Houseprices - Predict sales prices and practice feature engineering, RFs, and gradient boosting

Overview

House Prices - Advanced Regression Techniques

Predicting House Prices with Machine Learning

This project is build to enhance my knowledge about machine learning and data science project pipeline. If you’re getting into machine learning and want to see a project end to end, please stick around.I will walk you through the steps I’ve taken and attempt to deliver a crash course in machine learning at the same time.

Objective & Data

The competition goal is to predict sale prices for homes in Ames, Iowa. You’re given a training and testing data set in csv format as well as a data dictionary.

Training: Our training data consists of 1,460 examples of houses with 79 features describing every aspect of the house. We are given sale prices (labels) for each house. The training data is what we will use to “teach” our models. Testing: The test data set consists of 1,459 examples with the same number of features as the training data. Our test data set excludes the sale price because this is what we are trying to predict. Once our models have been built we will run the best one the test data and submit it to the Kaggle leaderboard.

Task: Machine learning tasks are usually split into three categories; supervised, unsupervised and reinforcement. For this competition, our task is supervised learning.

Tools

I used Python and Jupyter notebooks for the competition. Jupyter notebooks are popular among data scientist because they are easy to follow and show your working steps.

Libraries: These are frameworks in python to handle commonly required tasks. I Implore any budding data scientists to familiarise themselves with these libraries: Pandas — For handling structured data Scikit Learn — For machine learning NumPy — For linear algebra and mathematics Seaborn — For data visualization

Data Cleaning

Kaggle does its best to provide users with clean data. However, we mustn’t become lazy, there are always surprises in the data. Warning! Don’t skip the data cleaning phase, it’s boring but it will save you hours of headache later on.

Duplicates & NaNs: I started by removing duplicates from the data, checked for missing or NaN (not a number) values. It’s important to check for NaNs (and not just because it’s socially moral) because these cause errors in the machine learning models.

Categorical Features: There are a lot of categorical variables that are marked as N/A when a feature of the house is nonexistent. For example, when no alley is present. I identified all the cases where this was happening across the training and test data and replaced the N/As with something more descriptive. N/As can cause errors with machine learning later down the line so get rid of them.

Date Features: For this exercise dates would be better used as categories and not integers. After all, it’s not so much the magnitude that we care about but rather that the dates represent different years. Solving this problem is simple, just convert the numeric dates to strings. Decoded Variables: Some categorical variables had been number encoded. See the example below. Data cleaning image1

The problem here is that the machine learning algorithm could interpret the magnitude of the number to be important rather than just interpreting it as different categories of a feature. To solve the problem, I reverse engineered the categories and recoded them.

Exploratory Data Analysis (EDA)

This is where our data visualisation journey often begins. The purpose of EDA in machine learning is to explore the quality of our data. A question to keep in mind is; are there any strange patterns that leave us scratching our heads? Labels: I plotted sales price on a histogram. The distribution of sale prices is right skewed, something that is expected. In your neighborhood it might not be unusual to see a few houses that are relatively expensive. Here I perform my first bit of feature engineering (told you the process was messy). I’ll apply a log transform to sales price to compress outliers making the distribution normal. Outliers can have devastating effects on models that use loss functions minimising squared error. Instead of removing outliers try applying a transformation. EDA1

Correlations: It’s often good to plot a correlation matrix to give you an idea of relationships that exist in your data. It can also guide your model building. For example, if you see a lot of your features are correlated with each other you might want to avoid linear regression. Correlation1 The correlation measure used here is Pearson’s correlation. In our case the lighter the square the stronger the correlation between two variables. Features related to space such as lot frontage, garage area, ground living area were all positively correlated with sale price as one might expect. The logic being that larger properties should be more expensive. No correlations look suspicious here.

Categorical Relations: Sales price appears to be approximately normally distributed within each level of each category. No observations appear, untoward. Some categories contain little to no data, whilst other show little to no distinguishing ability between sales class. See full project on GitHub for data visualisation.

Feature Engineering

Machine learning models can’t understand categorical data. Therefore we will need to apply transformations to convert the categories into numbers. The best practice for doing this is via one hot encoding. OneHotEncoder solves this problem with the options that can be set for categories and handling unknowns. It’s slightly harder to use but definitely necessary for machine learning.

Machine learning

I follow a standard development cycle for machine learning. As a beginner or even a pro, you’ll likely have to go through many iterations of the cycle before you are able to get your models working to a high standard. As you gain more experience the number of iterations will reduce (I promise!).

ML SDLC

Model Selection

As mentioned at the start of the article the task is supervised machine learning. We know it’s a regression task because we are being asked to predict a numerical outcome (sale price). Therefore, I approached this problem with three machine learning models. Decision tree, random forest and gradient boosting machines. I used the decision tree as my baseline model then built on this experience to tune my candidate models. This approach saves a lot of time as decision trees are quick to train and can give you an idea of how to tune the hyperparameters for my candidate models.

Training

In machine learning training refers to the process of teaching your model using examples from your training data set. In the training stage, you’ll tune your model hyperparameters.

Hyperparameters: Hyperparameters help us adjust the complexity of our model. There are some best practices on what hyperparameters one should tune for each of the models. I’ll first detail the hyperparameters, then I’ll tell you which I’ve chosen to tune for each model. max_depth — The maximum number of nodes for a given decision tree. max_features — The size of the subset of features to consider for splitting at a node. n_estimators — The number of trees used for boosting or aggregation. This hyperparameter only applies to the random forest and gradient boosting machines. learning_rate — The learning rate acts to reduce the contribution of each tree. This only applies for gradient boosting machines.

Decision Tree — Hyperparameters tuned are the max_depth and the max_features Random Forest — The most important hyperparameters to tune are n_estimators and max_features [1]. Gradient boosting machines — The most important hyperparameters to tune are n_estimators, max_depth and learning_rate [1].

Grid search: Choosing the range of your hyperparameters is an iterative process. With more experience you’ll begin to get a feel for what ranges to set. The good news is once you’ve chosen your possible hyperparameter ranges, grid search allows you to test the model at every combination of those ranges. I’ll talk more about this in the next section. Cross validation: Models are trained with a 5-fold cross validation. A technique that takes the entirety of your training data, randomly splits it into train and validation data sets over 5 iterations. You end up with 5 different training and validation data sets to build and test your models. It’s a good way to counter overfitting.

Implementation

SciKit Learn helps us bring together hyperparameter tuning and cross validation with ease in using GridSearchCv. It gives you options to view the results of each of your training runs.

Evaluation

This is the last step in the process. Here’s where we either jump with joy or pull our hair with frustration (just kidding, we don’t do that…ever). We can use data visualisation to see the results of each of our candidate models. If we are not happy with our results, we might have to revisit our process at any of the stages from data cleaning to machine learning. Our performance metric will be the negative root mean squared error (NRMSE). I’ve used this because it’s the closest I can get to Kaggle’s scoring metric in SciKit Learn.

a) Decision tree: Predictably this was our worst performing method. Our best decision tree score -0.205 NRMSE. Tuning the hyperparameters didn’t appear to make much of a difference to the model’s however it trained in under 2 seconds. There is definitely some scope to assess a wider range of hyperparameters. DT Result

b) Random Forest: Our random forest model was a marked improvement on our decision tree with a NRMSE of -0.144. The model took around 75 seconds to train. RF Result

c) Gradient Boosting Machine: This was our best performer by a significant amount with a NRMSE of -0.126. The hyperparameters significantly impact the results illustrating that we must be incredibly careful in how we tune these more complex models. The model took around 196 seconds to train. GB Result

Competition Result

I tested the best performing model on the Kaggle test data. My model put me in the top 39% of entrants (at the time of writing). This isn’t a bad result, but it can definitely be improved.

BigDL: Distributed Deep Learning Framework for Apache Spark

BigDL: Distributed Deep Learning on Apache Spark What is BigDL? BigDL is a distributed deep learning library for Apache Spark; with BigDL, users can w

4.1k Jan 09, 2023
A logistic regression model for health insurance purchasing prediction

Logistic_Regression_Model A logistic regression model for health insurance purchasing prediction This code is using these packages, so please make sur

ShawnWang 1 Nov 29, 2021
Machine Learning University: Accelerated Natural Language Processing Class

Machine Learning University: Accelerated Natural Language Processing Class This repository contains slides, notebooks and datasets for the Machine Lea

AWS Samples 2k Jan 01, 2023
Python 3.6+ toolbox for submitting jobs to Slurm

Submit it! What is submitit? Submitit is a lightweight tool for submitting Python functions for computation within a Slurm cluster. It basically wraps

Facebook Incubator 768 Jan 03, 2023
High performance, easy-to-use, and scalable machine learning (ML) package, including linear model (LR), factorization machines (FM), and field-aware factorization machines (FFM) for Python and CLI interface.

What is xLearn? xLearn is a high performance, easy-to-use, and scalable machine learning package that contains linear model (LR), factorization machin

Chao Ma 3k Jan 08, 2023
Tutorials, examples, collections, and everything else that falls into the categories: pattern classification, machine learning, and data mining

**Tutorials, examples, collections, and everything else that falls into the categories: pattern classification, machine learning, and data mining.** S

Sebastian Raschka 4k Dec 30, 2022
Kaggle Tweet Sentiment Extraction Competition: 1st place solution (Dark of the Moon team)

Kaggle Tweet Sentiment Extraction Competition: 1st place solution (Dark of the Moon team)

Artsem Zhyvalkouski 64 Nov 30, 2022
A comprehensive set of fairness metrics for datasets and machine learning models, explanations for these metrics, and algorithms to mitigate bias in datasets and models.

AI Fairness 360 (AIF360) The AI Fairness 360 toolkit is an extensible open-source library containg techniques developed by the research community to h

1.9k Jan 06, 2023
An AutoML survey focusing on practical systems.

This project is a community effort in constructing and maintaining an up-to-date beginner-friendly introduction to AutoML, focusing on practical systems. AutoML is a big field, and continues to grow

AutoGOAL 16 Aug 14, 2022
Scikit-Learn useful pre-defined Pipelines Hub

Scikit-Pipes Scikit-Learn useful pre-defined Pipelines Hub Usage: Install scikit-pipes It's advised to install sklearn-genetic using a virtual env, in

Rodrigo Arenas 1 Apr 26, 2022
Real-time stream processing for python

Streamz Streamz helps you build pipelines to manage continuous streams of data. It is simple to use in simple cases, but also supports complex pipelin

Python Streamz 1.1k Dec 28, 2022
Merlion: A Machine Learning Framework for Time Series Intelligence

Merlion is a Python library for time series intelligence. It provides an end-to-end machine learning framework that includes loading and transforming data, building and training models, post-processi

Salesforce 2.8k Jan 05, 2023
Software Engineer Salary Prediction

Based on 2021 stack overflow data, this machine learning web application helps one predict the salary based on years of experience, level of education and the country they work in.

Jhanvi Mimani 1 Jan 08, 2022
Deploy AutoML as a service using Flask

AutoML Service Deploy automated machine learning (AutoML) as a service using Flask, for both pipeline training and pipeline serving. The framework imp

Chris Rawles 221 Nov 04, 2022
MLR - Machine Learning Research

Machine Learning Research 1. Project Topic 1.1. Exsiting research Benmark: https://paperswithcode.com/sota ACL anthology for NLP papers: http://www.ac

Charles 69 Oct 20, 2022
Multiple Linear Regression using the LinearRegression class from sklearn.linear_model library

Multiple-Linear-Regression-master - A python program to implement Multiple Linear Regression using the LinearRegression class from sklearn.linear model library

Kushal Shingote 1 Feb 06, 2022
A concept I came up which ditches the idea of "layers" in a neural network.

Dynet A concept I came up which ditches the idea of "layers" in a neural network. Install Copy Dynet.py to your project. Run the example Install matpl

Anik Patel 4 Dec 05, 2021
End to End toy example of MLOps

churn_model MLOps Toy Example End to End You might find below links useful Connect VSCode to Git MLFlow Port Heroku App Project Organization ├── LICEN

Ashish Tele 6 Feb 06, 2022
ThunderSVM: A Fast SVM Library on GPUs and CPUs

What's new We have recently released ThunderGBM, a fast GBDT and Random Forest library on GPUs. add scikit-learn interface, see here Overview The miss

Xtra Computing Group 1.4k Dec 22, 2022
A Python implementation of GRAIL, a generic framework to learn compact time series representations.

GRAIL A Python implementation of GRAIL, a generic framework to learn compact time series representations. Requirements Python 3.6+ numpy scipy tslearn

3 Nov 24, 2021