aldeebhasan/laravelcf
Composer 安装命令:
composer require aldeebhasan/laravelcf
包简介
This package will allow you to make fast recommendation based on custom inputs
关键字:
README 文档
README
A php package allow you to find the est recommendation of your modules
Installation
Install using composer:
composer require aldeebhasan/laravelcf
The run :
php artisan migrate
Basic Usage
LarvelCF package allow you to recommend data based on many algorithms including (Cosine,Weighted Cosine, Centered Cosine, SlopeOne).
In general we have two kind of recommender included in this package:
- item-based recommender
- user-based recommender
Filling the data
The first step to build your recommendation system is to provide the dataset you want to work with.
In LarvelCF we have 4 type of data (PURCHASE, RATE, CART_ACTION, BOOKMARK). the purpose of these types is to enable you to handle different types of data at the same time.
You can use the following to enter your recommender data:
use \Aldeebhasan\LaravelCF\Facades\Recommender; Recommender::addRating ('user_1', 'product_1', 5); Recommender::addCartAddition('user_1', 'product_1', 2); // like the quantity Recommender::addPurchase ('user_1', 'product_1', 5); // like the quantity Recommender::addBookmark ('user_1', 'product_1', 5);
Instantiate the recommender
After entering your data, you can instantiate your desired recommender using our support facade:
use \Aldeebhasan\LaravelCF\Facades\Recommender; use \Aldeebhasan\LaravelCF\Enums\RelationType; /* you cann also use any of RelationType::PURCHASE,RelationType::CART_ACTION,RelationType::BOOKMARK*/ Recommender::getItemBasedRecommender(RelationType::RATE); // to recommend similar products //OR Recommender::getUserBasedRecommender(RelationType::RATE);// to recommend similar users
Get recommendations
Finally, to make your recommendations you will run the following code:
use \Aldeebhasan\LaravelCF\Facades\Recommender; use \Aldeebhasan\LaravelCF\Enums\RelationType; /* you cann also use any of RelationType::PURCHASE,RelationType::CART_ACTION,RelationType::BOOKMARK*/ Recommender::getItemBasedRecommender(RelationType::RATE) ->setSimilarityFunction(Cosine::class) ->train() ->recommendTo('user_1');
For the setSimilarityFunction, you can provide the similarity algorithm, the missing value default values, and weather you want to fill the missing
methods or discard them.
Available Similarity algorithm:
- Cosine::class (default for item-based)
- CosineCentered::class
- CosineWeighted::class
- Jaccard::class
- SlopeOne::class
- Pearson::class (default for user-based)
Available missing values replacement methods:
- MissingValue::ZERO (package default)
- MissingValue::MEAN
- MissingValue::MEDIAN
use \Aldeebhasan\LaravelCF\Facades\Recommender; use \Aldeebhasan\LaravelCF\Enums\RelationType; use \Aldeebhasan\LaravelCF\Enums\MissingValue; use \Aldeebhasan\LaravelCF\Similarity; Recommender::getItemBasedRecommender(RelationType::RATE) // use Weighted cosine algorithm and replace the missing values with zero ->setSimilarityFunction(CosineWeighted::class,MissingValue::ZERO,true) // use SlopeOne algorithm and replace the missing values with the mean ->setSimilarityFunction(SlopeOne::class,MissingValue::MEAN,true)
Full Example
use \Aldeebhasan\LaravelCF\Facades\Recommender; use \Aldeebhasan\LaravelCF\Enums\RelationType; use \Aldeebhasan\LaravelCF\Enums\MissingValue; use \Aldeebhasan\LaravelCF\Similarity; Recommender::addRating(1, 'squid', 1); Recommender::addRating(2, 'squid', 1); Recommender::addRating(3, 'squid', 0.2); Recommender::addRating(1, 'cuttlefish', 0.5); Recommender::addRating(3, 'cuttlefish', 0.4); Recommender::addRating(4, 'cuttlefish', 0.9); Recommender::addRating(1, 'octopus', 0.2); Recommender::addRating(2, 'octopus', 0.5); Recommender::addRating(3, 'octopus', 1); Recommender::addRating(4, 'octopus', 0.4); Recommender::addRating(1, 'nautilus', 0.2); Recommender::addRating(3, 'nautilus', 0.4); Recommender::addRating(4, 'nautilus', 0.5); $results = Recommender::getItemBasedRecommender(RelationType::RATE) ->setSimilarityFunction(CosineWeighted::class, MissingValue::MEAN) ->train() ->recommendTo('squid'); /** recommendation results sorted by similarity: [ "cuttlefish" => 0.89 "nautilus" => 0.75 "octopus" => 0.5 ] **/
License
Laravel Recommendation system package is licensed under The MIT License (MIT).
Security contact information
To report a security vulnerability, contact directly to the developer contact email Here.
aldeebhasan/laravelcf 适用场景与选型建议
aldeebhasan/laravelcf 是一款 基于 PHP 开发的 Composer 扩展包,目前已累计 11 次下载、GitHub Stars 达 3, 最近一次更新时间为 2023 年 06 月 10 日, 在 PHP 生态内属于活跃度较高的组件。
它主要适用于以下技术方向: 「laravel」 「statistics」 「recommendation」 「collaborative filtering」 「fast recommendation」 「product recommendations」 等业务场景。在实际项目中,围绕这些方向常见需要落地的问题包括:接口对接、性能调优、并发安全、与既有框架(Laravel / ThinkPHP / Yii / Webman 等)的兼容适配,以及生产环境的日志埋点与稳定性保障。
我们在过去多个企业项目中使用过 aldeebhasan/laravelcf 或与其功能相近的方案,如果你在选型或落地过程中遇到问题,例如 版本兼容、二次改造、私有化封装、与内部系统对接、生产 BUG 排查,欢迎联系我们协助评估。
基于 aldeebhasan/laravelcf 在你已有业务上做功能扩展、字段裁剪、UI 适配、与内部账号 / 权限 / 日志系统的深度对接。
线上偶发问题、内存泄漏、慢查询、并发异常等排查修复;针对高流量场景做缓存、队列、索引层面的调优。
承接完整的项目从需求 → 设计 → 开发 → 上线 → 长期运维;也可按月提供技术保姆服务。
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统计信息
- 总下载量: 11
- 月度下载量: 0
- 日度下载量: 0
- 收藏数: 3
- 点击次数: 18
- 依赖项目数: 0
- 推荐数: 0
其他信息
- 授权协议: MIT
- 更新时间: 2023-06-10