A: To help you understand the possibility of data association and the current situation when there are multiple explanatory variables.
When considering a two-dimensional graph, make a slope in the binary range.
(1) To think more closely about the laws of straight lines and curves at a certain point and make them highly accurate. (2) By doing this, it becomes possible to further grasp the relationship between the two values and apply it to others as a law.
① Draw a tangent to the first value of the binary. ② Calculate this with a mathematical formula (extreme value)
Next, consider partial differentiation Partial differentiation is performed for the purpose of differentiation in multivariable functions.
Consider a graph (many inputs, 1 output) in a multivariable function. You can basically think in three dimensions
Fix one point and find the slope (extreme value) from multiple axes.
The graph has an image that is represented in multiple dimensions and becomes a curve
This symbol is a symbol for distinguishing between partial differential and differential
To represent fine movements in a direction
How to utilize this multivariable function? Calculation that appears when the explanatory variables are two or more values in data analysis using machine learning.
That is, well "Let's differentiate for the time being" Let's find a highly accurate law in the given data! !! It turned out that it was to say.
It may have been easier than I expected.
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