GENERATIVE NETWORK BASED PROBABILISTIC PORTFOLIO MANAGEMENT

A deep-learning neural network can be trained to model a probability distribution of the asset-price trends for a future time period using a training data set, which can include asset-price trends of a plurality of assets over a past time period and a latent vector sampled from a prior distribution...

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Bibliographische Detailangaben
Hauptverfasser: Bhaskaran, Kumar, Zhu, Yada, Mariani, Giovanni, Chang, Rong N
Format: Patent
Sprache:eng
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Zusammenfassung:A deep-learning neural network can be trained to model a probability distribution of the asset-price trends for a future time period using a training data set, which can include asset-price trends of a plurality of assets over a past time period and a latent vector sampled from a prior distribution associated with the asset-price trends of a plurality of assets. The training data set can represent a time series data. A portfolio optimization can be executed on the modeled probability distribution to estimate expected risks and returns for different portfolio diversification options.