graphaware / reco4php
Neo4j based Recommendation Engine Framework for PHP
Installs: 213 281
Dependents: 0
Suggesters: 0
Security: 0
Stars: 130
Watchers: 31
Forks: 22
Open Issues: 3
Requires
- php: ^7.0
- graphaware/neo4j-php-client: ^4.0
- psr/log: ^1.0
- symfony/event-dispatcher: ^2.7 || ^3.0
- symfony/stopwatch: ^2.7 || ^3.0
Requires (Dev)
- phpunit/phpunit: ^5.1
This package is not auto-updated.
Last update: 2024-11-20 14:34:30 UTC
README
Neo4j based Recommendation Engine Framework for PHP
GraphAware Reco4PHP is a library for building complex recommendation engines atop Neo4j.
Features:
- Clean and flexible design
- Built-in algorithms and functions
- Ability to measure recommendation quality
- Built-in Cypher transaction management
Requirements:
- PHP7.0+
- Neo4j 2.2.6+ (Neo4j 3.0+ recommended)
The library imposes a specific recommendation engine architecture, which has emerged from our experience building recommendation engines and solves the architectural challenge to run recommendation engines remotely via Cypher. In return it handles all the plumbing so that you only write the recommendation business logic specific to your use case.
Recommendation Engine Architecture
Discovery Engines and Recommendations
The purpose of a recommendation engine is to recommend
something, should be users you should follow, products you should buy,
articles you should read.
The first part in the recommendation process is to find items to recommend, it is called the discovery
process.
In Reco4PHP, a DiscoveryEngine
is responsible for discovering items to recommend in one possible way.
Generally, recommender systems will contains multiple discovery engines, if you would write the who you should follow on github
recommendation engine,
you might end up with the non-exhaustive list of Discovery Engines
:
- Find people that contributed on the same repositories than me
- Find people that
FOLLOWS
the same people I follow - Find people that
WATCH
the same repositories I'm watching - ...
Each Discovery Engine
will produce a set of Recommendations
which contains the discovered Item
as well as the score for this item (more below).
Filters and BlackLists
The purpose of Filters
is to compare the original input
to the discovered
item and decide whether or not this item should be recommended to the user.
A very straightforward filter could be ExcludeSelf
which would exclude the item if it is the same node as the input, which can relatively happen in a densely connected graph.
BlackLists
on the other hand are a set of predefined nodes that should not be recommended to the user. An example could be to create a BlackList
with the already purchased items
by the user if you would recommend him products he should buy.
PostProcessors
PostProcessors
are providing the ability to post process the recommendation after it has passed the filters and blacklisting process.
For example, if you would reward a recommended person if he/she lives in the same city than you, it wouldn't make sense to load all people from the database that live in this city in the discovery phase (this could be millions if you take London as an example).
You would then create a RewardSameCity
post processor that would adapt the score of the produced recommendation if the input node and the recommended item are living in the same city.
Summary
To summarize, a typical recommendation engine will be a set of :
- one or more
Discovery Engines
- zero or more
Fitlers
andBlackLists
- zero or more
PostProcessors
Let's start it !
Usage by example
We will use the small dataset available from MovieLens containing movies, users and ratings as well as genres.
The dataset is publicly available here : http://grouplens.org/datasets/movielens/. The data set to download is in the MovieLens Latest Datasets section and is named ml-latest-small.zip
.
Once downloaded and extracted the archive, you can run the following Cypher statements for importing the dataset, just adapt the file urls to match your actual path to the files :
CREATE CONSTRAINT ON (m:Movie) ASSERT m.id IS UNIQUE;
CREATE CONSTRAINT ON (g:Genre) ASSERT g.name IS UNIQUE;
CREATE CONSTRAINT ON (u:User) ASSERT u.id IS UNIQUE;
LOAD CSV WITH HEADERS FROM "file:///Users/ikwattro/dev/movielens/movies.csv" AS row
WITH row
MERGE (movie:Movie {id: toInt(row.movieId)})
ON CREATE SET movie.title = row.title
WITH movie, row
UNWIND split(row.genres, '|') as genre
MERGE (g:Genre {name: genre})
MERGE (movie)-[:HAS_GENRE]->(g)
USING PERIODIC COMMIT 500
LOAD CSV WITH HEADERS FROM "file:///Users/ikwattro/dev/movielens/ratings.csv" AS row
WITH row
MATCH (movie:Movie {id: toInt(row.movieId)})
MERGE (user:User {id: toInt(row.userId)})
MERGE (user)-[r:RATED]->(movie)
ON CREATE SET r.rating = toInt(row.rating), r.timestamp = toInt(row.timestamp)
For the purpose of the example, we will assume we are recommending movies for the User with ID 460.
Installation
Require the dependency with composer
:
composer require graphaware/reco4php
Usage
Discovery
In order to recommend movies people should watch, you have decided that we should find potential recommendations in the following way :
- Find movies rated by people who rated the same movies than me, but that I didn't rated yet
As told before, the reco4php
recommendation engine framework makes all the plumbing so you only have to concentrate on the business logic, that's why it provides base class that you should extend and just implement
the methods of the upper interfaces, here is how you would create your first discovery engine :
<?php namespace GraphAware\Reco4PHP\Tests\Example\Discovery; use GraphAware\Common\Cypher\Statement; use GraphAware\Common\Type\Node; use GraphAware\Reco4PHP\Context\Context; use GraphAware\Reco4PHP\Engine\SingleDiscoveryEngine; class RatedByOthers extends SingleDiscoveryEngine { public function discoveryQuery(Node $input, Context $context) { $query = 'MATCH (input:User) WHERE id(input) = {id} MATCH (input)-[:RATED]->(m)<-[:RATED]-(o) WITH distinct o MATCH (o)-[:RATED]->(reco) RETURN distinct reco LIMIT 500'; return Statement::create($query, ['id' => $input->identity()]); } public function name() { return "rated_by_others"; } }
The discoveryMethod
method should return a Statement
object containing the query for finding recommendations,
the name
method should return a string describing the name of your engine (this is mostly for logging purposes).
The query here has some logic, we don't want to return as candidates all the movies found, as in the initial dataset it would be 10k+, so imagine what it would be on a 100M dataset. So we are summing the score of the ratings and returning the most rated ones, limit the results to 500 potential recommendations.
The base class assumes that the recommended node will have the identifier reco
and the score of the produced recommendation the identifier score
. The score is not mandatory, and it will be given a default score of 1
.
All these defaults are customizable by overriding the methods from the base class (see the Customization section).
This discovery engine will then produce a set of 500 scored Recommendation
objects that you can use in your filters or post processors.
Filtering
As an example of a filter, we will filter the movies that were produced before the year 1999. The year is written in the movie title, so we will use a regex for extracting the year in the filter.
<?php namespace GraphAware\Reco4PHP\Tests\Example\Filter; use GraphAware\Common\Type\Node; use GraphAware\Reco4PHP\Filter\Filter; class ExcludeOldMovies implements Filter { public function doInclude(Node $input, Node $item) { $title = $item->value("title"); preg_match('/(?:\()\d+(?:\))/', $title, $matches); if (isset($matches[0])) { $y = str_replace('(','',$matches[0]); $y = str_replace(')','', $y); $year = (int) $y; if ($year < 1999) { return false; } return true; } return false; } }
The Filter
interfaces forces you to implement the doInclude
method which should return a boolean. You have access to the recommended node as well as the input in the method arguments.
Blacklist
Of course we do not want to recommend movies that the current user has already rated, for this we will create a Blacklist building a set of these already rated movie nodes.
<?php namespace GraphAware\Reco4PHP\Tests\Example\Filter; use GraphAware\Common\Cypher\Statement; use GraphAware\Common\Type\Node; use GraphAware\Reco4PHP\Filter\BaseBlacklistBuilder; class AlreadyRatedBlackList extends BaseBlacklistBuilder { public function blacklistQuery(Node $input) { $query = 'MATCH (input) WHERE id(input) = {inputId} MATCH (input)-[:RATED]->(movie) RETURN movie as item'; return Statement::create($query, ['inputId' => $input->identity()]); } public function name() { return 'already_rated'; } }
You really just need to add the logic for matching the nodes that should be blacklisted, the framework takes care for filtering the recommended nodes against the blacklists provided.
Post Processors
Post Processors
are meant to add additional scoring to the recommended items. In our example, we could reward a produced recommendation if it has more than 10 ratings :
<?php namespace GraphAware\Reco4PHP\Tests\Example\PostProcessing; use GraphAware\Common\Cypher\Statement; use GraphAware\Common\Result\Record; use GraphAware\Common\Type\Node; use GraphAware\Reco4PHP\Post\RecommendationSetPostProcessor; use GraphAware\Reco4PHP\Result\Recommendation; use GraphAware\Reco4PHP\Result\Recommendations; use GraphAware\Reco4PHP\Result\SingleScore; class RewardWellRated extends RecommendationSetPostProcessor { public function buildQuery(Node $input, Recommendations $recommendations) { $query = 'UNWIND {ids} as id MATCH (n) WHERE id(n) = id MATCH (n)<-[r:RATED]-(u) RETURN id(n) as id, sum(r.rating) as score'; $ids = []; foreach ($recommendations->getItems() as $item) { $ids[] = $item->item()->identity(); } return Statement::create($query, ['ids' => $ids]); } public function postProcess(Node $input, Recommendation $recommendation, Record $record) { $recommendation->addScore($this->name(), new SingleScore($record->get('score'), 'total_ratings_relationships')); } public function name() { return "reward_well_rated"; } }
Wiring all together
Now that our components are created, we need to build effectively our recommendation engine :
<?php namespace GraphAware\Reco4PHP\Tests\Example; use GraphAware\Reco4PHP\Engine\BaseRecommendationEngine; use GraphAware\Reco4PHP\Tests\Example\Filter\AlreadyRatedBlackList; use GraphAware\Reco4PHP\Tests\Example\Filter\ExcludeOldMovies; use GraphAware\Reco4PHP\Tests\Example\PostProcessing\RewardWellRated; use GraphAware\Reco4PHP\Tests\Example\Discovery\RatedByOthers; class ExampleRecommendationEngine extends BaseRecommendationEngine { public function name() { return "example"; } public function discoveryEngines() { return array( new RatedByOthers() ); } public function blacklistBuilders() { return array( new AlreadyRatedBlackList() ); } public function postProcessors() { return array( new RewardWellRated() ); } public function filters() { return array( new ExcludeOldMovies() ); } }
As in your recommender service, you might have multiple recommendation engines serving different recommendations, the last step is to create this service and register each RecommendationEngine
you have created.
You'll need to provide also a connection to your Neo4j database, in your application this could look like this :
<?php namespace GraphAware\Reco4PHP\Tests\Example; use GraphAware\Reco4PHP\Context\SimpleContext; use GraphAware\Reco4PHP\RecommenderService; class ExampleRecommenderService { /** * @var \GraphAware\Reco4PHP\RecommenderService */ protected $service; /** * ExampleRecommenderService constructor. * @param string $databaseUri */ public function __construct($databaseUri) { $this->service = RecommenderService::create($databaseUri); $this->service->registerRecommendationEngine(new ExampleRecommendationEngine()); } /** * @param int $id * @return \GraphAware\Reco4PHP\Result\Recommendations */ public function recommendMovieForUserWithId($id) { $input = $this->service->findInputBy('User', 'id', $id); $recommendationEngine = $this->service->getRecommender("user_movie_reco"); return $recommendationEngine->recommend($input, new SimpleContext()); } }
Inspecting recommendations
The recommend()
method on a recommendation engine will returns you a Recommendations
object which contains a set of Recommendation
that holds the recommended item and their score.
Each score is inserted so you can easily inspect why such recommendation has been produced, example :
$recommender = new ExampleRecommendationService("http://localhost:7474"); $recommendation = $recommender->recommendMovieForUserWithId(460); print_r($recommendations->getItems(1)); Array ( [0] => GraphAware\Reco4PHP\Result\Recommendation Object ( [item:protected] => GraphAware\Bolt\Result\Type\Node Object ( [identity:protected] => 13248 [labels:protected] => Array ( [0] => Movie ) [properties:protected] => Array ( [id] => 2571 [title] => Matrix, The (1999) ) ) [scores:protected] => Array ( [rated_by_others] => GraphAware\Reco4PHP\Result\Score Object ( [score:protected] => 1067 [scores:protected] => Array ( [0] => GraphAware\Reco4PHP\Result\SingleScore Object ( [score:GraphAware\Reco4PHP\Result\SingleScore:private] => 1067 [reason:GraphAware\Reco4PHP\Result\SingleScore:private] => ) ) ) [reward_well_rated] => GraphAware\Reco4PHP\Result\Score Object ( [score:protected] => 261 [scores:protected] => Array ( [0] => GraphAware\Reco4PHP\Result\SingleScore Object ( [score:GraphAware\Reco4PHP\Result\SingleScore:private] => 261 [reason:GraphAware\Reco4PHP\Result\SingleScore:private] => ) ) ) ) [totalScore:protected] => 261 ) )
License
This library is released under the Apache v2 License, please read the attached LICENSE
file.
Commercial support or custom development/extension available upon request to info@graphaware.com.