SAP PaPM ( Profitability and Performance Management) – Recommendation Rule in Machine Learning Function

Introduction

Recommendation in machine learning is a technique used to predict and suggest relevant items, products, or content to users based on their preferences, historical behavior, and similarities with other users. It is widely used in various applications, such as personalized product recommendations on e-commerce websites, movie recommendations on streaming platforms, and content suggestions on social media platforms. Recommendation systems play a crucial role in enhancing user experiences, driving engagement, and increasing business revenue. Example When browsing a music streaming platform, the recommendation system suggests new songs and artists based on your listening history and preferences, introducing you to music that aligns with your taste. Now, we will see how SAP PaPM provides solutions to businesses with an example.

Model table has been created with two fields: User ID, which contains user details, and Movie Name

SAP PaPM

In the Environment fields, master data is maintained for User ID and Movie Name.

User ID Master Data

SAP PaPM

Movie Name Master Data

SAP PaPM

The data mentioned below has been uploaded into the Model table, which contains information about which users watched which movies.

SAP PaPM

For better understanding, let me explain the uploaded data. It contains information about which users watched which movies.

SAP PaPM    SAP PaPM

SAP PaPM    SAP PaPM

SAP PaPM

Hope above mentioned capture will be clear how the data is uploaded. Now we will see how to handle this in SAP PaPM.

Create the fields as per below mentioned capture. Theas fields will be used in output fields in the machine learning function. 

SAP PaPM

Create the Machine learning function and assign the input function (Model Table)

SAP PaPM

Assign the fields which is created in the environment.

Create the rule with rule type ‘Recommendation’

SAP PaPM

Now assign the fields.

Input Fields

User ID: User ID created which is created in the model table

Item Fields: Movie Name which is created in the model table

Minimum Support:  Default value is 2 as per SAP document. For more information refer help.SAP.com

Minimum Confidence: The default value is 0.5.as per SAP document. For more information refer help.SAP.com

 

Output Fields – Assign the fields from the signature tab.

SAP PaPM

Activate and Run. Now the system recommending some movies for some user based on the similar movie watched.

Now, let’s delve into an explanation of how the system generates recommendations. User 1001 has watched 6 movies according to the data uploaded in the model table. This user has only watched movies with higher numbers compared to other users. However, the system is not recommending any movies.

User 1002 has watched 5 movies. When compared with other users, only ‘1001’ has watched movie M6. As a result, the system does not make recommendations due to the utilization of a minimum support of 2, along with a confidence level of 50%.

User 1003 has watched 4 movies. When compared with Users 1001 and 1002, movie M5 is a common movie that has not been watched by User 1003. As a result, the system is recommending the movie M5 with a score of ‘0.66’.

User 1004 has watched 3 movies as per the data uploaded in the model table. When compared with Users 1001, 1002, and 1003, movies M4 and M5 are common movies that User 1004 has not watched. As a result, the system is recommending movies M4 and M5 with scores.

Same rule as per User 1004.

In conclusion, SAP PaPM machine learning capabilities offer tailored recommendations, optimizing user engagement and driving business success

 

Thank you for reading! Please feel free to leave any comments or feedback. SAP PaPM

Similarly, to explore more of our blogs click here.

Moreover, you can check our video blog also – Trijotech

Disclaimer: All the opinions are solely for information purposes and the author doesn’t recommend or reject any tools. It should be done after your own due diligence.

SHARE:

Recent Posts

SAP Analytics Cloud Benefits and Future Trends for Modern Enterprises (8)
SAP Analytics Cloud for Annual Budgeting in Oil & Gas Industry
Management Consolidation (12)
Key Preparations Before Starting Your Legal & Management Consolidation Projects
Untitled design - 9
Starting a Data Analytics Project for Your Company? Here’s What You Need to Know
representation-user-experience-interface-design-computer
Unveiling the Secrets: Navigating Data Analytics Challenges in a Global FMCG Company's Transformation
SAP BTP
SAP BTP (Business Technology Platform) - Overview
sap btp2
SAP BTP: Unleashing the Power of Innovation for Pragmatic Business Growth
SAP BTP
Integration strategies with SAP BTP
xr:d:DAGBbzlOlm0:6,j:3750796379549910785,t:24040407
Leverage SAP BTP Cloud: Transition your Data Migration/ Integration Solutions from SAP PI/PO to SAP CPI
SAP BTP
How to maximize the business potential with SAP BTP
sap sac-Data Connection and Data Sources
SAP SAC: Unlocking the Power of Data Connection and Data Sources

All rights reserved © 2024 Trijotech Software Consulting Pvt. Ltd

Scroll to Top