COMBINING MACHINE-LEARNING AND SOCIAL DATA TO GENERATE PERSONALIZED RECOMMENDATIONS
A computing device receives a message including a request for a recommendation. A representation of a hypothetical ideal recommendation to provide in response to the message is determined based on the message content. Data regarding entities that are potential recommendations are retrieved from a da...
Saved in:
Main Authors | , , , |
---|---|
Format | Patent |
Language | English French German |
Published |
10.03.2021
|
Subjects | |
Online Access | Get full text |
Cover
Loading…
Summary: | A computing device receives a message including a request for a recommendation. A representation of a hypothetical ideal recommendation to provide in response to the message is determined based on the message content. Data regarding entities that are potential recommendations are retrieved from a data store, the data regarding each entity including a representation of the entity (e.g., a vector) derived from factual information about the entity and opinions of other users of the entity. Ranking scores are determined for at least a subset of the entities based on the difference between the entity representations and the representation of the hypothetical ideal recommendation. An entity to recommend is selected based on the ranking scores and a reply to the message is sent that identifies the selected entity. |
---|---|
Bibliography: | Application Number: EP20180917571 |