Stock Recommendations for Individual Investors: A Temporal Graph Network Approach with Mean-Variance Efficient Sampling
- URL: http://arxiv.org/abs/2404.07223v2
- Date: Sat, 17 Aug 2024 06:45:17 GMT
- Title: Stock Recommendations for Individual Investors: A Temporal Graph Network Approach with Mean-Variance Efficient Sampling
- Authors: Youngbin Lee, Yejin Kim, Javier Sanz-Cruzado, Richard McCreadie, Yongjae Lee,
- Abstract summary: Individual investors often disregard established investment theories, favoring their personal preferences instead.
This presents a challenge for stock recommendation systems, which must not only provide strong investment performance but also respect these individual preferences.
We propose a new model, Portfolio Temporal Graph Network Recommender, PfoTGNRec, which can handle time-varying collaborative signals and incorporates diversification-enhancing sampling.
- Score: 27.770653904666776
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recommender systems can be helpful for individuals to make well-informed decisions in complex financial markets. While many studies have focused on predicting stock prices, even advanced models fall short of accurately forecasting them. Additionally, previous studies indicate that individual investors often disregard established investment theories, favoring their personal preferences instead. This presents a challenge for stock recommendation systems, which must not only provide strong investment performance but also respect these individual preferences. To create effective stock recommender systems, three critical elements must be incorporated: 1) individual preferences, 2) portfolio diversification, and 3) the temporal dynamics of the first two. In response, we propose a new model, Portfolio Temporal Graph Network Recommender, PfoTGNRec, which can handle time-varying collaborative signals and incorporates diversification-enhancing sampling. On real-world individual trading data, our approach demonstrates superior performance compared to state-of-the-art baselines, including cutting-edge dynamic embedding models and existing stock recommendation models. Indeed, we show that PfoTGNRec is an effective solution that can balance customer preferences with the need to suggest portfolios with high Return-on-Investment. The source code and data are available at https://anonymous.4open.science/r/ICAIF2024-E23E.
Related papers
- Preference Diffusion for Recommendation [50.8692409346126]
We propose PreferDiff, a tailored optimization objective for DM-based recommenders.
PreferDiff transforms BPR into a log-likelihood ranking objective to better capture user preferences.
It is the first personalized ranking loss designed specifically for DM-based recommenders.
arXiv Detail & Related papers (2024-10-17T01:02:04Z) - Large-scale Time-Varying Portfolio Optimisation using Graph Attention Networks [4.2056926734482065]
This is the first study to incorporate risky firms and use all the firms in portfolio optimisation.
We propose and empirically test a novel method that leverages Graph Attention networks (GATs)
GATs are deep learning-based models that exploit network data to uncover nonlinear relationships.
arXiv Detail & Related papers (2024-07-22T10:50:47Z) - Developing An Attention-Based Ensemble Learning Framework for Financial Portfolio Optimisation [0.0]
We propose a multi-agent and self-adaptive portfolio optimisation framework integrated with attention mechanisms and time series, namely the MASAAT.
By reconstructing the tokens of financial data in a sequence, the attention-based cross-sectional analysis module and temporal analysis module of each agent can effectively capture the correlations between assets and the dependencies between time points.
The experimental results clearly demonstrate that the MASAAT framework achieves impressive enhancement when compared with many well-known portfolio optimsation approaches.
arXiv Detail & Related papers (2024-04-13T09:10:05Z) - EASRec: Elastic Architecture Search for Efficient Long-term Sequential
Recommender Systems [82.76483989905961]
Current Sequential Recommender Systems (SRSs) suffer from computational and resource inefficiencies.
We develop the Elastic Architecture Search for Efficient Long-term Sequential Recommender Systems (EASRec)
EASRec introduces data-aware gates that leverage historical information from input data batch to improve the performance of the recommendation network.
arXiv Detail & Related papers (2024-02-01T07:22:52Z) - ChatGPT-based Investment Portfolio Selection [21.24186888129542]
We explore potential uses of generative AI models, such as ChatGPT, for investment portfolio selection.
We use ChatGPT to obtain a universe of stocks from S&P500 market index that are potentially attractive for investing.
Our findings indicate that ChatGPT is effective in stock selection but may not perform as well in assigning optimal weights to stocks within the portfolio.
arXiv Detail & Related papers (2023-08-11T17:48:17Z) - HireVAE: An Online and Adaptive Factor Model Based on Hierarchical and
Regime-Switch VAE [113.47287249524008]
It is still an open question to build a factor model that can conduct stock prediction in an online and adaptive setting.
We propose the first deep learning based online and adaptive factor model, HireVAE, at the core of which is a hierarchical latent space that embeds the relationship between the market situation and stock-wise latent factors.
Across four commonly used real stock market benchmarks, the proposed HireVAE demonstrate superior performance in terms of active returns over previous methods.
arXiv Detail & Related papers (2023-06-05T12:58:13Z) - Holder Recommendations using Graph Representation Learning & Link
Prediction [0.0]
Current methods surface leads based on certain product categorization and attributes like returns, fees, category etc.
This paper proposes a comprehensive data driven framework for developing a lead recommendations system in holder's space for financial products like funds.
arXiv Detail & Related papers (2022-11-10T16:36:17Z) - Self-supervised Graph-based Point-of-interest Recommendation [66.58064122520747]
Next Point-of-Interest (POI) recommendation has become a prominent component in location-based e-commerce.
We propose a Self-supervised Graph-enhanced POI Recommender (S2GRec) for next POI recommendation.
In particular, we devise a novel Graph-enhanced Self-attentive layer to incorporate the collaborative signals from both global transition graph and local trajectory graphs.
arXiv Detail & Related papers (2022-10-22T17:29:34Z) - Price DOES Matter! Modeling Price and Interest Preferences in
Session-based Recommendation [55.0391061198924]
Session-based recommendation aims to predict items that an anonymous user would like to purchase based on her short behavior sequence.
It is nontrivial to incorporate price preferences for session-based recommendation.
We propose a novel method Co-guided Heterogeneous Hypergraph Network (CoHHN) for session-based recommendation.
arXiv Detail & Related papers (2022-05-09T10:47:15Z) - Fuzzy Expert System for Stock Portfolio Selection: An Application to
Bombay Stock Exchange [0.0]
Fuzzy expert system model is proposed to evaluate and rank the stocks under Bombay Stock Exchange (BSE)
The performance of the model proved to be satisfactory for short-term investment period when compared with the recent performance of the stocks.
arXiv Detail & Related papers (2022-04-28T10:01:15Z) - PURS: Personalized Unexpected Recommender System for Improving User
Satisfaction [76.98616102965023]
We describe a novel Personalized Unexpected Recommender System (PURS) model that incorporates unexpectedness into the recommendation process.
Extensive offline experiments on three real-world datasets illustrate that the proposed PURS model significantly outperforms the state-of-the-art baseline approaches.
arXiv Detail & Related papers (2021-06-05T01:33:21Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.