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Assessing investor belief: An analysis of trading for sustainable growth of stock markets

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posted on 2024-08-28, 06:38 authored by Yan Han, Xue-Feng Shao, X Cui, XG Yue, KJ Bwalya, Otilia Manta
Investors' beliefs are the driving force behind the trading of stocks and, hence, sustainable stock returns. Although investors' beliefs are usually unobservable, this study develops a new approach to estimate investors beliefs. Following well-established rational learning and market microstructure models, it is assumed that informed traders submit market orders according to their beliefs, whereas market makers/uninformed traders make Bayesian inferences about the informed traders' private signals after observing the total order flows. By fitting intraday transaction data to this model, we can estimate the daily belief uncertainties of informed and uninformed investors; this estimation is performed on S & P 500 stocks. The belief parameters estimated by this approach have incremental explanatory power to bid-ask spreads. The findings show that market makers' belief uncertainty plays a more important role in determining sustainable stock returns than informed traders'. Implications of these findings include: (a) the larger market maker group is influencing the market trends; (b) this dominant group is making decisions based on diverse types of data; and (c) increased understanding of the diversity of belief parameters may facilitate strategies to enhance sustainable returns, however, stock trading is still significantly influenced by emotive factors worthy of further research.

History

Publication Date

2019-10-11

Journal

Sustainability

Volume

11

Issue

20

Article Number

5600

Pagination

18p.

Publisher

Multidisciplinary Digital Publishing Institute

ISSN

2071-1050

Rights Statement

© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).

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