The effectiveness of factorization and similarity blending

09/16/2022
by   Andrea Pinto, et al.
0

Collaborative Filtering (CF) is a widely used technique which allows to leverage past users' preferences data to identify behavioural patterns and exploit them to predict custom recommendations. In this work, we illustrate our review of different CF techniques in the context of the Computational Intelligence Lab (CIL) CF project at ETH Zürich. After evaluating the performances of the individual models, we show that blending factorization-based and similarity-based approaches can lead to a significant error decrease (-9.4 propose a novel stochastic extension of a similarity model, SCSR, which consistently reduce the asymptotic complexity of the original algorithm.

READ FULL TEXT
research
06/05/2017

SimDex: Exploiting Model Similarity in Exact Matrix Factorization Recommendations

We present SimDex, a new technique for serving exact top-K recommendatio...
research
12/03/2021

Given Users Recommendations Based on Reviews on Yelp

In our project, we focus on NLP-based hybrid recommendation systems. Our...
research
08/13/2019

CUPCF: Combining Users Preferences in Collaborative Filtering for Better Recommendation

How to make the best decision between the opinions and tastes of your fr...
research
10/16/2012

Response Aware Model-Based Collaborative Filtering

Previous work on recommender systems mainly focus on fitting the ratings...
research
03/30/2020

Empirical Comparison of Graph Embeddings for Trust-Based Collaborative Filtering

In this work, we study the utility of graph embeddings to generate laten...
research
12/19/2018

Factorization Machines for Data with Implicit Feedback

In this work, we propose FM-Pair, an adaptation of Factorization Machine...
research
09/17/2020

Password similarity using probabilistic data structures

Passwords should be easy to remember, yet expiration policies mandate th...

Please sign up or login with your details

Forgot password? Click here to reset