The causal impact of algorithmic trading on market quality has been difficult to establish due to endogeneity bias. We address this problem by using the introduction of co-location, an exogenous event after which algorithmic trading is known to increase. Matching procedures are used to identify a matched set of firms and set of dates that are used in a difference-in-difference regression to estimate causal impact. We find that securities with higher algorithmic trading have lower liquidity costs, order imbalance, and order volatility. There is new evidence that higher algorithmic trading leads to lower intraday liquidity risk and a lower incidence of extreme intraday price movements
This study explores the impact of algorithmic trading (AT) on liquidity in Thailand, as it affects b...
Financial markets and the pace of trading have changed dramatically over the last decade. Stock exch...
Purpose – Algorithmic trading attempts to reduce trading costs by se...
The causal impact of algorithmic trading on market quality has been difficult to establish due to en...
We use a large sample from 2001 – 2009 that incorporates 39 exchanges and an average of 12,800 diffe...
This paper examines the impact of algorithmic trading on the resiliency of bid-ask spreads and marke...
In this work we simulate algorithmic trading (AT) in asset markets to clarify its impact. Our market...
Using the adoption of the Arrowhead trading platform in January 2010 as an exogenous event, we inves...
In this work we simulate algorithmic trading (AT) in asset markets to clarify its impact. Our market...
Algorithmic trading has sharply increased over the past decade. Equity market liquidity has improved...
This paper examines the impact of algorithmic trading (AT) on market liquidity around periods of hig...
This paper considers algorithmic trading (AT) during the most volatile trading days on the Australia...
Algorithmic trading (AT) has increased sharply over the past decade. Does it improve market quality,...
Innovative automated execution strategies like Algorithmic Trading gain significant market share on ...
After exchanges and alternative trading venues have introduced electronic execution mechanisms world...
This study explores the impact of algorithmic trading (AT) on liquidity in Thailand, as it affects b...
Financial markets and the pace of trading have changed dramatically over the last decade. Stock exch...
Purpose – Algorithmic trading attempts to reduce trading costs by se...
The causal impact of algorithmic trading on market quality has been difficult to establish due to en...
We use a large sample from 2001 – 2009 that incorporates 39 exchanges and an average of 12,800 diffe...
This paper examines the impact of algorithmic trading on the resiliency of bid-ask spreads and marke...
In this work we simulate algorithmic trading (AT) in asset markets to clarify its impact. Our market...
Using the adoption of the Arrowhead trading platform in January 2010 as an exogenous event, we inves...
In this work we simulate algorithmic trading (AT) in asset markets to clarify its impact. Our market...
Algorithmic trading has sharply increased over the past decade. Equity market liquidity has improved...
This paper examines the impact of algorithmic trading (AT) on market liquidity around periods of hig...
This paper considers algorithmic trading (AT) during the most volatile trading days on the Australia...
Algorithmic trading (AT) has increased sharply over the past decade. Does it improve market quality,...
Innovative automated execution strategies like Algorithmic Trading gain significant market share on ...
After exchanges and alternative trading venues have introduced electronic execution mechanisms world...
This study explores the impact of algorithmic trading (AT) on liquidity in Thailand, as it affects b...
Financial markets and the pace of trading have changed dramatically over the last decade. Stock exch...
Purpose – Algorithmic trading attempts to reduce trading costs by se...