Book Image

Geospatial Data Science Quick Start Guide

By : Abdishakur Hassan, Jayakrishnan Vijayaraghavan
Book Image

Geospatial Data Science Quick Start Guide

By: Abdishakur Hassan, Jayakrishnan Vijayaraghavan

Overview of this book

Data scientists, who have access to vast data streams, are a bit myopic when it comes to intrinsic and extrinsic location-based data and are missing out on the intelligence it can provide to their models. This book demonstrates effective techniques for using the power of data science and geospatial intelligence to build effective, intelligent data models that make use of location-based data to give useful predictions and analyses. This book begins with a quick overview of the fundamentals of location-based data and how techniques such as Exploratory Data Analysis can be applied to it. We then delve into spatial operations such as computing distances, areas, extents, centroids, buffer polygons, intersecting geometries, geocoding, and more, which adds additional context to location data. Moving ahead, you will learn how to quickly build and deploy a geo-fencing system using Python. Lastly, you will learn how to leverage geospatial analysis techniques in popular recommendation systems such as collaborative filtering and location-based recommendations, and more. By the end of the book, you will be a rockstar when it comes to performing geospatial analysis with ease.
Table of Contents (9 chapters)

Recommender systems

Recommender systems are one of the most commonly used practical systems in data science. In this section, we will focus on collaborative filtering, where the focus is on similarities between users. Depending on the past preference of users, this type of recommender system recommends items that users have liked or rated highly in the past. For this task, we will use Surprise, a Python scikit-learn library for building and analyzing recommender systems.

We first need to read the merged df into Surprise, set the rating scale of the dataset, and load data from df into Surprise data:

# Set rating scale of the dataset
reader = Reader(rating_scale=(0, 2))

# Load the dataframe with ratings.
data = Dataset.load_from_df(df[['userID', 'placeID', 'rating']], reader)

Now, we are set and can use the Surprise library functionalities. First, we will...