Relations among Bitcoin Futures, Bitcoin Spot, Investor Attention, and Sentiment

Author:

Narayanasamy Arun1ORCID,Panta Humnath2ORCID,Agarwal Rohit3

Affiliation:

1. Department of Finance, University of Northern Iowa, Cedar Falls, IA 50614, USA

2. School of Business, Cal Poly Humboldt, Arcata, CA 95519, USA

3. Department of Economics, Finance and Accounting, University of South Carolina Upstate, Spartanburg, SC 29303, USA

Abstract

This research investigates the function of price discovery between the Bitcoin futures and the spot markets while also analyzing the impact of investor sentiment and attention on these markets. This study utilizes various statistical models to examine the short-term and long-term relations between these variables, including the bivariate Granger causality model, the ARDL and NARDL models, and the Johansen cointegration procedure with a vector error correction mechanism. The results suggest that there is no statistical evidence of price discovery between the Bitcoin spot price and futures, and the term structure of the Bitcoin futures neither enriches nor impairs this lead lag relation. However, the study finds robust evidence of a long-run cointegrating relation between the two markets and the presence of asymmetry in them. Moreover, this research indicates that investor sentiment exhibits a lead lag relation with both the Bitcoin futures and the spot markets, while investor attention only leads to the Bitcoin spot market, without showing any lead lag relation with the Bitcoin futures. These findings highlight the crucial role of investor behavior in affecting both Bitcoin futures and spot prices.

Publisher

MDPI AG

Subject

Finance,Economics and Econometrics,Accounting,Business, Management and Accounting (miscellaneous)

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