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This repository contains the price prediction model for King County, Washington. The model results of this analysis would prove invaluable to stakeholders in the King County, WA housing market.

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HOUSE PRICE PREDICTION (KING COUNTY, WA)

Overview

In this project a linear regression analysis on the King County Housing Data is performed. The goal is to explore the dataset and generate a model to predict the price of Houses in King County in Washington State. This analysis and the results that follow is of importance to homeowners, realtors, legislators and other stakeholders in the King County Housing Market as they would be able to gain insights into the determinants of house prices in their local housing market.

Model Assumptions

The linear regression model operates under the following assumptions:

  • Regression residuals must be normally distributed
  • The dependent variable and the independent variable have a linear relationship.
  • The residuals are homoskedastic and not autocorrelated.
  • Absence of multicollinearity between the independent variables.

To read more on the assumptions of linear regression, click here

Dependencies

The requirements.txt file contains the Python libraries needed to run the notebook and the model presented in this project.The dependencies can be installed using:

pip install -r requirements.txt

Data Preprocessing

Prior to model building, the dataset must be cleaned and preprocessed. This prepares the dataset to ensure it goes into the model, unbiased and in its best form. Dealing with missing values, datatype transformation, categorical encoding, outlier detection and multicollinearity check were the main preprocessing steps carried out on the data.

Missing Values and Datatype Transformation

The first step after importing the dataset was to ensure that all variables, whether feature or target, conformed to the right datatype and had no missing elements. only four features in the dataset had missing observation and this was dealt with by assigning modal values to fill in the missing values in the categorical features and assigning mean values to fill in the missing values in the numeric features. To achieve correct datatypes, four variables - condition, grade, zipcode and waterfront were transformed into categorical variables according to the data description for the dataset.

Categorical Encoding

To ensure all features exist as numeric values for input into the model, the four categorical variables in the dataset - condition, grade, zipcode and waterfront were encoded into numbers using Target encoding. Target encoding was chosen over other methods such as one-hot encoding or ordinal encoding due to the high number of categories in some of the features to be encoded.

Outlier Detection

To deal with outliers that exist in the dataset, outliers were removed by cutting off all values that exist above or below three standard deviations from the mean values of each feature. After performing this operation, 15% of the total dataset was dropped from the analysis. This helps to safeguard the model from values that could potentially swing the model during training.

Multicollinearity Check

A multicollinearity check is also performed on the model to ensure the coefficients are not biased. The precision of regression coefficients or regression predictions may be decreased if highly correlated explanatory variables are included in the model. Multicollinearity which can be detected by high variance inflation factors (VIF) values. To deal with multicollinearity, data features with a VIF above 5 were filtered out from the dataset.Multicollinearity renders regression coefficient estimates unreliable and the standard errors of the slope coefficients become artificially inflated, leading to problems with the statistical significance of the regression coefficients.

Dropped Columns

After all data preprocessing was performed, several columns were dropped from the dataset and the final dataset used to develop the price prediction model had 18603 observations with 15 features. The final features used in the house price prediction model were bedrooms, bathrooms, sqft_lot, floors, waterfront, view, longitude, latitude, condition, grade, yr_built, yr_renovated, zipcode, sqft_living15, and sqft_lot15.

Price Prediction Model

Baseline Model Building

  • The test-train-split was used on the dataset to test the predictive ability of the model. This helps to check how the model performs on data not passed through it, similar to how it is expected to perform in the real world.

  • The 80:20 test-train split was used for training and testing this model.

  • The linear regression model was instantiated and fitted/trained on the training dataset as the baseline model.

  • Predictions on the test dataset were made using the trained model and the model summary was extracted. The model summary displays the model's intercept and coefficients, along with accompanying hypothesis tests.

Baseline Model Results and Hypothesis Testing

  • The model had a constant value of $1,252,000 (One million, two hundred and fifty thousand dollars). This represents the average house price in King County when no additional features are added, i.e., the house price if all houses were the same.

  • The coefficients represent the slopes. In this model, the slopes represent the change in house prices caused by a unit change in one feature while holding all other features constant. For example, the coefficient for the year the house was built is -1359, this implies that for every year the house gets older, the price drops by $1,359 while holding all other variables constant. In the same vein, an additional bedroom causes the house price to rise by $17,410.

  • The model had an R-squared value of 0.784, implying that the model was able to explain about 78.4% of the variation in the dependent variable (i.e., King County house prices).

  • The model had an F-statistic of 3259. This implies that jointly, the model features do have a significant effect on the dependent variable (i.e., King County house prices). The null hypothesis of non-significance was rejected at 1% level of significance.

  • All model features house renovation year' have large t-values. This implies that while holding all other features constant, each model feature except for the 'house renovation year' has a significant effect on King County house prices. For every feature except the 'house renovation year', the null hypothesis of non-significance was rejected at 1% level of significance.

Baseline Model Interpretability with SHAP

The model is assessed for its global interpretability. This provides more context and understanding about the drivers of the house price predictions made by the model. It gives a sense of the importance of each feature in making predictions using the mean absolute SHAP value. The mean absolute SHAP value for each feature quantifies, on average, the magnitude (positive or negative) of each feature's contribution towards the predicted house prices. Features with higher mean absolute SHAP values are more influential in the price prediction. Mean absolute SHAP values represent the traditional feature importance of models.

The top 5 most important predictors of house price in the base model are:

  1. House Zipcode.
  2. House Grade.
  3. Age of House (Year it was built).
  4. Location of House (Longitude and Latitude).
  5. Number of Bathrooms.

The 5 least important predictors of house price in the base model are:

  1. Presence of a Waterfront.
  2. Year the House was Renovated.
  3. The Condition of the House.
  4. The number of times the house has been viewed.
  5. The square footage of interior housing living space for the nearest 15 neighbors.

Baseline Model Performance and Diagnostics

Model Performance

The measure of the error in the base model gives a good sense of its performance. Three error types are examined in this project. The errors are calculated based on the model performance on the test dataset after the test-train split. The errors computed are:

  • Mean Absolute Error (MAE): which is the mean of the absolute value of errors - $68,200
  • Mean Squared Error (MSE): which is the mean of the squared errors - $8,780,000,000
  • Root Mean Squared Error (RMSE): which is the square root of the mean of the squared errors - $93,700

Model Diagnostics

  • Heteroscedasticity : The Breusch-Pagan or White's test can be used to check for Homoskedasticity in the model. The null hypothesis states that the variances for the errors are equal while the alternative hypothesis is that the variances are not equal (or at least one is different from the others). Failure to reject the null hypothesis, indicated by the presence of a high p-value implies that the model produces homoskedastic errors. The Breusch-Pagan test was used and the results rejected the null hypothesis, indicating that the model had some heteroskedasticity. However, this was dealt with by employing a heteroskedastic variance-covariance matrix during the model refit.

  • Autocorrelation : Autocorrelation refers to the degree of correlation between the values of the same variables across different observations in the data. The null hypothesis states that the errors are random (non-autocorrelation) while the alternative hypothesis states that the errors are not random (autocorrelation). A failure to reject the null hypothesis, indicated by the presence of a high p-value implies that the model features are non-autocorrelated. Alternatively, the autocorrelation function plot could be used. The ACF plot clearly shows that the model does not suffer from autocorrelation in its residuals as every lag beyond the first lag is very close to zero.

  • Normality : The assumption of normality is usually checked using the QQ-plot visualization. Normally distributed errors usually cluster around the diagonal of a plot. Alternatively, checking that the mean of the residual is 0 is a way of checking for the normality of a model's residuals. The model QQ-Plot mostly follows the diagonal line in the plot and mean of residuals are very close to zero, indicating that the model errors are normally distributed.

Improving on the Base Model Performance and Metrics

To improve on the performance of the base model, other models were also used in predicting King County House prices. The RandomForestRegressor model, XGBRegressor model and the HistGradientBoostingRegressor model were employed to improve on the base model (linear regression model). All three models showed considerable improvement over the base model, with the HistGradientBoostingRegressor model yielding the highest explainability score for the target variable (house prices).

Model R-Squared Mean Absolute Error Mean Squared Error Root Mean Squared Error
Base Model (Linear Regression) 0.784 $68,200 $8,780,000,000 $93,700
HistGradientBoostingRegressor 0.855 $53,900 $5,950,000,000 $77,100
RandomForestRegressor 0.845 $55,200 $6,370,000,000 $79,800
XGBRegressor 0.848 $54,900 $6,250,000,000 $79,000

Summary

In this study, a house price prediction model was developed for King County, WA. Prior to model building, missing values were dealt with, datatype transformation was carried out, categorical features were encoded, outliers identified and removed from the data. Finally, multicollinearity checks ensured highly correlated features did not remain in the model.

The base model performed decently, explaining 78.4% of the variations in price using 15 features, attaining a high degree of explainability in predicting King County house prices. It did not violate the statistical assumptions under which it was developed and overall, the model predictions were off cumulatively by $68,200. However, the HistGradientBoostingRegressor was chosen as it yielded the lowest Mean Absolute Error and the highest R-squared value (0.855) among all models experimented with.

Factors such as the house's location (zipcode the house was built in), house's grade, house's age, number of bathrooms in the house, the longitude and latitude (location effect) were major determinants of house prices in King County.

The house price prediction model developed could prove useful to real estate stakeholders in King County, WA, offering them precise and actionable insights when evaluating house listings for purchase or sale. The model could also find usefulness for legislators while estimating house values more accurately while levying property taxes.

With further refinement and addition of new features, this model has the potential to greatly assist in investment decisions, market analysis, and strategic planning in the King County real estate sector.

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This repository contains the price prediction model for King County, Washington. The model results of this analysis would prove invaluable to stakeholders in the King County, WA housing market.

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