Portfolio optimization is one of the most studied fields that have been researched with machine learning approaches because of its inherent demand for forecasting future market properties. In this thesis, it is shown how one can use deep neural networks with historical returns to do risk adjusted asset allocation. Unlike previous studies which set as target variable asset prices, the variable to predict here is represented by the best asset allocation strategy. Experiments performed on a time period of seven years show that temporal convolutional networks are superior to long short term memory networks and transformers. Compared to baseline benchmarks, the computed allocation has an average increase in the year revenue between 2% and 5%. Fu...
Deep reinforcement learning (DRL) has reached an unprecedent level on complex tasks like game solvin...
M.Phil.This paper investigates a deep-learning solution to high-dimensional multi-period portfolio o...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Samazinoties skaitļošanas jaudas izmaksām un pieaugot pētniecībai, neironu tīklu popularitāte pēdējo...
Predicting volatility is a critical activity for taking risk- adjusted decisions in asset trading an...
Although appealing from a theoretical point of view, empirical assessments of dynamic portfolio opti...
Portfolio theory is an important foundation for portfolio management which is a well-studied subject...
El problema abordado por este trabajo es la predicción del precio de activos cotizados y la automati...
Abstract The process of continuously reallocating funds into financial assets, aiming to increase th...
Deep learning techniques have been widely applied in the field of stock market prediction particular...
Deep learning has been widely used in hedge funds and asset management firms. The increasing complex...
Statistical arbitrage exploits temporal price differences between similar assets. We develop a unify...
In this paper, we propose a machine learning algorithm for time-inconsistent portfolio optimization....
Nowadays, Financial Markets represent a crucial part of the world economy. Financial Markets have gr...
Diese Arbeit beschreibt einen Deep Reinforcement Learning-Algorithmus für das Portfolio-Management m...
Deep reinforcement learning (DRL) has reached an unprecedent level on complex tasks like game solvin...
M.Phil.This paper investigates a deep-learning solution to high-dimensional multi-period portfolio o...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Samazinoties skaitļošanas jaudas izmaksām un pieaugot pētniecībai, neironu tīklu popularitāte pēdējo...
Predicting volatility is a critical activity for taking risk- adjusted decisions in asset trading an...
Although appealing from a theoretical point of view, empirical assessments of dynamic portfolio opti...
Portfolio theory is an important foundation for portfolio management which is a well-studied subject...
El problema abordado por este trabajo es la predicción del precio de activos cotizados y la automati...
Abstract The process of continuously reallocating funds into financial assets, aiming to increase th...
Deep learning techniques have been widely applied in the field of stock market prediction particular...
Deep learning has been widely used in hedge funds and asset management firms. The increasing complex...
Statistical arbitrage exploits temporal price differences between similar assets. We develop a unify...
In this paper, we propose a machine learning algorithm for time-inconsistent portfolio optimization....
Nowadays, Financial Markets represent a crucial part of the world economy. Financial Markets have gr...
Diese Arbeit beschreibt einen Deep Reinforcement Learning-Algorithmus für das Portfolio-Management m...
Deep reinforcement learning (DRL) has reached an unprecedent level on complex tasks like game solvin...
M.Phil.This paper investigates a deep-learning solution to high-dimensional multi-period portfolio o...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...