Published on June 12, 2020 by Pritha Bhandari. Revised on August 19, 2022. Quantitative research is the process of collecting and analyzing numerical data. It can be used to find patterns and averages, make predictions, test causal relationships, and generalize results to wider
populations. Quantitative research is the opposite of qualitative research, which involves collecting and analyzing non-numerical data [e.g., text, video, or audio]. Quantitative research is widely used in the natural and social sciences: biology, chemistry, psychology, economics, sociology, marketing, etc. You can use quantitative research methods for descriptive, correlational or experimental research. Correlational and experimental research can both be used to formally test hypotheses, or predictions, using statistics. The results may be
generalized to broader populations based on the sampling method used. To collect quantitative data, you will often need to use operational definitions that translate abstract concepts [e.g., mood] into observable and quantifiable measures [e.g., self-ratings of feelings
and energy levels]. Once data is collected, you may need to process it before it can be analyzed. For example, survey and test data may need to be transformed from words to numbers. Then, you can use statistical analysis to answer your
research questions.Quantitative research methods
Research methodHow to useExample Experiment Control or manipulate an independent variable to measure its effect on a dependent
variable.
To test whether an intervention can reduce procrastination in college students, you give equal-sized groups either a procrastination intervention or a comparable task. You compare self-ratings of procrastination behaviors between the groups after the intervention.
Survey Ask questions of a group of people in-person, over-the-phone or online.
You distribute questionnaires with rating scales to first-year international college students to investigate their experiences of culture shock.
[Systematic] observation Identify a behavior or occurrence of interest and monitor it in its natural setting.
To study college classroom participation, you sit in on classes to observe them, counting and recording the prevalence of active and passive behaviors by students from different backgrounds.
Secondary research Collect data that has been gathered for other purposes e.g., national surveys or historical records.
To assess whether attitudes towards climate change have changed since the 1980s, you collect relevant questionnaire data from widely available longitudinal studies.
Quantitative data analysis
Descriptive statistics will give you a summary of your data and include measures of averages and variability. You can also use graphs, scatter plots and frequency tables to visualize your data and check for any trends or outliers.
Using inferential statistics, you can make predictions or generalizations based on your data. You can test your hypothesis or use your sample data to estimate the population parameter.
Examples of descriptive and inferential statisticsYou hypothesize that first-year college students procrastinate more than fourth-year college students. You collect data on procrastination levels of the two groups using 7-point self-rating scales.First, you use descriptive statistics to get a summary of the data. You find the mean [average] and the mode [most frequent rating] of procrastination of the two groups, and plot the data to see if there are any outliers.
Next, you perform inferential statistics to test your hypothesis. Using a t-test to compare the mean ratings of the two groups, you find a significant difference and support for your hypothesis.
You can also assess the reliability and validity of your data collection methods to indicate how consistently and accurately your methods actually measured what you wanted them to.
Advantages of quantitative research
Quantitative research is often used to standardize data collection and generalize findings.
Strengths of this approach include:
- Replication
Repeating the study is possible because of standardized data collection protocols and tangible definitions of abstract concepts.
- Direct comparisons of results
The study can be reproduced in other cultural settings, times or with different groups of participants. Results can be compared statistically.
- Large samples
Data from large samples can be processed and analyzed using reliable and consistent procedures through quantitative data analysis.
- Hypothesis testing
Using formalized and established hypothesis testing procedures means that you have to carefully consider and report your research variables, predictions, data collection and testing methods before coming to a conclusion.
Disadvantages of quantitative research
Despite the benefits of quantitative research, it is sometimes inadequate in explaining complex research topics. Its limitations include:
- Superficiality
Using precise and restrictive operational definitions may inadequately represent complex concepts. For example, the concept of mood may be represented with just a number in quantitative research, but explained with elaboration in qualitative research.
- Narrow focus
Predetermined variables and measurement procedures can mean that you ignore other relevant observations.
- Structural bias
Despite standardized procedures, structural biases can still affect quantitative research. Missing data, imprecise measurements or inappropriate sampling methods are biases that can lead to the wrong conclusions.
- Lack of context
Quantitative research often uses unnatural settings like laboratories or fails to consider historical and cultural contexts that may affect data collection and results.
Frequently asked questions about quantitative research
What is data collection?
Data collection is the systematic process by which observations or measurements are gathered in research. It is used in many different contexts by academics, governments, businesses, and other organizations.
What is operationalization?
Operationalization means turning abstract conceptual ideas into measurable observations.
For example, the concept of social anxiety isn’t directly observable, but it can be operationally defined in terms of self-rating scores, behavioral avoidance of crowded places, or physical anxiety symptoms in social situations.
Before collecting data, it’s important to consider how you will operationalize the variables that you want to measure.
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