Incomplete Information and the Liquidity Premium Puzzle

Yingshan Chen, M. Dai, Luis Goncalves-Pinto, Jing Xu, Cheng Yan
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引用次数: 2

Abstract

We examine the problem of an investor who trades in a market with unobservable regime shifts. The investor learns from past prices and is subject to transaction costs. Our model generates significantly larger liquidity premia compared with a benchmark model with observable market shifts. The larger premia are driven primarily by suboptimal risk exposure, as turnover is lower under incomplete information. In contrast, the benchmark model produces (mechanically) high turnover and heavy trading costs. We provide empirical support for the amplification effect of incomplete information on the relation between trading costs and future stock returns. We also show empirically that such amplification is not driven by turnover. Overall, our results can help explain the large disconnect between theory and evidence regarding the magnitude of liquidity premia, which has been a longstanding puzzle in the literature. This paper was accepted by Kay Giesecke, finance.
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不完全信息与流动性溢价之谜
我们研究了一个投资者在一个不可观察的制度变化的市场中交易的问题。投资者从过去的价格中学习,并受到交易成本的影响。与具有可观察到的市场变化的基准模型相比,我们的模型产生了更大的流动性溢价。较大的溢价主要是由次优风险敞口驱动的,因为在信息不完全的情况下,周转率较低。相比之下,基准模型(机械地)产生高周转率和沉重的交易成本。我们为不完全信息对交易成本与未来股票收益关系的放大效应提供了实证支持。我们也从经验上表明,这种放大不是由营业额驱动的。总的来说,我们的结果可以帮助解释关于流动性溢价幅度的理论和证据之间的巨大脱节,这一直是文献中一个长期存在的难题。这篇论文被财经的Kay Giesecke接受。
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