WebSphere Portal, Express Beta Version 6.1
Operating systems: i5/OS, Linux,Windows


 

How LikeMinds generates recommendations

When a user logs on and navigates through your Web site, LikeMinds follows these steps to generate recommendations for that user:

  1. Personalization Rating beans and action logging beans create a record for new users in the Lps_User_Data table. The Lps_User_Data table stores the following types of information about the user: the user's resource ID, a user ID, the number of items the user has rated or selected, and so on.
  2. The Personalization Rating beans and action logging beans log data for that user as that user navigates your Web site.

    The profile data is first stored in the server's cache, then the server writes all the new data to the database. The Lps_User_Rating table stores the user's explicit preferences; the Lps_User_Trx table stores the user's clickstream and purchase behavior. The Lps_User_Trx table also stores item affinity input data.

  3. The application can then query LikeMinds for recommendations. Recommendation queries are transaction data-specific.

  4. Depending on the engine you are using, the following step occurs next:

  5. Depending on the engine, the following step occurs next:

  6. Depending on the engine, the next step is as follows:

  7. When your application runs LikeMinds rules, the following occurs, depending on the engine:

Parent topic: An introduction to LikeMinds
Library | Support | Terms of use |