- Statistics for Data Science
- James D. Miller
- 188字
- 2021-07-02 14:58:52
Fitting
Fitting is the process of measuring how well a statistical model or process describes a data scientist's observations pertaining to a recordset or experiment. These measures will attempt to point out the discrepancy between observed values and probable values. The probable values of a model or process are known as a distribution or a probability distribution.
Therefore, a probability distribution fitting (or distribution fitting) is when the data scientist fits a probability distribution to a series of data concerning the repeated measurement of a variable phenomenon.
The object of a data scientist performing a distribution fitting is to predict the probability or to forecast the frequency of, the occurrence of the phenomenon at a certain interval.
There are numerous probability distributions a data scientist can select from. Some will fit better to the observed frequency of the data than others will. The distribution giving a close fit is supposed to lead to good predictions; therefore, the data scientist needs to select a distribution that suits the data well.
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