Efficient Prices at Any Cost: Does Algorithmic Trading Deter Information Acquisition?


Autoria(s): Weller, Brian M
Data(s)

28/11/2015

Resumo

I demonstrate a powerful tension between acquiring information and incorporating it into asset prices, the two core elements of price discovery. As a salient case, I focus on the transformative rise of algorithmic trading (AT) typically associated with improved price efficiency. Using a measure of the relative information content of prices and a comprehensive panel of 37,325 stock-quarters of SEC market data, I establish instead that algorithmic trading strongly decreases the net amount of information in prices. The increase in price distortions associated with the AT “information gap” is roughly $42.6 billion/year for U.S. common stocks around earnings announcement events alone. Information losses are concentrated among stocks with high shares of algorithmic liquidity takers relative to algorithmic liquidity makers, suggesting that aggressive AT powerfully deters fundamental information acquisition despite its importance for translating available information into prices.

Identificador

2015

http://hdl.handle.net/10161/12470

Palavras-Chave #Information Acquisition #Price Discovery #Algorithmic Trading #SEC MIDAS
Tipo

Journal Article