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arxiv: 1811.03975 · v1 · pith:TSWNDSZUnew · submitted 2018-11-09 · 🪐 quant-ph

Quantum computational finance: quantum algorithm for portfolio optimization

classification 🪐 quant-ph
keywords quantumalgorithmportfoliooptimalclassicalcurvedatadiscuss
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We present a quantum algorithm for portfolio optimization. We discuss the market data input, the processing of such data via quantum operations, and the output of financially relevant results. Given quantum access to the historical record of returns, the algorithm determines the optimal risk-return tradeoff curve and allows one to sample from the optimal portfolio. The algorithm can in principle attain a run time of ${\rm poly}(\log(N))$, where $N$ is the size of the historical return dataset. Direct classical algorithms for determining the risk-return curve and other properties of the optimal portfolio take time ${\rm poly}(N)$ and we discuss potential quantum speedups in light of the recent works on efficient classical sampling approaches.

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    A quantum Monte Carlo algorithm solves multidimensional Black-Scholes PDEs for option pricing with polynomial complexity in dimension d and accuracy 1/ε, with rigorous error bounds and a claimed speedup over classical...