rem4:experimental_designs_ii
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rem4:experimental_designs_ii [2012/01/19 11:58] – IwXHnCtUwrHhQqGkD 193.27.47.253 | rem4:experimental_designs_ii [2024/04/29 13:33] (current) – external edit 127.0.0.1 | ||
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+ | ===Overview=== | ||
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+ | | True Experimental Designs: Procedure | ||
+ | | Some Statistical Methods for Experimental Designs: What to Use When | | ||
+ | | t-test | ||
+ | | Using Models to Validate and Measure: The Model Human Processor | ||
+ | | Next Project: Write Contributions, | ||
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+ | ===Concepts=== | ||
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+ | | Independent variables | ||
+ | | Levels | ||
+ | | Dependent variables | ||
+ | | Sample: subject selection from a "population" | ||
+ | | Spurious correlation | ||
+ | | Between-subjects design | ||
+ | | Within-subjects design | ||
+ | | Internal validity | ||
+ | | External validity | ||
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+ | ===True Experimental Designs: Procedure=== | ||
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+ | | Identify the phenomenon to study | Characterize it in ways that make it easy to study. | ||
+ | | Ask the right question(s) | ||
+ | | Identify variables that matter | ||
+ | | Choose experimental design | ||
+ | | Design the setup | Identify all factors that could potentially confound your results. | ||
+ | | Execute the experiment | ||
+ | | Collect the data | Use tables, graphs, as appropriate - very important to choose right presentation method. | ||
+ | | Apply statistical tests | Make sure you select the right statistical test based on your design and your knowledge of the relationship between your sample and your population, and the distribution and means of the population that the sample is drawn from. | | ||
+ | | Draw conclusions from statistical tests | Use inference, based on probabilities, | ||
+ | | Write up the report | ||
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+ | === Some Statistical Methods for Experimental Designs: What to Use When === | ||
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+ | | Selecting between hypotheses | ||
+ | | **What you study** | ||
+ | | Two factors varying along a continuum | ||
+ | | Two factors, where independent variable has (or can have) a few discrete values | ||
+ | | One dependent variable, multiple independent variables, each with two or more levels | ||
+ | | Many dependent variables, many independent variables | ||
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+ | === t-test === | ||
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+ | | A fairly robust test for simple comparison experiments | ||
+ | | Sample size | Good for small sample sizes | | ||
+ | | Paired t-test | ||
+ | | Standard t-test | ||
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+ | === Using Models to Validate and Measure - a.k.a. Simulation === | ||
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+ | | What simulation is | A simplified model of subject under study - that is, a simplification not of the key causal factors in the phenomenon, which must remain in our model for it to be useful, but rather a reduction (sometimes a radical one) of the "extra stuff that really doesn' | ||
+ | | What it does | Simplifies! Makes it easier to \\ (A) set up testing conditions, \\ (B) control independent variables, \\ (C) make changes to the independent variables, | ||
+ | | When to use | When the complexity of that which is to be modeled/ | ||
+ | | Kinds of simulation methodologies | Continuous time and state: E.g. differential equations. \\ Discrete time/state: E.g. automata. \\ | | ||
+ | | Relation between scientific theories and simulations | ||
+ | | Procedure | ||
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+ | === Levels of System Knowledge in Simulation === | ||
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+ | | 0 Source Level | What variables to measure and how to observe them | | ||
+ | | 1 Data | Data collected from a source system | ||
+ | | 1 Generative | ||
+ | | 1 Structure | ||
+ | | <sub>Source: G. Klir 1985</ | ||
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+ | === Using Models to Validate and Measure: The Model Human Processor === | ||
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+ | | Card, Moran & Newell | ||
+ | | Model Human Processor | ||
+ | | Use data from psychological studies | ||
+ | | Various elements of a user's mind | Memories, perception modules, cycle times, decay times, etc., plus a number of typical performance values and principles on how to use model to predict performance | ||
+ | | Interest has been growing | ||
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+ | EOF |
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