Department of Mathematics, Uppsala University, Uppsala, Sweden.
PLoS One. 2012;7(4):e33960. doi: 10.1371/journal.pone.0033960. Epub 2012 Apr 27.
We investigate the structure of the profit landscape obtained from the most basic, fluctuation based, trading strategy applied for the daily stock price data. The strategy is parameterized by only two variables, p and q Stocks are sold and bought if the log return is bigger than p and less than -q, respectively. Repetition of this simple strategy for a long time gives the profit defined in the underlying two-dimensional parameter space of p and q. It is revealed that the local maxima in the profit landscape are spread in the form of a fractal structure. The fractal structure implies that successful strategies are not localized to any region of the profit landscape and are neither spaced evenly throughout the profit landscape, which makes the optimization notoriously hard and hypersensitive for partial or limited information. The concrete implication of this property is demonstrated by showing that optimization of one stock for future values or other stocks renders worse profit than a strategy that ignores fluctuations, i.e., a long-term buy-and-hold strategy.
我们研究了从最基本的波动交易策略中获得的利润景观的结构,该策略应用于每日股票价格数据。该策略仅由两个变量 p 和 q 参数化,如果对数回报大于 p 且小于-q,则分别卖出和买入股票。长时间重复这种简单的策略,就可以在基本的 p 和 q 二维参数空间中定义利润。结果表明,利润景观中的局部最大值呈分形结构分布。分形结构意味着成功的策略并不局限于利润景观的任何区域,也不是均匀分布在整个利润景观中,这使得优化对于局部或有限的信息变得非常困难和敏感。通过展示对未来价值或其他股票的单一股票进行优化的利润不如忽略波动的策略(即长期买入并持有策略)好,证明了这一特性的具体含义。