A new structure for analyzing discrete scale invariant processes: Covariance and Spectra
Abstract: Improving the efficiency of discrete time scale invariant (DSI) processes, we consider some flexible sampling of a continuous time DSI process ${X(t), t\in{R+}}$ with scale $l>1$, which is in correspondence to some multi-dimensional self-similar process. So we consider $q$ samples at arbitrary points $s_0, s_1, ..., s_{q-1}$ in interval $[1, l)$ and proceed in the intervals $[ln, l{n+1})$ at points $ln s_0,ln s_1, ..., ln s_{q-1}$, $n\in Z$. So we study an embedded DT-SI process $W(nq+k)=X(ln s_k)$, $q\in N$, $k= 0, ..., q-1$, and its multi-dimensional self-similar counter part $V(n)=\big(V0(n),..., V{q-1}(n)\big)$ where $Vk(n)=W(nq+k)$. We study spectral representation of such process and obtain its spectral density matrix. Finally by imposing wide sense Markov property on $W(\cdot)$ and $V(\cdot)$, we show that the spectral density matrix of $V(\cdot)$ can be characterized by ${R_j(1), R_j(0), j=0, ..., q-1}$ where $R_j(k)=E[W(j+k)W(j)]$.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.