Difference between revisions of "Recommendation"

From
Jump to: navigation, search
m
Line 14: Line 14:
 
* [[Capabilities]]  
 
* [[Capabilities]]  
 
** [[Embedding]]: [[AI-Powered Search|Search]]  ... [[Clustering]] ... [[Recommendation]] ... [[Anomaly Detection]] ... [[Classification]] ... [[Dimensional Reduction]] ... [[...find outliers]]
 
** [[Embedding]]: [[AI-Powered Search|Search]]  ... [[Clustering]] ... [[Recommendation]] ... [[Anomaly Detection]] ... [[Classification]] ... [[Dimensional Reduction]] ... [[...find outliers]]
** [[Video]] ... [[Generated Image]] ... [[Colorize]] ... [[Image/Video Transfer Learning]]
+
** [[Video]] ... [[Generated Image]] ... [[Vision]] ... [[Colorize]] ... [[Image/Video Transfer Learning]]
 
** [[End-to-End Speech]] ... [[Synthesize Speech]] ... [[Speech Recognition]]  
 
** [[End-to-End Speech]] ... [[Synthesize Speech]] ... [[Speech Recognition]]  
 
* [[AI Solver]]
 
* [[AI Solver]]

Revision as of 08:53, 26 March 2023

YouTube ... Quora ...Google search ...Google News ...Bing News


Can items can be directly related to users?



  1. Content-based

systems examine attributes of the items recommended. For example, if a Netflix user has watched many cowboy movies, then recommend a movie classified in the datastore as having the “scifi” genre.

  1. Collaborative Filtering (CF)

systems recommend items based on similarity measures between users and/or items. The items recommended to a user are those preferred by similar users.



Recommender Systems

Grouping related items together without labeling them, e.g. grouping patient records with similar symptoms without knowing their symptoms

Google Cloud Platform (GCP)

Amazon Web Services (AWS)

Microsoft Azure

Azure Machine Learning Studio: Matchbox Recommender

Cortana Analytics: Building a recommendations model