Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
Next Article in Journal
Do We Need Trust Transfer Mechanisms? An M-Commerce Adoption Perspective
Previous Article in Journal
Methodical Aspects of MCDM Based E-Commerce Recommender System
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Down with the #Dogefather: Evidence of a Cryptocurrency Responding in Real Time to a Crypto-Tastemaker

Division of Resource Economics and Management, West Virginia University, Morgantown, WV 26506, USA
J. Theor. Appl. Electron. Commer. Res. 2021, 16(6), 2230-2240; https://doi.org/10.3390/jtaer16060123
Submission received: 13 August 2021 / Revised: 30 August 2021 / Accepted: 2 September 2021 / Published: 3 September 2021
(This article belongs to the Section Digital Marketing and the Connected Consumer)

Abstract

:
Recent research in cryptocurrencies has considered the effects of the behavior of individuals on the price of cryptocurrencies through actions such as social media usage. However, some celebrities have gone as far as affixing their celebrity to a specific cryptocurrency, becoming a crypto-tastemaker. One such example occurred in April 2021 when Elon Musk claimed via Twitter that “SpaceX is going to put a literal Dogecoin on the literal moon”. He later called himself the “Dogefather” as he announced that he would be hosting Saturday Night Live (SNL) on 8 May 2021. By performing sentiment analysis on relevant tweets during the time he was hosting SNL, evidence is found that negative perceptions of Musk’s performance led to a decline in the price of Dogecoin, which dropped 23.4% during the time Musk was on air. This shows that cryptocurrencies are affected in real time by the behaviors of crypto-tastemakers.
JEL Classification:
G41; G10

1. Introduction

The number of cryptocurrencies has grown rapidly over the past decade. With such diversity, choosing a specific cryptocurrency to use can be a daunting task, especially for more casual cryptocurrency users. While some users are concerned with price dynamics, others are concerned with the popularity of the cryptocurrency [1]. In fact, herding behavior in cryptocurrency markets has become a well documented phenomenon in the literature [2], and even cryptocurrencies such as Bitcoin are traded at least in part due to emotional cues [3].
Herding behavior occurs in cryptocurrency markets for many different reasons and is commonly observed during periods where higher levels of risk aversion are exhibited [4]. Herding behavior is particularly strong in smaller cryptocurrencies [5]. Such behavior is a market inefficiency and can lead to market destabilization, particularly in the case of smaller cryptocurrencies [6]. Combined with the effects of the ongoing COVID-19 global pandemic on cryptocurrency markets, the potential for market destabilization among smaller cryptocurrencies is only exacerbated [7]. It is important to note, however, that the choice of empirical framework can potentially impact whether or not evidence of herding is found [8].
On the other side of this phenomenon are the cryptocurrency tastemakers (crypto-tastemakers) who attach their notoriety to a particular cryptocurrency, advocating for its growth. There is evidence that social influences can affect cryptocurrencies [9]. However, current research on the impact of crypto-tastemakers is extremely limited, with no papers looking at the real time effects of the actions of a major celebrity on the price of a cryptocurrency to which the celebrity has affixed themselves as a crypto-tastemaker. The literature that does exist considers the impact of social media on cryptocurrencies, which, while extremely valuable, analyzes the impact of pre-planned, low risk activities such as sending a single Tweet, e.g., the impact of a president’s tweets on Bitcoin [10], predicting the price of a cryptocurrency using social media data [11,12], and predicting bubbles in cryptocurrency markets with social media data [13]. This is in contrast to what is studied in this paper, an extended period of heavily scrutinized, riskier actions performed live, for a public audience.
One recent example of a celebrity becoming a crypto-tastemaker is Elon Musk, who affixed his celebrity status to Dogecoin. On 1 April 2021, Elon Musk claimed via Twitter that “SpaceX is going to put a literal Dogecoin on the literal moon”. Shortly after making this hyperbolized claim, it was announced that Musk would be hosting the 8 May 2021 episode of Saturday Night Live (SNL). Musk confirmed this in a personal announcement on his Twitter account on 28 April 2021 in which he called himself the “Dogefather”. All of these specific examples of Musk’s Twitter activity are part of a much larger corpus of crypto-tastemaking, dating back to January 2021 when Musk starting giving Dogecoin attention on Twitter during the GameStop short squeeze [14]. Musk also went on to call Dogecoin mining “fun” in order to increase the popularity of the cryptocurrency [14].
Elon Musk makes for a great example of a crypto-tastemaker since he has been a public figure for decades, largely due to his business ventures and immense wealth. Moreover, during this time he has become a rather divisive figure. He has both an ardent core of followers and currently has 59.5 million followers on Twitter, but he also has many detractors as well—a common nickname for Musk (which appears hundreds of time in our data set) is “Muskrat”. This level of notoriety and divisiveness, along with his longstanding interest in cryptocurrencies, means that once Musk coupled his name to Dogecoin, he was indeed a crypto-tastemaker.
In this paper we test for evidence of the real time impact of the highly publicized actions of a crypto-tastemaker by performing sentiment analysis on real time data from twitter during the time that Musk was hosting SNL and finding its effect on the price of Dogecoin. Using standard VAR techniques, we document for the first time in the literature a definite instance of the price of a cryptocurrency responding in real time to the actions of a crypto-tastemaker. Specifically, we find that Elon Musk’s performance on SNL significantly and negatively affected the price of Dogecoin.

2. Dogecoin

Dogecoin is a cryptocurrency alternative to Bitcoin, or an altcoin, that was created in 2013 [15]. Originally created as a joke currency with a randomized reward for mining [14], for most of its history Dogecoin was a niche cryptocurrency that had some degree of cultural relevance due to the peculiarity of its name, but was not a target of significant investment [15]. Prior to 2021, the price of Dogecoin had never been above $0.02 [14]. The technical development of Dogecoin was also underwhelming, with the most recent consistent activity on its main branch on GitHub as of the writing of Young [15] occurring in 2015 (the rise in popularity experienced by Dogecoin in 2021 has led to renewed development, per the commit history found at https://github.com/dogecoin accessed on 13 August 2021). However, Dogecoin users have performed some noteworthy, attention grabbing events including sponsoring an American stock car race in 2013 and the Jamaican bobsled team in the 2014 Winter Olympics [15].
Functionally, Dogecoin is based on the Scrypt algorithm and is a derivative of Litecoin, another cryptocurrency derived from Bitcoin [15]. However, unlike Bitcoin and most other cryptocurrencies, there is no limit to the amount of Dogecoin that can theoretically exist [15]. Consequentially, mining Dogecoin remains a quicker and easier process than mining other cryptocurrencies.
From a research perspective, Dogecoin remains essentially unstudied in the literature. This is likely due to its effective irrelevance as a potential investment prior to 2021. In fact, in the case of this paper, Dogecoin is studied not for anything intrinsic to Dogecoin itself, but rather for the fact that a crypto-tastemaker affixed themselves to Dogecoin.

3. Data and Methodology

The ultimate goal of this paper is to test whether the price of Dogecoin responded in real time to the public perception of Musk’s performance on SNL using a standard vector autoregression (VAR) approach. To do this, we need data on the price of Dogecoin as well as a measure of the public perception of Musk’s performance. While the former data set is easily obtained, in this case from CoinDesk.com, the latter data requires some effort to obtain. Twitter is an excellent source of public opinions and tweets are widely used in the quantitative social sciences, e.g., [16,17,18,19], thus we will use data collected from Twitter as the basis for measuring public opinion of Musk’s performance.
To create the final data on the public’s perception of Musk’s performance, two primary steps were performed. First, relevant tweets from the time period of Musk’s performance must be collected from Twitter. A window of one hour before and after the event was included in our sample to account for delayed responses since there was no a prioi knowledge of the lag time from trade-causing-opinion to the trade itself. Tweets containing any of the following key words as text, hashtags, and/or cashtags were collected: {SNL, SNLmay8, Dogefather, tothemoon, Elon, Musk, Dogecoinrise, Doge, Dogecoin}. Once these tweets were collected, sentiment analysis was performed on the tweets.
Sentiment analysis is a form of textual analysis which assigns quantitative values to subjective statements [20]. Positive values are assigned to tweets with a positive opinion, and negative values are assigned to tweets with a negative opinion. In our case, whenever Musk’s performance was well received by the public we obtain positive scores from sentiment analysis, while poorly received portions of Musk’s performance received negative scores from sentiment analysis. To obtain these scores, individual tweets were assigned their own, unique score using the nltk module in Python.
Once every tweet had been assigned a score via sentiment analysis, two time series measuring the overall public perception of the performance were created—one for positive opinions and one for negative opinions—by aggregating the tweets during each minute of the performance. The rationale for the two distinct times series is that positive and negative opinions may have asymmetric affects on the price of Dogecoin. Asymmetric effects in time series regressions have proven significant in many cases, e.g., [21,22,23,24]. In our case, risk averse investors/users of Dogecoin may sell their holdings if they fear that a poor performance by Musk is actively lowering the price of Dogecoin, but positive opinions of Musk’s performance may have a more muted positive effect. Furthermore, by aggregating all tweets during each minute of the event, we allow for a weighted time series where larger magnitudes for the positive and negative sentiment analysis scores indicate a greater degree of public consensus regarding the performance. The granularity of one minute intervals was chosen because this matches the frequency of the price data for Dogecoin obtained from CoinDesk.com. Summary statistics of the three time series are presented in Table 1 and the three times series are plotted together in Figure 1.
As can be seen in Figure 1, the general trends of positive and negative sentiment were similar. Twitter activity pertaining to Musk’s performance spiked just as the episode began to air, reaching a peak around 15 min into the episode. From there, a steady decline in both positive and negative sentiment, driven by a decrease in the volume of tweets pertaining to Musk’s performance, was observed. A small spike in both positive and negative sentiment occurs shortly after the conclusion of the episode, likely driven by summary reviews of the episode, but once the episode had finished airing, the volume of tweets steadily declined to pre-episode levels. The sharp, early decline in the price of Dogecoin, a loss which was never recouped, coincides with the outburst of opinions on Twitter pertaining to Musk’s performance on SNL.
Finally, to run the VAR, we first-difference the data to transform the times series and ensure that they are stationary. As can be seen in Figure 1, the original time series are clearly non-stationary. Augmented Dickey-Fuller tests confirmed that the three first-differenced time series are indeed stationary. Once the time series were first-differenced, the optimal lag length for VAR was determined to be 15 periods (minutes). Once the optimal lag length was determined, VAR was performed. The VAR model takes the standard specification in vector notation found in Equation (1) where p = 15 is the optimal lag length.
Y t = a + k = 1 p Φ k Y t k + ϵ t

4. Results and Discussion

Predicting the price of cryptocurrencies, even established ones such as Bitcoin, is no easy feat. From a pure predictive standpoint, myriad machine learning techniques have been applied to this problem with only limited success [25]. Data from social media have been used to aid in this endeavor in various forms including search trends data [26] and sentiment analysis performed on developers comments [27]. However, these types of studies have historically relied on discrete events such as tweets by a crypto-tastemaker, or have used more continuous data from groups of people rather than from individual crypto-tastemakers. This rule extends to causal inference settings as well, e.g., [28].
The VAR results indicate that increases in the magnitude of negative public perception of Musk’s performance had a negative effect on the price of Dogecoin. This can be seen in the upper-rightmost subplot in the cumulative effects plot from our VAR in Figure 2. Changes in the positive public perception of Musk’s performance had no significant long run effect on the price of Dogecoin. Full VAR results can be found in Table A1, Table A2 and Table A3, along with the corresponding impulse response function plots and autocorrelation plots in Figure A1 and Figure A2, respectively.
Looking at the impulse response functions, we see that negative sentiment had a delayed but significant effect on the price of Dogecoin. There was a steady decline in the impulse response function from 5 min to 12 min, and this effect can also be seen in the point estimates from the VAR model for the price of Dogecoin, where the lagged values of negative sentiment for 11 and 12 lags (L11 Negative Sentiment and L12 Negative Sentiment) were negative and statistically significant (Table A1). What this shows is evidence that increases in negative sentiment led to Dogecoin users selling their holdings. Trades began to be finalized in earnest approximately five minutes after an event occurred that led to an increase in negative sentiment, and this behavior continued until the cumulative effect of these sales led to a statistically significant decrease in the price of Dogecoin, occurring approximately at the 12 min mark.
These results indicate that investors/users of cryptocurrencies who are interested in the popularity of the cryptocurrency are influenced by the actions of crypto-tastemakers, but that crypto-tastemakers, once thoroughly affixed to a specific cryptocurrency, may only be able to harm the popularity of the coin. Given the fact that this is the first such study, it is possible that a “better performance” (perhaps, e.g., a humanitarian action involving a crypto-tastemaker or a more convincing performance on SNL) could have a positive effect on the price of that cryptocurrency. However, it is entirely possible that when a crypto-tastemaker affixes themselves to a cryptocurrency, that cryptocurrency enters a high risk, low reward state.
This is different than some previous, related results on cryptocurrencies, such as [29] who found that Bitcoin responded positively to unscheduled news, whether that news was positive or negative. However, our results do align with [30] who found that certain news from authorities led to declines and increased volatility in cryptocurrency markets in the largest cryptocurrency exchange in China.
Granger causality testing confirms that changes in the level of aggregate negative sentiment Granger-causes changes in the level of the price of Dogecoin, but no other instances of Granger causality exist in this study.
Finally, a stability analysis shows that the results are indeed stable. The roots of the characteristic polynomial of the VAR are presented in Figure A3 and are clearly all within the unit circle, a sufficient condition for stability.

5. Conclusions

Cryptocurrencies are used in part based on their popularity; this much is an observed reality of cryptocurrencies. Consequentially, cryptocurrencies are being endorsed by crypto-tastemakers. This analysis has shown for the first time that cryptocurrency price dynamics are subject to the real time behaviors of a crypto-tastemaker. Since less mature cryptocurrencies are more likely to be influenced by a crypto-tastemaker, this suggests that less mature cryptocurrencies may have a more complex nature to their price variance. Future research on the relationship between cryptocurrencies and crypto-tastemakers should investigate the direct impact of crypto-tastemakers on the volatility of cryptocurrencies, and if there are spillover effects across cryptocurrencies due to the action of crypto-tastemakers.

Funding

This research received no external funding.

Data Availability Statement

Final data for the econometric analyses and code for this project is available at: https://github.com/cat-astrophic/dogefather accessed on 13 August 2021. The raw twitter data set is not stored in the repository due to its size, but it is available from the author upon request.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A. VAR Results

Figure A1. The impulse response function plots from the VAR.
Figure A1. The impulse response function plots from the VAR.
Jtaer 16 00123 g0a1
Table A1. VAR results for the regressions on the price of Dogecoin. Optimal lag length was selected using a built in function in the VAR submodule of the statsmodels module in Python. Lx before a variable name denotes that a variable was lagged × times.
Table A1. VAR results for the regressions on the price of Dogecoin. Optimal lag length was selected using a built in function in the VAR submodule of the statsmodels module in Python. Lx before a variable name denotes that a variable was lagged × times.
VariableCoefficientStd. Err.t-Statp
Constant−0.00030.0007−0.44810.6541
L1 Price−0.05650.0811−0.69700.4858
L1 Positive Sentiment−0.04440.1131−0.39240.6947
L1 Negative Sentiment−0.13380.1489−0.89850.3689
L2 Price−0.04260.0767−0.55540.5787
L2 Positive Sentiment0.23650.11082.13410.0328
L2 Negative Sentiment−0.15370.1534−1.00180.3165
L3 Price−0.03640.0783−0.46520.6418
L3 Positive Sentiment−0.03580.1132−0.31640.7517
L3 Negative Sentiment0.06800.15480.43950.6603
L4 Price−0.18870.0786−2.39930.0164
L4 Positive Sentiment0.25580.11092.30640.0211
L4 Negative Sentiment−0.19710.1614−1.22080.2221
L5 Price−0.02500.080−0.31310.7542
L5 Positive Sentiment−0.02530.1160−0.21810.8273
L5 Negative Sentiment0.00610.16370.03750.9701
L6 Price−0.05420.0753−0.71910.4721
L6 Positive Sentiment−0.14380.1207−1.19180.2334
L6 Negative Sentiment0.14670.16140.90930.3632
L7 Price−0.04980.0778−0.63960.5224
L7 Positive Sentiment−0.07090.1213−0.58440.5590
L7 Negative Sentiment−0.06120.1615−0.37890.7047
L8 Price−0.12690.0761−1.66780.0954
L8 Positive Sentiment−0.19350.1207−1.60280.1090
L8 Negative Sentiment−0.06230.1615−0.38590.6996
L9 Price0.04760.07660.62170.5341
L9 Positive Sentiment0.09150.12140.75370.4510
L9 Negative Sentiment−0.01430.1597−0.08970.9285
L10 Price0.07420.07850.94490.3447
L10 Positive Sentiment−0.12830.1166−1.10020.2712
L10 Negative Sentiment−0.21740.1576−1.37950.1678
L11 Price0.07610.07860.96810.3330
L11 Positive Sentiment0.01180.11530.10250.9183
L11 Negative Sentiment−0.25610.1550−1.65210.0985
L12 Price−0.04010.0779−0.51440.6069
L12 Positive Sentiment0.08120.11340.71650.4737
L12 Negative Sentiment−0.25350.1523−1.66410.0961
L13 Price0.08250.07971.03500.3007
L13 Positive Sentiment−0.13460.1113−1.20990.2263
L13 Negative Sentiment−0.13520.1476−0.91570.3598
L14 Price0.03050.07850.38860.6976
L14 Positive Sentiment−0.39950.1120−3.56700.0004
L14 Negative Sentiment−0.01980.1447−0.13690.8911
L15 Price0.11950.07931.50710.1318
L15 Positive Sentiment0.12680.11781.07660.2817
L15 Negative Sentiment−0.24410.1429−1.70830.0876
Table A2. VAR results for the regressions on aggregate positive sentiment. Optimal lag length was selected using a built in function in the VAR submodule of the statsmodels module in Python. Lx before a variable name denotes that a variable was lagged × times.
Table A2. VAR results for the regressions on aggregate positive sentiment. Optimal lag length was selected using a built in function in the VAR submodule of the statsmodels module in Python. Lx before a variable name denotes that a variable was lagged × times.
VariableCoefficientStd. Err.t-Statp
Constant0.00020.00060.41400.6789
L1 Price−0.04620.0667−0.69180.4891
L1 Positive Sentiment−0.13330.0930−1.43320.1518
L1 Negative Sentiment0.38320.12263.12680.0018
L2 Price0.16050.06312.54310.0110
L2 Positive Sentiment−0.17730.0912−1.94410.0519
L2 Negative Sentiment0.29090.12622.30520.0212
L3 Price−0.09910.0644−1.53860.1239
L3 Positive Sentiment−0.16360.0932−1.75530.0792
L3 Negative Sentiment0.34280.12742.69130.0071
L4 Price0.13090.06472.02330.0430
L4 Positive Sentiment0.28630.09133.13800.0017
L4 Negative Sentiment0.06170.13280.46460.6422
L5 Price0.06970.06581.05970.2893
L5 Positive Sentiment−0.24380.0954−2.55430.0106
L5 Negative Sentiment0.18940.13471.40550.1599
L6 Price0.11460.06201.84880.0645
L6 Positive Sentiment−0.12250.0993−1.23320.2175
L6 Negative Sentiment0.22410.13281.68810.0914
L7 Price−0.03690.0640−0.57580.5648
L7 Positive Sentiment−0.10040.0998−1.00620.3143
L7 Negative Sentiment0.14670.13291.10350.2698
L8 Price−0.04590.0626−0.73360.4632
L8 Positive Sentiment−0.13020.0993−1.31040.1900
L8 Negative Sentiment−0.01090.1329−0.08180.9348
L9 Price−0.08350.0630−1.32520.1851
L9 Positive Sentiment−0.04790.0999−0.47970.6314
L9 Negative Sentiment−0.24190.1314−1.84050.0657
L10 Price0.00160.06460.02430.9806
L10 Positive Sentiment−0.19760.0960−2.05890.0395
L10 Negative Sentiment−0.06000.1297−0.46260.6437
L11 Price−0.06240.0647−0.96450.3348
L11 Positive Sentiment−0.06800.0949−0.71670.4735
L11 Negative Sentiment0.05410.12750.42410.6715
L12 Price0.16590.06412.58620.0097
L12 Positive Sentiment0.11250.09331.20600.2278
L12 Negative Sentiment−0.06330.1253−0.50500.6136
L13 Price−0.03380.0656−0.51560.6061
L13 Positive Sentiment−0.09020.0916−0.98550.3244
L13 Negative Sentiment0.22460.12151.84850.0645
L14 Price0.16690.06462.58410.0098
L14 Positive Sentiment0.18570.09212.01570.0438
L14 Negative Sentiment−0.11160.1191−0.93690.3488
L15 Price0.11640.06531.78310.0746
L15 Positive Sentiment0.01730.09690.17830.8585
L15 Negative Sentiment−0.06980.1176−0.59380.5527
Table A3. VAR results for the regressions on aggregate negative sentiment. Optimal lag length was selected using a built in function in the VAR submodule of the statsmodels module in Python. Lx before a variable name denotes that a variable was lagged × times.
Table A3. VAR results for the regressions on aggregate negative sentiment. Optimal lag length was selected using a built in function in the VAR submodule of the statsmodels module in Python. Lx before a variable name denotes that a variable was lagged × times.
VariableCoefficientStd. Err.t-Statp
Constant0.00010.00040.20790.8353
L1 Price−0.12880.0499−2.58030.0099
L1 Positive Sentiment−0.10700.0696−1.53590.1246
L1 Negative Sentiment0.00330.09170.03650.9709
L2 Price0.09800.04722.07620.0379
L2 Positive Sentiment−0.16510.0682−2.41970.0155
L2 Negative Sentiment0.11670.09451.23530.2167
L3 Price−0.05890.0482−1.22070.2222
L3 Positive Sentiment0.02190.06970.31430.7533
L3 Negative Sentiment−0.11590.0953−1.21630.2239
L4 Price0.06110.04841.26240.2068
L4 Positive Sentiment0.25210.06833.69140.0002
L4 Negative Sentiment−0.16340.0994−1.64320.1003
L5 Price−0.00910.0493−0.18530.8530
L5 Positive Sentiment0.07320.07141.02470.3055
L5 Negative Sentiment0.09680.10080.96040.3368
L6 Price0.15430.04643.32510.0009
L6 Positive Sentiment0.08280.07431.11420.2652
L6 Negative Sentiment−0.09410.0994−0.94720.3435
L7 Price−0.00230.0479−0.04890.9610
L7 Positive Sentiment0.04960.07470.66400.5067
L7 Negative Sentiment0.09190.09950.92370.3557
L8 Price−0.02790.0469−0.59600.5512
L8 Positive Sentiment−0.03650.0743−0.49140.6232
L8 Negative Sentiment−0.01700.0995−0.17090.8643
L9 Price−0.16170.0472−3.42950.0006
L9 Positive Sentiment0.05260.07480.70290.4821
L9 Negative Sentiment−0.24340.0984−2.47420.0134
L10 Price−0.05010.0484−1.03580.3003
L10 Positive Sentiment−0.10800.0718−1.50320.1328
L10 Negative Sentiment−0.13460.0971−1.38680.1655
L11 Price0.04590.04840.94780.3432
L11 Positive Sentiment0.01010.07100.14210.8870
L11 Negative Sentiment0.01890.09550.19850.8427
L12 Price0.11470.04802.39080.0168
L12 Positive Sentiment0.07290.06981.04390.2965
L12 Negative Sentiment−0.08680.0938−0.92530.3548
L13 Price−0.06090.0491−1.24040.2148
L13 Positive Sentiment−0.04240.0685−0.61820.5365
L13 Negative Sentiment0.04770.09090.52410.6002
L14 Price0.04620.04830.95680.3387
L14 Positive Sentiment0.14190.06902.05820.0396
L14 Negative Sentiment0.01790.08910.20110.8406
L15 Price0.08710.04881.78320.0745
L15 Positive Sentiment−0.12900.0725−1.77750.0755
L15 Negative Sentiment−0.03070.0880−0.34850.7275
Figure A2. The autocorrelation plots from the VAR.
Figure A2. The autocorrelation plots from the VAR.
Jtaer 16 00123 g0a2
Figure A3. This plot shows the unit roots from the VAR characteristic polynomial. Since all unit roots lie inside the unit circle (in red), the VAR process is stable.
Figure A3. This plot shows the unit roots from the VAR characteristic polynomial. Since all unit roots lie inside the unit circle (in red), the VAR process is stable.
Jtaer 16 00123 g0a3

References

  1. Al Shehhi, A.; Oudah, M.; Aung, Z. Investigating factors behind choosing a cryptocurrency. In Proceedings of the 2014 IEEE International Conference on Industrial Engineering and Engineering Management, Selangor, Malaysia, 9–12 December 2014; pp. 1443–1447. [Google Scholar]
  2. Bouri, E.; Gupta, R.; Roubaud, D. Herding behaviour in cryptocurrencies. Financ. Res. Lett. 2019, 29, 216–221. [Google Scholar] [CrossRef]
  3. Ahn, Y.; Kim, D. Emotional trading in the cryptocurrency market. Financ. Res. Lett. 2020, 101912. [Google Scholar] [CrossRef]
  4. Da Gama Silva, P.V.J.; Klotzle, M.C.; Pinto, A.C.F.; Gomes, L.L. Herding behavior and contagion in the cryptocurrency market. J. Behav. Exp. Financ. 2019, 22, 41–50. [Google Scholar] [CrossRef]
  5. Vidal-Tomás, D.; Ibáñez, A.M.; Farinós, J.E. Herding in the cryptocurrency market: CSSD and CSAD approaches. Financ. Res. Lett. 2019, 30, 181–186. [Google Scholar] [CrossRef]
  6. Kallinterakis, V.; Wang, Y. Do investors herd in cryptocurrencies–and why? Res. Int. Bus. Financ. 2019, 50, 240–245. [Google Scholar] [CrossRef]
  7. Vidal-Tomás, D. Transitions in the cryptocurrency market during the COVID-19 pandemic: A network analysis. Financ. Res. Lett. 2021, 101981. [Google Scholar] [CrossRef]
  8. Stavroyiannis, S.; Babalos, V. Herding behavior in cryptocurrencies revisited: Novel evidence from a TVP model. J. Behav. Exp. Financ. 2019, 22, 57–63. [Google Scholar] [CrossRef]
  9. Aggarwal, G.; Patel, V.; Varshney, G.; Oostman, K. Understanding the social factors affecting the cryptocurrency market. arXiv 2019, arXiv:1901.06245. [Google Scholar]
  10. Huynh, T.L.D. Does Bitcoin React to Trump’s Tweets? J. Behav. Exp. Financ. 2021, 31, 100546. [Google Scholar] [CrossRef]
  11. Lamon, C.; Nielsen, E.; Redondo, E. Cryptocurrency price prediction using news and social media sentiment. SMU Data Sci. Rev. 2017, 1, 1–22. [Google Scholar]
  12. Philippas, D.; Rjiba, H.; Guesmi, K.; Goutte, S. Media attention and Bitcoin prices. Financ. Res. Lett. 2019, 30, 37–43. [Google Scholar] [CrossRef]
  13. Phillips, R.C.; Gorse, D. Predicting cryptocurrency price bubbles using social media data and epidemic modelling. In Proceedings of the 2017 IEEE Symposium Series on Computational Intelligence (SSCI), Honolulu, HI, USA, 27 November–1 December 2017; pp. 1–7. [Google Scholar]
  14. Chohan, U.W. A History of Dogecoin. Discussion Series: Notes on the 21st Century. 2017. Available online: https://ssrn.com/abstract=3091219 (accessed on 13 August 2021).
  15. Young, I. Dogecoin: A Brief Overview & Survey. 2018. Available online: https://ssrn.com/abstract=3306060 (accessed on 13 August 2021).
  16. Ante, L. How Elon Musk’s Twitter Activity Moves Cryptocurrency Markets. 2021. Available online: https://ssrn.com/abstract=3778844 (accessed on 13 August 2021).
  17. López, M.; Sicilia, M.; Moyeda-Carabaza, A.A. Creating identification with brand communities on Twitter: The balance between need for affiliation and need for uniqueness. Internet Res. 2017, 27, 21–51. [Google Scholar] [CrossRef]
  18. Saura, J.R.; Reyes-Menéndez, A.; deMatos, N.; Correia, M.B. Identifying Startups Business Opportunities from UGC on Twitter Chatting: An Exploratory Analysis. J. Theor. Appl. Electron. Commer. Res. 2021, 16, 1929–1944. [Google Scholar] [CrossRef]
  19. Mohammadi, A.; Hashemi Golpayegani, S.A. SenseTrust: A Sentiment Based Trust Model in Social Network. J. Theor. Appl. Electron. Commer. Res. 2021, 16, 2031–2050. [Google Scholar] [CrossRef]
  20. Liu, B. Sentiment analysis and subjectivity. Handb. Nat. Lang. Process. 2010, 2, 627–666. [Google Scholar]
  21. Maiti, M.; Vyklyuk, Y.; Vuković, D. Cryptocurrencies chaotic co-movement forecasting with neural networks. Internet Technol. Lett. 2020, 3, e157. [Google Scholar] [CrossRef]
  22. Maiti, M.; Grubisic, Z.; Vukovic, D.B. Dissecting Tether’s Nonlinear Dynamics during Covid-19. J. Open Innov. Technol. Mark. Complex. 2020, 6, 161. [Google Scholar] [CrossRef]
  23. Vukovic, D.; Maiti, M.; Grubisic, Z.; Grigorieva, E.M.; Frömmel, M. COVID-19 Pandemic: Is the Crypto Market a Safe Haven? The Impact of the First Wave. Sustainability 2021, 13, 8578. [Google Scholar] [CrossRef]
  24. Yue, W.; Zhang, S.; Zhang, Q. Asymmetric news effects on cryptocurrency liquidity: An Event study perspective. Financ. Res. Lett. 2021, 41, 101799. [Google Scholar] [CrossRef]
  25. Ortu, M.; Uras, N.; Conversano, C.; Destefanis, G.; Bartolucci, S. On Technical Trading and Social Media Indicators in Cryptocurrencies’ Price Classification Through Deep Learning. arXiv 2021, arXiv:2102.08189. [Google Scholar]
  26. Matta, M.; Lunesu, I.; Marchesi, M. Bitcoin Spread Prediction Using Social and Web Search Media. In Proceedings of the UMAP 2015—23rd Conference on User Modeling, Adaptation and Personalization, Dublin, Ireland, 29 June 2015–3 July 2015; pp. 1–10. [Google Scholar]
  27. Bartolucci, S.; Destefanis, G.; Ortu, M.; Uras, N.; Marchesi, M.; Tonelli, R. The Butterfly “Affect”: Impact of development practices on cryptocurrency prices. EPJ Data Sci. 2020, 9, 21. [Google Scholar] [CrossRef]
  28. Mai, F.; Shan, Z.; Bai, Q.; Wang, X.; Chiang, R.H. How does social media impact Bitcoin value? A test of the silent majority hypothesis. J. Manag. Inf. Syst. 2018, 35, 19–52. [Google Scholar] [CrossRef]
  29. Rognone, L.; Hyde, S.; Zhang, S.S. News sentiment in the cryptocurrency market: An empirical comparison with Forex. Int. Rev. Financ. Anal. 2020, 69, 101462. [Google Scholar] [CrossRef]
  30. Zhang, S.; Zhou, X.; Pan, H.; Jia, J. Cryptocurrency, confirmatory bias and news readability–evidence from the largest Chinese cryptocurrency exchange. Account. Financ. 2019, 58, 1445–1468. [Google Scholar] [CrossRef]
Figure 1. The three time series. The price of Dogecoin is measured in USD on the left hand axis while the positive and negative sentiment scores are measured in aggregate values on the right hand axis. The x axis represents time relative to the start of the episode, and the two vertical black lines denote the start and end of the episode.
Figure 1. The three time series. The price of Dogecoin is measured in USD on the left hand axis while the positive and negative sentiment scores are measured in aggregate values on the right hand axis. The x axis represents time relative to the start of the episode, and the two vertical black lines denote the start and end of the episode.
Jtaer 16 00123 g001
Figure 2. Cumulative effects plots from VAR.
Figure 2. Cumulative effects plots from VAR.
Jtaer 16 00123 g002
Table 1. Summary statistics of the three time series. The negative sentiment scores are in absolute value for convenience of use/interpretation.
Table 1. Summary statistics of the three time series. The negative sentiment scores are in absolute value for convenience of use/interpretation.
Time SeriesMeanSDMinMax
Price of Dogecoin in USD0.5840.0540.4710.700
Total Positive Sentiment29.6737.584.79188.35
Total Negative Sentiment25.2330.752.7399.53
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Cary, M. Down with the #Dogefather: Evidence of a Cryptocurrency Responding in Real Time to a Crypto-Tastemaker. J. Theor. Appl. Electron. Commer. Res. 2021, 16, 2230-2240. https://doi.org/10.3390/jtaer16060123

AMA Style

Cary M. Down with the #Dogefather: Evidence of a Cryptocurrency Responding in Real Time to a Crypto-Tastemaker. Journal of Theoretical and Applied Electronic Commerce Research. 2021; 16(6):2230-2240. https://doi.org/10.3390/jtaer16060123

Chicago/Turabian Style

Cary, Michael. 2021. "Down with the #Dogefather: Evidence of a Cryptocurrency Responding in Real Time to a Crypto-Tastemaker" Journal of Theoretical and Applied Electronic Commerce Research 16, no. 6: 2230-2240. https://doi.org/10.3390/jtaer16060123

Article Metrics

Back to TopTop