Learning from prices: information aggregation and accumulation in an asset market

IF 0.8 Q4 BUSINESS, FINANCE Annals of Finance Pub Date : 2020-11-04 DOI:10.1007/s10436-020-00378-w
Michele Berardi
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引用次数: 1

Abstract

Can prices convey information about the fundamental value of an asset? This paper considers this problem in relation to the dynamic properties of the fundamental (whether it is constant or time-varying) and the structure of information available to agents. Risk-averse traders receive two potential signals each period: one exogenous and private and the other, prices, endogenous and public. Prices aggregate private information but include aggregate noise. Information can accumulate over time both through endogenous and exogenous signals. With a constant fundamental, the precision of both private and public cumulative information increases over time but agents put progressively more weight on the endogenous signals, asymptotically disregarding private ones. If the fundamental is time-varying, the use of past private signals complicates the role of prices as a source of information, since it introduces endogenous serial correlation in the price signal and cross-correlation between it and innovations in the fundamental. A modified version of the Kalman filter can still be used to extract information from prices and results show that the precision of the endogenous signals converges to a constant, with both private and public information used at all times.

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从价格中学习:资产市场中的信息聚合和积累
价格能否传达有关资产基本价值的信息?本文将这个问题与基本的动态特性(无论是常数还是时变的)和代理可用信息的结构联系起来考虑。规避风险的交易员每个时期都会收到两个潜在信号:一个是外生的私人信号,另一个是价格、内生的公共信号。价格聚合了私人信息,但也包含了聚合噪音。信息可以通过内源性和外源性信号随时间积累。在基本面不变的情况下,私人和公共累积信息的精度都会随着时间的推移而增加,但代理人会逐渐加大对内生信号的重视,逐渐忽略私人信号。如果基本面是时变的,那么使用过去的私人信号会使价格作为信息来源的作用复杂化,因为它在价格信号中引入了内生序列相关性,并在价格信号与基本面创新之间引入了互相关。卡尔曼滤波器的修改版本仍然可以用于从价格中提取信息,结果表明,内生信号的精度收敛于常数,同时始终使用私人和公共信息。
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来源期刊
Annals of Finance
Annals of Finance BUSINESS, FINANCE-
CiteScore
2.00
自引率
10.00%
发文量
15
期刊介绍: Annals of Finance provides an outlet for original research in all areas of finance and its applications to other disciplines having a clear and substantive link to the general theme of finance. In particular, innovative research papers of moderate length of the highest quality in all scientific areas that are motivated by the analysis of financial problems will be considered. Annals of Finance''s scope encompasses - but is not limited to - the following areas: accounting and finance, asset pricing, banking and finance, capital markets and finance, computational finance, corporate finance, derivatives, dynamical and chaotic systems in finance, economics and finance, empirical finance, experimental finance, finance and the theory of the firm, financial econometrics, financial institutions, mathematical finance, money and finance, portfolio analysis, regulation, stochastic analysis and finance, stock market analysis, systemic risk and financial stability. Annals of Finance also publishes special issues on any topic in finance and its applications of current interest. A small section, entitled finance notes, will be devoted solely to publishing short articles – up to ten pages in length, of substantial interest in finance. Officially cited as: Ann Finance
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