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 asset allocation


Improving Asset Allocation in a Fast Moving Consumer Goods B2B Company: An Interpretable Machine Learning Framework for Commercial Cooler Assignment Based on Multi-Tier Growth Targets

Castro, Renato, Paredes, Rodrigo, Kahn, Douglas

arXiv.org Artificial Intelligence

In the fast-moving consumer goods (FMCG) industry, deciding where to place physical assets, such as commercial beverage coolers, can directly impact revenue growth and execution efficiency. Although churn prediction and demand forecasting have been widely studied in B2B contexts, the use of machine learning to guide asset allocation remains relatively unexplored. This paper presents a framework focused on predicting which beverage clients are most likely to deliver strong returns in volume after receiving a cooler. Using a private dataset from a well-known Central American brewing and beverage company of 3,119 B2B traditional trade channel clients that received a cooler from 2022-01 to 2024-07, and tracking 12 months of sales transactions before and after cooler installation, three growth thresholds were defined: 10%, 30% and 50% growth in sales volume year over year. The analysis compares results of machine learning models such as XGBoost, LightGBM, and CatBoost combined with SHAP for interpretable feature analysis in order to have insights into improving business operations related to cooler allocation; the results show that the best model has AUC scores of 0.857, 0.877, and 0.898 across the thresholds on the validation set. Simulations suggest that this approach can improve ROI because it better selects potential clients to grow at the expected level and increases cost savings by not assigning clients that will not grow, compared to traditional volume-based approaches with substantial business management recommendations


MOPO-LSI: A User Guide

Zheng, Yong, Shukla, Kumar Neelotpal, Xu, Jasmine, David, null, Wang, null, O'Leary, Michael

arXiv.org Artificial Intelligence

MOPO-LSI is an open-source Multi-Objective Portfolio Optimization Library for Sustainable Investments. This document provides a user guide for MOPO-LSI version 1.0, including problem setup, workflow and the hyper-parameters in configurations.


Artificial Intelligence is coming to Autofarm: AI-Fi is here

#artificialintelligence

AutoFarm releases AutoLabs to research, develop and integrate AI into AutoFarm's products We are thrilled to announce that Autofarm, the leading lowest fee multi-chain DEX & yield aggregator protocol, is set to integrate advanced Artificial Intelligence (AI) and Machine Learning (ML) technologies to revolutionise yield generation and scalability on the platform. AutoFarm has established AutoLabs, an in-house research division dedicated to exploring the integration of advanced AI/ML technologies. A specialised AI architecture team, comprising experts from various AI backgrounds, has been assembled within AutoLabs to lead this initiative. The goal of this internal research division is to empower Autofarm's products with the ability to analyse real-world data dynamically, identify profitable opportunities, and make autonomous decisions for optimal asset allocation across multiple blockchain networks. One key technique that Autofarm plans to implement is the use of oracles to bridge on-chain and off-chain data.


Deep Reinforcement Learning for Asset Allocation: Reward Clipping

Kim, Jiwon, Kang, Moon-Ju, Lee, KangHun, Moon, HyungJun, Jeon, Bo-Kwan

arXiv.org Artificial Intelligence

Recently, there are many trials to apply reinforcement learning in asset allocation for earning more stable profits. In this paper, we compare performance between several reinforcement learning algorithms - actor-only, actor-critic and PPO models. Furthermore, we analyze each models' character and then introduce the advanced algorithm, so called Reward clipping model. It seems that the Reward Clipping model is better than other existing models in finance domain, especially portfolio optimization - it has strength both in bull and bear markets. Finally, we compare the performance for these models with traditional investment strategies during decreasing and increasing markets.


Model-Free Reinforcement Learning for Asset Allocation

#artificialintelligence

Asset allocation (or portfolio management) is the task of determining how to optimally allocate funds of a finite budget into a range of financial instruments/assets such as stocks. This study investigated the performance of reinforcement learning (RL) when applied to portfolio management using model-free deep RL agents. We trained several RL agents on real-world stock prices to learn how to perform asset allocation. We compared the performance of these RL agents against some baseline agents. We also compared the RL agents among themselves to understand which classes of agents performed better. From our analysis, RL agents can perform the task of portfolio management since they significantly outperformed two of the baseline agents (random allocation and uniform allocation). Four RL agents (A2C, SAC, PPO, and TRPO) outperformed the best baseline, MPT, overall. This shows the abilities of RL agents to uncover more profitable trading strategies. Furthermore, there were no significant performance differences between value-based and policy-based RL agents. Actor-critic agents performed better than other types of agents. Also, on-policy agents performed better than off-policy agents because they are better at policy evaluation and sample efficiency is not a significant problem in portfolio management. This study shows that RL agents can substantially improve asset allocation since they outperform strong baselines. On-policy, actor-critic RL agents showed the most promise based on our analysis.


Asset Allocation: From Markowitz to Deep Reinforcement Learning

Durall, Ricard

arXiv.org Artificial Intelligence

Asset allocation is an investment strategy that aims to balance risk and reward by constantly redistributing the portfolio's assets according to certain goals, risk tolerance, and investment horizon. Unfortunately, there is no simple formula that can find the right allocation for every individual. As a result, investors may use different asset allocations' strategy to try to fulfil their financial objectives. In this work, we conduct an extensive benchmark study to determine the efficacy and reliability of a number of optimization techniques. In particular, we focus on traditional approaches based on Modern Portfolio Theory, and on machine-learning approaches based on deep reinforcement learning. We assess the model's performance under different market tendency, i.e., both bullish and bearish markets. For reproducibility, we provide the code implementation code in this repository.


Statistical Learning for Individualized Asset Allocation

Ding, Yi, Li, Yingying, Song, Rui

arXiv.org Machine Learning

We establish a high-dimensional statistical learning framework for individualized asset allocation. Our proposed methodology addresses continuous-action decision-making with a large number of characteristics. We develop a discretization approach to model the effect from continuous actions and allow the discretization level to be large and diverge with the number of observations. The value function of continuous-action is estimated using penalized regression with generalized penalties that are imposed on linear transformations of the model coefficients. We show that our estimators using generalized folded concave penalties enjoy desirable theoretical properties and allow for statistical inference of the optimal value associated with optimal decision-making. Empirically, the proposed framework is exercised with the Health and Retirement Study data in finding individualized optimal asset allocation. The results show that our individualized optimal strategy improves individual financial well-being and surpasses benchmark strategies.


Embracing advanced AI/ML to help investors achieve success: Vanguard Reinforcement Learning for Financial Goal Planning

Mohammed, Shareefuddin, Bealer, Rusty, Cohen, Jason

arXiv.org Artificial Intelligence

In the world of advice and financial planning, there is seldom one right answer. While traditional algorithms have been successful in solving linear problems, its success often depends on choosing the right features from a dataset, which can be a challenge for nuanced financial planning scenarios. Reinforcement learning is a machine learning approach that can be employed with complex data sets where picking the right features can be nearly impossible. In this paper, we will explore the use of machine learning for financial forecasting, predicting economic indicators, and creating a savings strategy. Vanguard ML algorithm for goals-based financial planning is based on deep reinforcement learning that identifies optimal savings rates across multiple goals and sources of income to help clients achieve financial success. Vanguard learning algorithms are trained to identify market indicators and behaviors too complex to capture with formulas and rules, instead, it works to model the financial success trajectory of investors and their investment outcomes as a Markov decision process. We believe that reinforcement learning can be used to create value for advisors and end-investors, creating efficiency, more personalized plans, and data to enable customized solutions.


Climate change and AI set to transform investing

#artificialintelligence

After averting a 1929-style global depression in the wake of the Lehman collapse in 2008, central banks in key economies have faced the Herculean task of unwinding their crisis-era emergency measures, involving zero-bound interest rates and large-scale asset purchases. As the new decade begins it is becoming clear that two trends will reshape the future of investing. One is the rise of artificial intelligence (AI) as a new technology capable of disrupting every industry in the mature economies. The other is growing concern about climate change, which is set to transform the ecosystem of today's financial markets. This much is clear from a recent global survey of pension plans and asset managers by BNY Mellon Investment Management and CREATE-Research, titled Future2024: Future-proofing your asset allocation in the age of megatrends.


How Robo-Advisors Boost Your Business Making Better Than Human

#artificialintelligence

You may have to pay to speak to a real person when you agree to hybrid human-robo management. Technically, you are always in charge of your finances, but you may not be willing to hand over your portfolio's reigns to a robot. A robo-advisor may not be a great fit if you want a more hands-on approach to online guidance. Even an algorithm is still the most sophisticated computer algorithm. It can't sit with you, it can't explain anything to you, and it can't listen to your future dreams.