MULTIRESOLUTION SIGNAL PROCESSING OF FINANCIAL MARKET OBJECTS
Ioana Boier (Nvidia )
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SPS
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Financial markets are among the most complex entities in our environment, yet mainstream quantitative models operate at predetermined scale, rely on linear correlation measures, and struggle to recognize non-linear or causal structures. In this paper, we combine neural networks, known to capture non-linear associations, with a multiscale decomposition to facilitate a better understanding of financial market data substructures. Quantization keeps decompositions calibrated to mar- ket. We illustrate our approach via seven use cases.