Helped Clients

      A Conglomerate Charts a New Global Strategy

      Read case study

      An Auto Parts Company Revs Up Its Competitive Position

      Read case study

      Don't give customers options they don't want

      Read case study

      Έτοιμοι να μιλήσουμε

      Συνεργαζόμαστε με φιλόδοξους ηγέτες που θέλουν να καθορίσουν το μέλλον και όχι. Όχι να κρυφτούν από αυτό. Μαζί, επιτυγχάνουμε πετυχαίνουμε εξαιρετικά αποτελέσματα.

      Μείνετε μπροστά σε έναν γρήγορα εξελισσόμενο κόσμο. Εγγραφείτε στο Bain Insights, τη μηνιαία μας επισκόπηση των κρίσιμων θεμάτων που αντιμετωπίζουν οι παγκόσμιες επιχειρήσεις

      *Έχω διαβάσει την Πολιτική Απορρήτου και συμφωνώ με τους όρους της.

      Please read and agree to the Privacy Policy.
      Bain & Company
      Επικοινωνήστε μαζί μας Sustainability Accessibility Όροι χρήσης Privacy Cookie Policy Sitemap Log In

      © 1996-2026 Bain & Company, Inc.

      Contact Bain

      How can we help you?

      • Business inquiry
      • Career information
      • Press relations
      • Partnership request
      • Speaker request
      See all offices