Normative data in user research refers to a set of standardized measurements or scores that represent typical performance or characteristics of a specific population. It serves as a benchmark for comparing individual or group results against the average or expected values.
Synonyms: Benchmark data, Reference data, Standard scores, Population norms, Comparative data
Normative data plays a crucial role in user research by providing context and meaning to the data collected. It allows researchers and designers to:
Researchers and UX professionals utilize normative data in various ways:
What's the difference between normative data and raw data?: Normative data is processed and standardized information that represents typical values or performance for a population, while raw data is unprocessed information collected directly from research participants.
How often should normative data be updated?: Normative data should be regularly updated to reflect changes in user behavior, technology, and design trends. The frequency depends on the specific field and how rapidly it evolves, but generally every 2-5 years is recommended.
Can normative data from one country be applied globally?: While some normative data may be applicable across cultures, it's important to consider cultural differences. Whenever possible, use region-specific normative data or conduct localized research to ensure accuracy.
How large should a sample size be to create reliable normative data?: The required sample size depends on the variability of the data and the desired level of precision. Generally, larger sample sizes (100+ participants) provide more reliable normative data, but statistical methods can help determine the appropriate size for specific studies.