Adaptive Collaborative Filtering with Personalized Time Decay Functions for Financial Product Recommendation

08/01/2023
by   Ashraf Ghiye, et al.
0

Classical recommender systems often assume that historical data are stationary and fail to account for the dynamic nature of user preferences, limiting their ability to provide reliable recommendations in time-sensitive settings. This assumption is particularly problematic in finance, where financial products exhibit continuous changes in valuations, leading to frequent shifts in client interests. These evolving interests, summarized in the past client-product interactions, see their utility fade over time with a degree that might differ from one client to another. To address this challenge, we propose a time-dependent collaborative filtering algorithm that can adaptively discount distant client-product interactions using personalized decay functions. Our approach is designed to handle the non-stationarity of financial data and produce reliable recommendations by modeling the dynamic collaborative signals between clients and products. We evaluate our method using a proprietary dataset from BNP Paribas and demonstrate significant improvements over state-of-the-art benchmarks from relevant literature. Our findings emphasize the importance of incorporating time explicitly in the model to enhance the accuracy of financial product recommendation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/26/2021

History-Augmented Collaborative Filtering for Financial Recommendations

In many businesses, and particularly in finance, the behavior of a clien...
research
04/27/2017

Optimal client recommendation for market makers in illiquid financial products

The process of liquidity provision in financial markets can result in pr...
research
12/04/2019

Addressing Marketing Bias in Product Recommendations

Modern collaborative filtering algorithms seek to provide personalized p...
research
01/11/2019

Large-scale Collaborative Filtering with Product Embeddings

The application of machine learning techniques to large-scale personaliz...
research
09/08/2020

Implicit Feedback Deep Collaborative Filtering Product Recommendation System

In this paper, several Collaborative Filtering (CF) approaches with late...
research
02/04/2016

Ups and Downs: Modeling the Visual Evolution of Fashion Trends with One-Class Collaborative Filtering

Building a successful recommender system depends on understanding both t...
research
03/06/2015

Sequential Relevance Maximization with Binary Feedback

Motivated by online settings where users can provide explicit feedback a...

Please sign up or login with your details

Forgot password? Click here to reset