DEV Community

Moontasir Mahmood
Moontasir Mahmood

Posted on

How to Create a Movie Recommendation Systems Using Apache AGE Graph Databases

What is a Graph Database?

A graph database is a type of database that represents data as a graph, consisting of nodes and edges. Nodes represent entities, such as people, places, or things, and edges represent relationships between nodes. Graph databases are particularly useful for managing complex, interconnected data, such as social networks, recommendation systems, and knowledge graphs.

How to Create Recommendation Systems Using Graph Databases

Creating a recommendation system using a graph database involves the following steps:

  • Define the entities and relationships that you want to represent in your graph
  • Import or create data for these entities and relationships
  • Define queries that generate recommendations based on the graph data

Step 1: Define the Entities and Relationships

The first step in creating a recommendation system using a graph database is to define the entities and relationships that you want to represent in your graph. For example, in a movie recommendation system, you might define the following entities:

  • User
  • Movie
  • Actor
  • Director
  • Genre

You would also define the relationships between these entities, such as:

  • A user has watched a movie
  • A movie belongs to one or more genres
  • An actor has acted in one or more movies
  • A director has directed one or more movies

You would also need to define the properties that each entity has, such as a movie's title, a user's name, or an actor's ID.

Step 2: Import or Create Data

The next step is to import or create data for the entities and relationships that you have defined. This could involve importing data from an external source, such as a CSV file or a web API, or creating the data manually using Cypher queries.

For example, here's how you could create some nodes and edges for a movie recommendation system using Apache AGE:

Creating Nodes

SELECT * from cypher('graph_name', $$
CREATE 
(:User {id: 'user1'}),
(:User {id: 'user2'}),
(:Movie {id: 'movie1', name: 'The Shawshank Redemption'}),
(:Movie {id: 'movie2', name: 'The Godfather'}),
(:Movie {id: 'movie3', name: 'The Dark Knight'}),
(:Movie {id: 'movie4', name: 'Army of Thieves'}),
(:Movie {id: 'movie5', name: 'Oceans Thirteen'}),
(:Movie {id: 'movie6', name: 'Heat'}),
(:Genre {name: 'Drama'}),
(:Genre {name: 'Crime'}),
(:Genre {name: 'Action'})
$$) as (V agtype);
Enter fullscreen mode Exit fullscreen mode

Creating Edges

SELECT * from cypher('graph_name', $$

MATCH 
(u1:User {id: 'user1'}), 
(u2:User {id: 'user2'}), 
(m1:Movie {id: 'movie1'}),
(m2:Movie {id: 'movie2'}),
(m3:Movie {id: 'movie3'}),
(m4:Movie {id: 'movie4'}),
(m5:Movie {id: 'movie5'}),
(m6:Movie {id: 'movie6'}),
(gD:Genre {name: 'Drama'}),
(gC:Genre {name: 'Crime'}),
(gA:Genre {name: 'Action'})

CREATE 
(u1)-[:WATCHED]->(m1),
(u1)-[:WATCHED]->(m2),
(u2)-[:WATCHED]->(m1),
(m1)-[:BELONGS_TO]->(gD),
(m2)-[:BELONGS_TO]->(gC),
(m3)-[:BELONGS_TO]->(gA),
(m4)-[:BELONGS_TO]->(gD),
(m5)-[:BELONGS_TO]->(gC),
(m6)-[:BELONGS_TO]->(gA)

$$) as (V agtype);
Enter fullscreen mode Exit fullscreen mode

This code creates nodes for two users and three movies, and three genre nodes. It then creates watched edges between users and movies and belongs to edges between movies and genres.

Step 3: Define queries that generate recommendations based on the graph data

Once we have created the nodes and edges, we can use queries to generate recommendations. In our example, we will use collaborative filtering to recommend movies to a user based on the movies they have watched and the ratings they have given. Collaborative filtering is a commonly used technique for generating recommendations in recommendation systems.

Here's an example of how to define a query for generating recommendations using collaborative filtering:

SELECT * from cypher('graph_name', $$
MATCH (u:User {id: 'user1'})-[:WATCHED]->(m:Movie)-[:BELONGS_TO]->(g:Genre)<-[:BELONGS_TO]-(rec:Movie)
RETURN rec
LIMIT 10
$$) as (V agtype);
Enter fullscreen mode Exit fullscreen mode

This query first matches the user we want to generate recommendations for and the movies they have watched. It then matches other movies that belong to the same genres as the movies the user has watched. Finally, it counts the number of genre matches and returns the top 10 movies that have the most genre matches.

What more can you do

To generate movie recommendations based on graph data in a graph database, you can use various types of queries that leverage the relationships and properties within the graph. Here are some example queries for a movie recommendation system:

Content-Based Filtering:

Retrieve movies similar to a given movie based on shared attributes such as genre, director, or actors.
Find movies that have been positively rated by users who have similar preferences as a given user.

Hybrid Filtering:

Combine collaborative and content-based filtering techniques to generate personalized recommendations.
Weight the recommendations based on the user's past ratings and similarity to other users or movies.

Community Detection:

Identify communities or clusters of users who have similar movie preferences.
Recommend movies that are popular within those communities but not yet watched by a given user.

Graph-Based Recommendation:

Use graph algorithms like PageRank or Personalized PageRank to identify influential movies or users.
Recommend movies that are highly rated or frequently watched by influential users.

Similarity-Based Recommendation:

Compute similarity scores between movies based on shared attributes or user ratings.
Recommend movies that are most similar to the movies the user has already rated positively.

Trending and Popular Recommendations:

Retrieve movies that are currently trending or highly popular among users.
Recommend movies that have received positive feedback or high ratings from a large number of users.

Contextual Recommendations:

Consider additional contextual information such as user demographics, location, or time of day.
Tailor recommendations based on the user's preferences within specific contexts.

Serendipity Recommendations:

Introduce a degree of randomness or surprise in recommendations to expose users to new movies or genres.
Recommend movies that are not directly related to the user's preferences but have positive ratings from similar users.

Diversity-Enhanced Recommendations:

Promote diversity in recommendations by considering a variety of genres, directors, or actors.
Avoid recommending similar movies consecutively and strive for a balanced selection.

These are just a few examples of the types of queries you can perform in a movie recommendation system using graph data. The specific queries and algorithms used may vary depending on the structure and properties of your graph database and the goals of your recommendation system.

Top comments (0)