GENERATIVE ARTIFICIAL INTELLIGENCE-BASED AGENTS USING CUSTOMIZED NEURAL NETWORKS

A data analytics platform is provided for forecasting future states of commodities and other assets, based on processing of both textual and numerical data sources. The platform includes a multi-layer machine learning-based model that extracts sentiment from textual data in a natural language proces...

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Main Authors LAZARIS, SPYROS J, FORMAN, CRAIG I, LEI, TONY CHIYUNG, BLAIR, THOMAS N, JOLICOEUR, LEO RICHARD, KURZHANSKIY, ALEX A, MCERLEAN, MICHAEL G
Format Patent
LanguageEnglish
Published 18.07.2024
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Summary:A data analytics platform is provided for forecasting future states of commodities and other assets, based on processing of both textual and numerical data sources. The platform includes a multi-layer machine learning-based model that extracts sentiment from textual data in a natural language processing engine, evaluates numerical data in a time-series analysis, and generates an initial forecast for the commodity or asset being analyzed. The platform includes multiple applications of neural networks to develop augmented forecasts from further analysis of relevant information as it is collected. These include commodity-specific neural networks designed to continually develop taxonomies used to process commodity sentiment, and applications of reinforcement learning, symbolic networks, and unsupervised meta learning to improve overall performance and accuracy of the forecasts generated.
Bibliography:Application Number: US202418432523