STIPS Module 7: Predictive Modeling and Text Mining
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving (STIPS) is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The ...
Statistical Thinking for Industrial Problem Solving is a free, online course available to anyone interested in building practical skills in using data to solve problems better. The course is comprise...
Learn more in our free online course:
Statistical Thinking for Industrial Problem Solving
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In this video, we use the Chemical Manufacturing example and fit a regression tree for the continuous response, Yield. We use JMP Pro for this demo.
The acceptable yield for this process is 80%.
The data have been partitioned into training and validation data. 60% of the observations...
Learn more in our free online course:
Statistical Thinking for Industrial Problem Solving
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In this video, we use the Chemical Manufacturing example and fit a bootstrap forest for the continuous response, Yield. We use JMP Pro for this demo.
The acceptable yield for this process is 80%. There are 17 potential predictors, and only 90 observations. We'll use a bootstrap forest ...
Learn more in our free online course:
Statistical Thinking for Industrial Problem Solving
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In this video, we use the Chemical Manufacturing 2 data. We fit a neural network model for Yield using the options available in the standard version of JMP for this demo.
First, we select Analyze, then Predictive Modeling, and then Neural.
We start by adding Yield as the Y, Response ...
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Statistical Thinking for Industrial Problem Solving
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In this example, we use the Chemical Manufacturing 2 data. We fit a neural network model for the categorical response, Performance, using all of the available predictors and the validation column. We use the options available in JMP Pro for this demo.
First, we select Analyze, then Pre...
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Statistical Thinking for Industrial Problem Solving
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In this video, we show how to fit linear models using generalized regression. We use the Chemical Manufacturing data and fit a least squares model for the continuous response, Yield. Then we fit a logistic regression model for the categorical response, Performance.
First, we fit a linear...
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Statistical Thinking for Industrial Problem Solving
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In this video, we use the Chemical Manufacturing data. We fit a logistic regression model for the categorical response, Performance, using generalized regression. Then we show how to do variable selection to reduce this model.
First, we select Fit Model from the Analyze menu. We select P...
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Statistical Thinking for Industrial Problem Solving
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In this video, we show how to fit a penalized regression model using generalized regression in JMP Pro. We use the file Bodyfat 07.jmp and fit a model for %Fat using the Lasso with validation.
First, we fit a linear regression model for %Fat.
To do this, we select Fit Model from the An...
In this article, you learn how to process unstructured text data using the file Pet Owner.jmp. This example is based on the file Pet Survey.jmp, in the JMP sample data library.
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Statistical Thinking for Industrial Problem Solving
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In this video, we show how to compare and select predictive models in JMP Pro. We use the data set Bodyfat 07 to fit predictive models for continuous %Fat using all of the available predictors.
The column Validation 2 partitions the data into training, validation, and test sets.
We hav...
Learn more in our free online course:
Statistical Thinking for Industrial Problem Solving
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In this video, you learn how to visualize and explore unstructured text data using the file Pet Owner.jmp.
To analyze these data, we select Text Explorer from the Analyze menu in JMP.
We select Survey Response as the text column, and click OK to run the analysis using the default token...
Follow the guided examples in these videos to learn how to: Create a Validation Column (JMP Pro)Fit a Multiple Linear Regression Model with ValidationFit a Logistic Model with ValidationChange the Cutoff for ClassificationCreate a Classification TreeFit a Regression TreeFit a Decision Tree with ValidationSelect variables using Bootstrap ForestFit a Neural NetworkFit a Neural Model with Two Layer...