SPAM、Bayesian跟中文 4 - 在CakePHP中集成贝叶斯算法

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Release: 2016-06-13 13:25:42
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SPAM、Bayesian和中文 4 - 在CakePHP中集成贝叶斯算法

上文提到了贝叶斯算法的几种开源实现,本文说说如何将其中一种名为b8的开源实现集成进CakePHP。

下载b8及安装

  1. b8的站点下载最新版本,将其解压至vendors目录,文件位置如vendors/b8/b8.php;
  2. 用文本编辑器打开vendors/b8/etc/config_b8,修改databaseType为mysql;
  3. 用文本编辑器打开vendors/b8/etc/config_storage,修改tableName为你用来存储关键字的数据表的名字,修改createDB为TRUE,要注意的是,当你第一次运行b8后,它会建立上述数据表,然后你要重新把createDB改为FALSE;
  4. 用文本编辑器打开vendors/b8/lexer/shared_functions.php,将38行的代码(在echoError())注释掉,否则b8会直接把错误信息显示在你的Cake应用中,当然这在调试程序时还是有用的。

为b8写一个wrapper component

为了让你的Cake能够调用到b8,你需要写一个component。在controllers/components/新建一个spam_shield.php,加入如下代码:

class SpamShieldComponent extends Object {

??? /** * b8 instance?*/

??? var $b8;

??? /** * standard rating * * comments with ratings which are higher than this one will be considered as SPAM?*/

??? var $standardRating = 0.7;

??? /** * text to be classified */

??? var $text;

??? /** * rating of the text */

??? var $rating;

??? /** * Constructor * * @date 2009-1-20 */

??? function startup(&$controller) {

??????? //register a CommentModel to get the DBO resource link

??????? $comment = ClassRegistry::init('Comment'); //import b8 and create an instance????

?????? ?App::import('Vendor', 'b8/b8');

?????? ?$this->b8 = new b8($comment->getDBOResourceLink()); //set standard rating???

?????? ?$this->standardRating = Configure::read('LT.bayesRating') ? Configure::read('LT.bayesRating') : $this->standardRating;

??? }

?

??? /** * Set the text to be classified * * @param $text String the text to be classified * @date 2009-1-20 */

??? function set($text) {

??????? $this->text = $text;

??? }

?

??? /** * Get Bayesian rating * * @date 2009-1-20 */

??? function rate() {

?????? ?//get Bayes rating and return return

?????? ?$this->rating = $this->b8->classify($this->text);

??? }

?

??? /** * Validate a message based on the rating, return true if it's NOT a SPAM * * @date 2009-1-20 */

??? function validate() {

??????? return $this->rate() standardRating;

??? }

?

??? /** * Learn a SPAM or a HAM * * @date 2009-1-20 */

??? function learn($mode) {

?????? ?$this->b8->learn($this->text, $mode);

??? }

?

??? /** * Unlearn a SPAM or a HAM * * @date 2009-1-20 */

??? function unlearn($mode) {

?????? ?$this->b8->unlearn($this->text, $mode);

??? }

}

几点说明:

  1. $standardRating是一个临界点。如果贝叶斯概率高于这个值,则此留言被认为是spam,否则是ham。我设置为0.7,你可以根据自己的情况修改;
  2. Configure::read('LT.bayesRating')是从系统运行配置中动态地获取上述临界点的值,这是我的做法,你可能用不到,根据情况稍微修改甚至不修改都行;
  3. Comment指的是评论的model;
  4. 由于b8需要获得数据库句柄以便能够操作数据表,所以在startup()中我写了$this->b8 = new b8($comment->getDBOResourceLink())一句,其中用到的getDBOResourceLink()马上会提及。

为b8传入数据库句柄

在models/comment.php中加入如下代码:

/** * get the resource link of MySQL connection */ public function getDBOResourceLink() { return $this->getDataSource()->connection; }

至此,准备工作全部做完,我们终于可以使用贝叶斯算法来分类留言。

使用b8分类留言

在controllers/comments_controller.php中,首先载入SpamShieldComponent:

var $components = array('SpamShield');

然后在add()方法中,做如下操作:

//set data for Bayesian validation

$this->SpamShield->set($this->data['Comment']['body']); //validate the comment with Bayesian

if(!$this->SpamShield->validate()) { //set the status

??? $this->data['Comment']['status'] = 'spam'; //save

??? $this->Comment->save($this->data); //learn it $this->SpamShield->learn("spam"); //render

??? $this->renderView('unmoderated');

??? return;

}

//it's a normal post

$this->data['Comment']['status'] = 'published'; //save for publish

$this->Comment->save($this->data); //learn it

$this->SpamShield->learn("ham");

如此一来,b8就会在留言到来时自动的分类并学习,你基本上已经与spam绝缘了!

提醒一下:第一次运行后,别忘了把刚才提到的createDB改为FALSE。

http://dingyu.me/blog/spam-bayesian-chinese-4

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