Statistical Concepts: Difference between revisions
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* [[Statistics#Subjects|Statistics]] | * [[Statistics#Subjects|Statistics]] | ||
= | =Concepts= | ||
* [[Descriptive_Statistics#Overview|Descriptive Statistics]] | |||
=Correlation= | * Mean/Median/Mode. Difference between mean and average. | ||
* Unique Median | |||
* standard deviation | |||
* <span id='Regression'></span>[[Regression|Regression]] and [[Regression#Linear_Regression|Linear Regression]]. | |||
** Dependent variable (criterion) | |||
** Independent variable (predictor) | |||
* [[Classification]] | |||
* [[Bayes Rule]] | |||
* [[Percentile]] | |||
* Scatter Plot | |||
* Linearity (linear exact or not exact) | |||
* Positive and negative linear relationship. | |||
* Outlier | |||
* Deviation | |||
* Noise - deviation from a linear graph. | |||
* Monotonicity. | |||
* Bar Charts. Applies to 2D data. | |||
* Global trends. | |||
* Historgram. A bar chart where the vertical axis is a frequency count, as a function of the range. Applies to 1D data. | |||
* Frequency Count | |||
* Pie charts - represent relative outcomes. | |||
* Unrelated data | |||
* Simpson's paradox | |||
* Be skeptical and really understand how to turn raw data into conclusions. | |||
* Probability - the opposite of statistics. | |||
* P() notation | |||
* Truth table | |||
* Probability of a composite event (independence) | |||
* Dependence | |||
* Conditional probability | |||
* Conditional probability notation - important for Bayes Rule | |||
* Total probability | |||
* [[Bayes Rule]] | |||
** Prior probability | |||
** Unreliable measurement (Sensitivity/Specificity) | |||
** Joint probabilty | |||
** Posterior probabilty | |||
* Probability Distribution | |||
* Continous Probability Distribution. | |||
* Density of probability | |||
* Estimators | |||
* Laplacian estimator | |||
* Empirical (observational) frequency | |||
* Maximum likelihood estimator | |||
* Dirichelet data | |||
* Laplacian Estimator | |||
* Mode, bimodal, multimodal | |||
* Variance | |||
* Standard Deviation | |||
* Standard Score | |||
* [[Time Series]] | |||
==Correlation and Causation== | |||
* Correlation vs. Causation | |||
* Variables | |||
* Definition of correlation (Is correlation injectivity?) | |||
* Confounding variable. | |||
* https://en.wikipedia.org/wiki/Correlation_does_not_imply_causation | |||
* Even if there is no causation, correlation can be used in prediction. | |||
=TODO= | |||
* Relocate Continous Functions | |||
* Granger causality test https://en.wikipedia.org/wiki/Granger_causality |
Latest revision as of 22:28, 14 May 2024
Internal
Concepts
- Mean/Median/Mode. Difference between mean and average.
- Unique Median
- standard deviation
- Regression and Linear Regression.
- Dependent variable (criterion)
- Independent variable (predictor)
- Bayes Rule
- Percentile
- Scatter Plot
- Linearity (linear exact or not exact)
- Positive and negative linear relationship.
- Outlier
- Deviation
- Noise - deviation from a linear graph.
- Monotonicity.
- Bar Charts. Applies to 2D data.
- Global trends.
- Historgram. A bar chart where the vertical axis is a frequency count, as a function of the range. Applies to 1D data.
- Frequency Count
- Pie charts - represent relative outcomes.
- Unrelated data
- Simpson's paradox
- Be skeptical and really understand how to turn raw data into conclusions.
- Probability - the opposite of statistics.
- P() notation
- Truth table
- Probability of a composite event (independence)
- Dependence
- Conditional probability
- Conditional probability notation - important for Bayes Rule
- Total probability
- Bayes Rule
- Prior probability
- Unreliable measurement (Sensitivity/Specificity)
- Joint probabilty
- Posterior probabilty
- Probability Distribution
- Continous Probability Distribution.
- Density of probability
- Estimators
- Laplacian estimator
- Empirical (observational) frequency
- Maximum likelihood estimator
- Dirichelet data
- Laplacian Estimator
- Mode, bimodal, multimodal
- Variance
- Standard Deviation
- Standard Score
Correlation and Causation
- Correlation vs. Causation
- Variables
- Definition of correlation (Is correlation injectivity?)
- Confounding variable.
- https://en.wikipedia.org/wiki/Correlation_does_not_imply_causation
- Even if there is no causation, correlation can be used in prediction.
TODO
- Relocate Continous Functions
- Granger causality test https://en.wikipedia.org/wiki/Granger_causality