Design of experiments | Statistical theory

Design of experiments

The design of experiments (DOE, DOX, or experimental design) is the design of any task that aims to describe and explain the variation of information under conditions that are hypothesized to reflect the variation. The term is generally associated with experiments in which the design introduces conditions that directly affect the variation, but may also refer to the design of quasi-experiments, in which natural conditions that influence the variation are selected for observation. In its simplest form, an experiment aims at predicting the outcome by introducing a change of the preconditions, which is represented by one or more independent variables, also referred to as "input variables" or "predictor variables." The change in one or more independent variables is generally hypothesized to result in a change in one or more dependent variables, also referred to as "output variables" or "response variables." The experimental design may also identify control variables that must be held constant to prevent external factors from affecting the results. Experimental design involves not only the selection of suitable independent, dependent, and control variables, but planning the delivery of the experiment under statistically optimal conditions given the constraints of available resources. There are multiple approaches for determining the set of design points (unique combinations of the settings of the independent variables) to be used in the experiment. Main concerns in experimental design include the establishment of validity, reliability, and replicability. For example, these concerns can be partially addressed by carefully choosing the independent variable, reducing the risk of measurement error, and ensuring that the documentation of the method is sufficiently detailed. Related concerns include achieving appropriate levels of statistical power and sensitivity. Correctly designed experiments advance knowledge in the natural and social sciences and engineering. Other applications include marketing and policy making. The study of the design of experiments is an important topic in metascience. (Wikipedia).

Design of experiments
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Design Thinking

If you are interested in learning more about this topic, please visit http://www.gcflearnfree.org/ to view the entire tutorial on our website. It includes instructional text, informational graphics, examples, and even interactives for you to practice and apply what you've learned.

From playlist Design Thinking

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A short a cappella tribute to experimentalists. It is sung while performing three simple experiments with household items: Mentos dropped in diet Coke, a tea bag emptied and burned, and a ping pong ball floating in the air stream of a hair dryer.

From playlist Science Experiments!

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Experimental Coding in Designed Experiments

To support the creation of videos like this, and get exclusive content, early access, and a behind-the-scenes look at my channel, support me on patreon: https://www.patreon.com/edmundsj This is part of my series on statistically designed experiments, you can find the full playlist here:

From playlist Design of Experiments (DOE)

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Design thinking can improve anything from a water bottle to a community water system. See how design thinking improves the creative process, from Professor Stefanos Zenios: http://stanford.io/1mgkHGR

From playlist More

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The full factorial is perhaps the most widely used statistically designed experiment, and allows teasing out complex interactions between different factors. However, it has its drawbacks, and we explore these as well. To support the creation of videos like these, get early access, access

From playlist Design of Experiments (DOE)

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Join Data Science Dojo and Statsig for a conversation on experimentation and testing. Learn how leading companies like Facebook use experimentation to build better products and accelerate their growth with 10x as much testing. Web experimentation can range from simple projects like design

From playlist A/B Testing & Beyond

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From playlist Design of Experiments (DOE)

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In this video, you’ll learn how to broaden your definition of design through critical thinking, in order to see it in the world around you! Visit https://www.gcflearnfree.org/ to learn even more. We hope you enjoy!

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Industrial engineering | Algebraic statistics | Glossary of experimental design | Royal Commission on Animal Magnetism | Reproducibility | Repeated measures design | Polynomial regression | Computer experiment | Linear algebra | Regression analysis | Weighing matrix | Randomized controlled trial | Analysis of variance | Central composite design | Abraham Wald | Experimetrics | Institutional review board | Randomization | Law of large numbers | Statistical population | Antecedent variable | Multifactor design of experiments software | Factor analysis | Sequential analysis | Bayesian statistics | Experiment | Taguchi methods | Confirmation bias | Block design | Reliability (statistics) | Linear model | Box–Behnken design | Multi-armed bandit | Plackett–Burman design | Statistical model | William Gemmell Cochran | Lady tasting tea | Confounding | Statistical inference | Adversarial collaboration | Adaptive design (medicine) | Blocking (statistics) | Frank Yates | Combinatorial design | Fractional factorial design | Quasi-experiment | Sample size determination | Spurious relationship | Interaction (statistics) | Replication (statistics) | Controlling for a variable | System identification | Sensitivity and specificity | Probability distribution | Bayesian probability | Orthogonality | Standard deviation | Factorial experiment | Orthogonal array | Bayesian experimental design | Dependent and independent variables | Survey sampling | One-factor-at-a-time method | Raj Chandra Bose | Sampling (statistics) | Charles Sanders Peirce | Grey box model | Sampling distribution | Instrument effect | Clinical study design | Clinical trial | Control variable | Econometrics | Optimal design | Validity (statistics)