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arxiv: 0908.4580 · v1 · submitted 2009-08-31 · 💻 cs.CE · cs.CC· q-fin.TR

A Computational View of Market Efficiency

classification 💻 cs.CE cs.CCq-fin.TR
keywords marketmemorystrategiescomputationalefficiencyinitiallymakeprofit
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We propose to study market efficiency from a computational viewpoint. Borrowing from theoretical computer science, we define a market to be \emph{efficient with respect to resources $S$} (e.g., time, memory) if no strategy using resources $S$ can make a profit. As a first step, we consider memory-$m$ strategies whose action at time $t$ depends only on the $m$ previous observations at times $t-m,...,t-1$. We introduce and study a simple model of market evolution, where strategies impact the market by their decision to buy or sell. We show that the effect of optimal strategies using memory $m$ can lead to "market conditions" that were not present initially, such as (1) market bubbles and (2) the possibility for a strategy using memory $m' > m$ to make a bigger profit than was initially possible. We suggest ours as a framework to rationalize the technological arms race of quantitative trading firms.

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