|
|||||||||
![]() |
|||||||||
|
|
|
Conjoint Analysis Surveys and Software Conjoint Analysis Definition Depending on the type of conjoint survey conducted, statistical methods like ordinary least squares regression, weighted least squares regression, and logit analysis are used to translate respondent answers into importance values and utilities. Conjoint analysis methodology has withstood intense scrutiny from both academics and professional researchers over the past 25 years and is widely used in consumer products, durable goods, pharmaceutical, transportation and service industries.
In conjoint analysis, the relationships between each of the features and levels are evaluated. The goal is to reveal the underlying value respondents would consciously or subconsciously place on profiles that represent full product configurations. Using the Question Wizard, you can build and deploy a conjoint question set in under 20 minutes. If you know the Features/Levels for the product/service that you want to evaluate, the Survey Engine handles all the complex logic of preparing questions for feature and level presentation. The following section describes the most popular types of conjoint analysis that we offer. More basic types of conjoint analysis can always be done. Full Profile Conjoint Analysis The conjoint analysis profiles present different combinations representing express mail services. To these profiles respondents state their preference. The design of conjoint analysis combinations is non-trivial and must be done using experimental design methodology. The conjoint analysis process a set of utility functions for each respondent measured, for segments within the sample, and for the total sample. Utility functions show the demand curve or relative importance of each attribute and each level of each attribute. Conjoint analysis simulations are used to analyze the sensitivity of each of the attributes to changes in the market place. Conjoint simulations of the actual market place can be run to estimate the choice share (market share) that would derived from changing the feature level combinations that make up the product. Conjoint simulations typically assume that consumer utilities are linear and additive and may not represent real world. Self-Explicated Conjoint Analysis
Initially, all attribute levels are presented to respondents for evaluation to eliminate any levels that would not be acceptable in a product under any conditions. Next, attribute levels are presented and each level is evaluated for desirability. Finally, based on these evaluations, the most desirable levels of all attributes are evaluated relative importance. As with the full-profile model, these scores can be summed and simulations run to obtain a score for any profile of interest. This simple self-reporting approach is easier for the respondent to complete and straightforward in terms of determining the importance or desirability of attributes and attribute levels (See Srinivasan, V. (1997, May). Surprising robustness of the self-explicated approach to customer preference structure measurement. Journal of Marketing Research, 34, 286-291. Discrete-Choice Conjoint Models When customers shop for products such as clothing or even a dishwasher, a brand is often associated with a set of attributes, such as its price, style, color, fit and type of material. Each individual respondent when faced with a choice of two to five product configurations makes his/her choice. These choices reflect the value or utility he/she assigns to each attribute. These choices are later analyzed to produce the utility functions that derive differences in the attribute values from the competing alternatives and/or differences in the characteristics. Discrete choice conjoint analysis developed using d-optimal designs offers some advantages over a ratings based conjoint analysis. Discrete choice conjoint presents optimal choice sets within a group of products. Discrete choice conjoint analysis provides estimates of the demand curves for all attributes and brands included in the study. Also incorporated is the ability to estimate feature level interactions, including the brand-price interaction. Like all conjoint analysis simulations, discrete choice conjoint analysis simulations can be used to place products choices into a competitive market situation. Conjoint Analysis Simulation Example
|