# Build a regression model using Scikit-learn: regression two ways ![Linear vs polynomial regression infographic](./images/linear-polynomial.png) > Infographic by [Dasani Madipalli](https://twitter.com/dasani_decoded) ## [Pre-lecture quiz](https://white-water-09ec41f0f.azurestaticapps.net/quiz/13/) > ### [This lesson is available in R!](./solution/R/lesson_3-R.ipynb) ### Introduction So far you have explored what regression is with sample data gathered from the pumpkin pricing dataset that we will use throughout this lesson. You have also visualized it using Matplotlib. Now you are ready to dive deeper into regression for ML. In this lesson, you will learn more about two types of regression: _basic linear regression_ and _polynomial regression_, along with some of the math underlying these techniques. > Throughout this curriculum, we assume minimal knowledge of math, and seek to make it accessible for students coming from other fields, so watch for notes, ๐Ÿงฎ callouts, diagrams, and other learning tools to aid in comprehension. ### Prerequisite You should be familiar by now with the structure of the pumpkin data that we are examining. You can find it preloaded and pre-cleaned in this lesson's _notebook.ipynb_ file. In the file, the pumpkin price is displayed per bushel in a new dataframe. Make sure you can run these notebooks in kernels in Visual Studio Code. ### Preparation As a reminder, you are loading this data so as to ask questions of it. - When is the best time to buy pumpkins? - What price can I expect of a case of miniature pumpkins? - Should I buy them in half-bushel baskets or by the 1 1/9 bushel box? Let's keep digging into this data. In the previous lesson, you created a Pandas dataframe and populated it with part of the original dataset, standardizing the pricing by the bushel. By doing that, however, you were only able to gather about 400 datapoints and only for the fall months. Take a look at the data that we preloaded in this lesson's accompanying notebook. The data is preloaded and an initial scatterplot is charted to show month data. Maybe we can get a little more detail about the nature of the data by cleaning it more. ## A linear regression line As you learned in Lesson 1, the goal of a linear regression exercise is to be able to plot a line to: - **Show variable relationships**. Show the relationship between variables - **Make predictions**. Make accurate predictions on where a new datapoint would fall in relationship to that line. It is typical of **Least-Squares Regression** to draw this type of line. The term 'least-squares' means that all the datapoints surrounding the regression line are squared and then added up. Ideally, that final sum is as small as possible, because we want a low number of errors, or `least-squares`. We do so since we want to model a line that has the least cumulative distance from all of our data points. We also square the terms before adding them since we are concerned with its magnitude rather than its direction. > **๐Ÿงฎ Show me the math** > > This line, called the _line of best fit_ can be expressed by [an equation](https://en.wikipedia.org/wiki/Simple_linear_regression): > > ``` > Y = a + bX > ``` > > `X` is the 'explanatory variable'. `Y` is the 'dependent variable'. The slope of the line is `b` and `a` is the y-intercept, which refers to the value of `Y` when `X = 0`. > >![calculate the slope](images/slope.png) > > First, calculate the slope `b`. Infographic by [Jen Looper](https://twitter.com/jenlooper) > > In other words, and referring to our pumpkin data's original question: "predict the price of a pumpkin per bushel by month", `X` would refer to the price and `Y` would refer to the month of sale. > >![complete the equation](images/calculation.png) > > Calculate the value of Y. If you're paying around $4, it must be April! Infographic by [Jen Looper](https://twitter.com/jenlooper) > > The math that calculates the line must demonstrate the slope of the line, which is also dependent on the intercept, or where `Y` is situated when `X = 0`. > > You can observe the method of calculation for these values on the [Math is Fun](https://www.mathsisfun.com/data/least-squares-regression.html) web site. Also visit [this Least-squares calculator](https://www.mathsisfun.com/data/least-squares-calculator.html) to watch how the numbers' values impact the line. ## Correlation One more term to understand is the **Correlation Coefficient** between given X and Y variables. Using a scatterplot, you can quickly visualize this coefficient. A plot with datapoints scattered in a neat line have high correlation, but a plot with datapoints scattered everywhere between X and Y have a low correlation. A good linear regression model will be one that has a high (nearer to 1 than 0) Correlation Coefficient using the Least-Squares Regression method with a line of regression. โœ… Run the notebook accompanying this lesson and look at the City to Price scatterplot. Does the data associating City to Price for pumpkin sales seem to have high or low correlation, according to your visual interpretation of the scatterplot? ## Prepare your data for regression Now that you have an understanding of the math behind this exercise, create a Regression model to see if you can predict which package of pumpkins will have the best pumpkin prices. Someone buying pumpkins for a holiday pumpkin patch might want this information to be able to optimize their purchases of pumpkin packages for the patch. Since you'll use Scikit-learn, there's no reason to do this by hand (although you could!). In the main data-processing block of your lesson notebook, add a library from Scikit-learn to automatically convert all string data to numbers: ```python from sklearn.preprocessing import LabelEncoder new_pumpkins.iloc[:, 0:-1] = new_pumpkins.iloc[:, 0:-1].apply(LabelEncoder().fit_transform) ``` If you look at the new_pumpkins dataframe now, you see that all the strings are now numeric. This makes it harder for you to read but much more intelligible for Scikit-learn! Now you can make more educated decisions (not just based on eyeballing a scatterplot) about the data that is best suited to regression. Try to find a good correlation between two points of your data to potentially build a good predictive model. As it turns out, there's only weak correlation between the City and Price: ```python print(new_pumpkins['City'].corr(new_pumpkins['Price'])) 0.32363971816089226 ``` However there's a bit better correlation between the Package and its Price. That makes sense, right? Normally, the bigger the produce box, the higher the price. ```python print(new_pumpkins['Package'].corr(new_pumpkins['Price'])) 0.6061712937226021 ``` A good question to ask of this data will be: 'What price can I expect of a given pumpkin package?' Let's build this regression model ## Building a linear model Before building your model, do one more tidy-up of your data. Drop any null data and check once more what the data looks like. ```python new_pumpkins.dropna(inplace=True) new_pumpkins.info() ``` Then, create a new dataframe from this minimal set and print it out: ```python new_columns = ['Package', 'Price'] lin_pumpkins = new_pumpkins.drop([c for c in new_pumpkins.columns if c not in new_columns], axis='columns') lin_pumpkins ``` ```output Package Price 70 0 13.636364 71 0 16.363636 72 0 16.363636 73 0 15.454545 74 0 13.636364 ... ... ... 1738 2 30.000000 1739 2 28.750000 1740 2 25.750000 1741 2 24.000000 1742 2 24.000000 415 rows ร— 2 columns ``` 1. Now you can assign your X and y coordinate data: ```python X = lin_pumpkins.values[:, :1] y = lin_pumpkins.values[:, 1:2] ``` โœ… What's going on here? You're using [Python slice notation](https://stackoverflow.com/questions/509211/understanding-slice-notation/509295#509295) to create arrays to populate `X` and `y`. 2. Next, start the regression model-building routines: ```python from sklearn.linear_model import LinearRegression from sklearn.metrics import r2_score, mean_squared_error, mean_absolute_error from sklearn.model_selection import train_test_split X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=0) lin_reg = LinearRegression() lin_reg.fit(X_train,y_train) pred = lin_reg.predict(X_test) accuracy_score = lin_reg.score(X_train,y_train) print('Model Accuracy: ', accuracy_score) ``` Because the correlation isn't particularly good, the model produced isn't terribly accurate. ```output Model Accuracy: 0.3315342327998987 ``` 3. You can visualize the line that's drawn in the process: ```python plt.scatter(X_test, y_test, color='black') plt.plot(X_test, pred, color='blue', linewidth=3) plt.xlabel('Package') plt.ylabel('Price') plt.show() ``` ![A scatterplot showing package to price relationship](./images/linear.png) 4. Test the model against a hypothetical variety: ```python lin_reg.predict( np.array([ [2.75] ]) ) ``` The returned price for this mythological Variety is: ```output array([[33.15655975]]) ``` That number makes sense, if the logic of the regression line holds true. ๐ŸŽƒ Congratulations, you just created a model that can help predict the price of a few varieties of pumpkins. Your holiday pumpkin patch will be beautiful. But you can probably create a better model! ## Polynomial regression Another type of linear regression is polynomial regression. While sometimes there's a linear relationship between variables - the bigger the pumpkin in volume, the higher the price - sometimes these relationships can't be plotted as a plane or straight line. โœ… Here are [some more examples](https://online.stat.psu.edu/stat501/lesson/9/9.8) of data that could use polynomial regression Take another look at the relationship between Variety to Price in the previous plot. Does this scatterplot seem like it should necessarily be analyzed by a straight line? Perhaps not. In this case, you can try polynomial regression. โœ… Polynomials are mathematical expressions that might consist of one or more variables and coefficients Polynomial regression creates a curved line to better fit nonlinear data. 1. Let's recreate a dataframe populated with a segment of the original pumpkin data: ```python new_columns = ['Variety', 'Package', 'City', 'Month', 'Price'] poly_pumpkins = new_pumpkins.drop([c for c in new_pumpkins.columns if c not in new_columns], axis='columns') poly_pumpkins ``` A good way to visualize the correlations between data in dataframes is to display it in a 'coolwarm' chart: 2. Use the `Background_gradient()` method with `coolwarm` as its argument value: ```python corr = poly_pumpkins.corr() corr.style.background_gradient(cmap='coolwarm') ``` This code creates a heatmap: ![A heatmap showing data correlation](./images/heatmap.png) Looking at this chart, you can visualize the good correlation between Package and Price. So you should be able to create a somewhat better model than the last one. ### Create a pipeline Scikit-learn includes a helpful API for building polynomial regression models - the `make_pipeline` [API](https://scikit-learn.org/stable/modules/generated/sklearn.pipeline.make_pipeline.html?highlight=pipeline#sklearn.pipeline.make_pipeline). A 'pipeline' is created which is a chain of estimators. In this case, the pipeline includes polynomial features, or predictions that form a nonlinear path. 1. Build out the X and y columns: ```python X=poly_pumpkins.iloc[:,3:4].values y=poly_pumpkins.iloc[:,4:5].values ``` 2. Create the pipeline by calling the `make_pipeline()` method: ```python from sklearn.preprocessing import PolynomialFeatures from sklearn.pipeline import make_pipeline pipeline = make_pipeline(PolynomialFeatures(4), LinearRegression()) X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=0) pipeline.fit(np.array(X_train), y_train) y_pred=pipeline.predict(X_test) ``` ### Create a sequence At this point, you need to create a new dataframe with _sorted_ data so that the pipeline can create a sequence. Add the following code: ```python df = pd.DataFrame({'x': X_test[:,0], 'y': y_pred[:,0]}) df.sort_values(by='x',inplace = True) points = pd.DataFrame(df).to_numpy() plt.plot(points[:, 0], points[:, 1],color="blue", linewidth=3) plt.xlabel('Package') plt.ylabel('Price') plt.scatter(X,y, color="black") plt.show() ``` You created a new dataframe by calling `pd.DataFrame`. Then you sorted the values by calling `sort_values()`. Finally you created a polynomial plot: ![A polynomial plot showing package to price relationship](./images/polynomial.png) You can see a curved line that fits your data better. Let's check the model's accuracy: ```python accuracy_score = pipeline.score(X_train,y_train) print('Model Accuracy: ', accuracy_score) ``` And voila! ```output Model Accuracy: 0.8537946517073784 ``` That's better! Try to predict a price: ### Do a prediction Can we input a new value and get a prediction? Call `predict()` to make a prediction: ```python pipeline.predict( np.array([ [2.75] ]) ) ``` You are given this prediction: ```output array([[46.34509342]]) ``` It does make sense, given the plot! And, if this is a better model than the previous one, looking at the same data, you need to budget for these more expensive pumpkins! ๐Ÿ† Well done! You created two regression models in one lesson. In the final section on regression, you will learn about logistic regression to determine categories. --- ## ๐Ÿš€Challenge Test several different variables in this notebook to see how correlation corresponds to model accuracy. ## [Post-lecture quiz](https://white-water-09ec41f0f.azurestaticapps.net/quiz/14/) ## Review & Self Study In this lesson we learned about Linear Regression. There are other important types of Regression. Read about Stepwise, Ridge, Lasso and Elasticnet techniques. A good course to study to learn more is the [Stanford Statistical Learning course](https://online.stanford.edu/courses/sohs-ystatslearning-statistical-learning) ## Assignment [Build a Model](assignment.md)