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Market Depth at the BM&FBovespa

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  • Fernandes, Marcelo
  • Barros, Carlos Felipe

Abstract

O objetivo desse trabalho é estimar a medida dinâmica VNET de profundidade de mercado para ações brasileiras a partir de dados de transação. VNET mede a diferença no número de ações compradas e vendidas no intervalo de tempo necessário para que o preço se movesse além de um determinado incremento. É uma medida de liquidez realizada para uma deterioração específica de preço que pode ser calculada seguidamente ao longo do dia, capturando assim a dinâmica de curto prazo da liquidez. Em particular, assume-se que essa duração de preços segue um modelo autorregressivo de duração condicional (ACD). A natureza pré-determinada do processo ACD é conveniente porque nos permite prever mudanças futuras na liquidez de uma ação. Assim, ao identificar os melhores momentos para realizar uma operação de compra ou venda, o VNET é um excelente ponto de partida para qualquer estratégia de execução ótima. Os resultados empíricos deste trabalho indicam que a profundidade de mercado medida pelo VNET varia com ágio de compra e venda, com o volume negociado, com o número de negócios, com a duração de preços condicional, e com o seu erro de previsão. Para estimar a curva de reação do mercado, variamos os intervalos de preço usados na definição das durações de preços.

Suggested Citation

  • Fernandes, Marcelo & Barros, Carlos Felipe, 2014. "Market Depth at the BM&FBovespa," Brazilian Review of Econometrics, Sociedade Brasileira de Econometria - SBE, vol. 34(1), March.
  • Handle: RePEc:sbe:breart:v:34:y:2014:i:1:a:17457
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    References listed on IDEAS

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