Discovering conjoint analysis
Conjoint analysis is an powerful market research method used by product and service designers for forecasting how different product, service and pricing options drive what customers choose, and value.
Do customers go for high-price, high-quality or low-price, low-quality or somewhere in between? Identifying the right balance point is a classic business problem. Conjoint analysis quantifies and models this decision-making, measuring what customers really value to identify the best solution for the business.
This section explains all about conjoint analysis from principles to models, to advanced options and alternative methods. Discover our conjoint demonstration and pricing explorer to explore how these techniques improve business decisions.
We provide a full range of conjoint analysis solutions, training and consultancy from basics like CBC upwards, to interactive models and forecasts to understand what drives purchase decisions and uncover customer price sensitivity to optimise your products and services. For any questions about carrying out conjoint analysis, contact our helpful team for advice or information.
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What is conjoint analysis? The complete guide |
Conjoint analysis is used to build market models and forecasts to answer questions such as "Should we build in more features, or change our prices?" or "Which of these changes will hurt our competitors most?", or "What is the optimum price to charge?" that allow the business to optimise product and service design to customer needs. To explore or play with conjoint analysis, try our interactive Conjoint Demonstration, our simple conjoint in Excel to see how conjoint analysis works numerically, or use our free, full-featured Conjoint Explorer to design and test your own conjoint experiments. |
Conjoint Explorer |
The dobney.com Conjoint Explorer is a live interactive and fully editable on-line tool for exploring Conjoint Analysis designs, methods, attributes and levels and approaches. The Conjoint Explorer provides live examples of conjoint analysis in action, an editor to change designs and work on attributes and levels, an estimator to see how choices turn into calculated utility values and path worths, and a live model that shows how utility scores are translated into estimates of share of preference. For students the Conjoint Explorer provides a practical method to understand conjoint analysis. For Conjoint Designers and researchers, it provides a live tool to assist in the creation of attributes and levels, and exploring different presentation formats for more realistic conjoint analysis design. | |
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Using the Cxoice Conjoint Explorer |
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Conjoint analysis demonstration |
The demonstration below is a simplified example of a conjoint exercise that uses a QuickLearn algorithm and works best if you are consistent in your choices. See the technical notes for more information and a comparison with full/commercial conjoint analysis. To explore more fully, our free, fully-interactive Conjoint Explorer allows you to play with attributes and levels and conjoint designs. Or see a worked up conjoint analysis example using Excel to understand how utility calculations can be made. |
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Conjoint analysis design |
As with any form of research, the quality of the output depends heavily on the quality of the design. For conjoint analysis, in particular this means choosing the right flavour or type of conjoint to use and ensuring that the design of the attributes and levels, the way the profiles are shown and the number of choice tasks meets the research, analysis and business requirements. |
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Flavours or types of conjoint analysis |
Most conjoint analysis studies carried out professionally use Choice-based Conjoint (CBC) for pricing and brand value studies. Newer adaptive types of conjoint such as Adaptive Choice-Based Conjoint (ACBC) or menu-based conjoint are used for more complex studies. MaxDiff is a commonly used adjunct or substitute for conjoint analysis with large numbers of items. However, different types or "flavours" can be used, depending on the task at hand, and might incorporate Buy-your-own tasks, configurators or take the basic principles and extend them to create tailored designs for specific markets. |
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Conjoint analysis - market modeling demonstration |
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Conjoint analysis applications |
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Conjoint analysis for international markets |
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Top 10 mistakes when using conjoint analysis |
Conjoint analysis counts as one of the more sophisticated, and powerful, techniques of market research. It's aim is to estimate what drives customer value, and to say what customers would buy when faced with different products at different prices. But it gets the power and insight due to careful design and appropriate analysis. Inexperienced users can create poor designs without realising it, and research users can have poor experiences with conjoint analysis because the agency or consultants do not really understand what is involved. | |
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Alternatives to conjoint analysis |
Note that we would consider options such as Discrete Choice Modelling (DCM), stated preference research and elements like shop-display tests for pricing as 'flavours' of conjoint analysis rather than purely distinct. |
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History of conjoint analysis |
Key developers have been Paul Green (Marketing use of decompositional models), Jordan Louviere (Choice-based conjoint) and Rich Johnson (Sawtooth Software and Adaptive conjoint methods) and more recently Sawtooth has pioneered a number of new approaches. |
MaxDiff and hierarchy of needs studies |
MaxDiff and Hierarchy of Needs studies are used In new product development, concept testing and building marketing messages to identify what customer priorities are for development or marketing communications. Often businesses have a long list of potential product benefits and the key is in identifying which to prioritise and which work best with which audience. Our specialist MaxDiff or hierarchy of needs studies allow you to test up 40 or 50 benefits in one go, both singularly and in packages so you know where customer priorities lie. These are designed to be very quick and simple to carry out, but to produce market models that allow you to see how combinations of options compare against each other. | |
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Simple but complete full-profile conjoint analysis |
One of the original flavours or types of conjoint analysis is Full Profile and this is relatively simple to demonstrate. The attached Excel spreadsheet 📎 shows how a simple small full-profile conjoint analysis design can be built and analysed using Excel. |
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Conjoint demonstration - technical notes |
This article outlines some of the technical notes and issues around the demonstration. There are actually several "flavours" of conjoint analysis depending on the task at hand and we have a simple Excel-based spreadsheet to show the general principles of calculating utilities. |