在 英语 中使用 More variables 的示例及其翻译为 中文
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Today, the confrontation between the United States and Iran has added more variables to this already troubled country.
However, unlike human studies, more variables can be controlled and measured- such as exact food intake- to provide more  meaningful data.
Time Series Data: Data collected over time on one or more variables.
AI innovations have strengthened recommendation engines, allowing them to process more variables and more  media types and improve their accuracy.
A declaration specifies a type, and contains a list of one or more variables of that type as follows.
A variable  declaration statement is used to declare one or more variables and to give them names.
Most companies will have to consider more variables and involve more  decision makers than they have in the past.
A variable  definition specifies a data type and contains a list of one or more variables of that type as follows.
As mentioned above, it estimates the relationship between two or more variables.
This is because there is a chance of naming collisions, where two or more variables are named the same.
In mathematics, an equation is a statement of an equality containing one or more variables.
Organizational decisions are often based on the relationship between two or more variables.
Ordinary least squares regression is a way to estimate a linear relationship between two or more variables.
As mentioned above, regression analysis estimates the relationship between two or more variables.
In mathematics, an equation is an equality containing one or more variables.
We can also improve our model by adding more variables(e.g. Gender) and creating different prediction lines for them.
They then assume that if they continue to tweak their system, taking into account a few more variables that they will increase their returns.
PLS regression is particularly suited when the matrix of predictors has more variables than observations, and when there is multicollinearity among X values.
Clustering models can handle a lot of variables,  but more variables can make interpreting results difficult.
So, hopefully that gives us more variables and more  opportunities in the race.