Empirical scaling laws and the aggregation of non-stationary data |
| |
Authors: | Lo-Bin Chang Stuart Geman |
| |
Affiliation: | 1. Department of Applied Mathematics, National Chiao Tung University, Taiwan;2. Division of Applied Mathematics, Brown University, United States |
| |
Abstract: | Widely cited evidence for scaling (self-similarity) of the returns of stocks and other securities is inconsistent with virtually all currently-used models for price movements. In particular, state-of-the-art models provide for ubiquitous, irregular, and oftentimes high-frequency fluctuations in volatility (“stochastic volatility”), both intraday and across the days, weeks, and years over which data is aggregated in demonstrations of self-similarity of returns. Stochastic volatility renders these models, which are based on variants and generalizations of random walks, incompatible with self-similarity. We show here that empirical evidence for self-similarity does not actually contradict the analytic lack of self-similarity in these models. The resolution of the mismatch between models and data can be traced to a statistical consequence of aggregating large amounts of non-stationary data. |
| |
Keywords: | Random-walk models Self-similarity Stochastic volatility Market time |
本文献已被 ScienceDirect 等数据库收录! |
|