A Fractal View on Losses Attributable to Scams in the Market for Initial Coin Offerings
Abstract
:1. Introduction
2. Data
2.1. Retrieving Data for ICO Scams
2.2. Identifying Scams in the ICO Market
2.3. Clustering Scams in the ICO Market
3. Statistical Analysis
3.1. Descriptive Statistics
3.2. What Statistical Information Resides in the Tails? Evidence from Extreme Value Theory (EVT)
3.3. What Information Resides in the Parent Distribution? Evidence from Power Laws
3.4. What Are the Implications?
4. Conclusions and Implications
4.1. Conclusions
4.2. Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
No. | S.No/Name | ICO.Rating.Hype.Score | ICO.Rating.Risk.Score | Raised.USD |
---|---|---|---|---|
1 | Petro | Low | Very High | 735,000,000 |
2 | Pincoin | Low | NotRated | 660,000,000 |
3 | TaTaTu | Medium | NotRated | 575,000,000 |
4 | filecoin | High | Low | 257,000,000 |
5 | Tezos | Medium | NotRated | 232,000,000 |
6 | Polymath | Very High | NotRated | 207,326,000 |
7 | SIRINLABS | Very High | Low | 157,886,000 |
8 | Bankera | Very High | Low | 151,800,000 |
9 | Neluns | Medium | NotRated | 136,000,000 |
10 | Orbs | Medium | NotRated | 118,000,000 |
11 | Envion | High | High | 100,000,000 |
12 | Comsa | Medium | Medium | 95,000,000 |
13 | OKOIN | Low | High | 80,000,000 |
14 | Tenx | High | Low | 80,000,000 |
15 | Flashmoni | Low | Medium | 72,000,000 |
16 | bankex | High | Low | 70,600,000 |
17 | Hycon | Medium | NotRated | 68,000,000 |
18 | Zeepin | High | NotRated | 62,600,000 |
19 | ACChain | Very High | Very High | 60,000,000 |
20 | WPP | High | High | 59,780,000 |
21 | Tron | Low | Medium | 58,098,000 |
22 | Elastos | High | NotRated | 57,891,000 |
23 | Alchemy | Medium | High | 57,000,000 |
24 | MobileGo | Medium | NotRated | 53,000,000 |
25 | Nexo | Medium | NotRated | 52,500,000 |
26 | Neuromation | High | Medium | 51,835,000 |
27 | Crypterium | High | Medium | 51,657,000 |
28 | Swissborg | High | Medium | 50,890,000 |
29 | Odyssey | Medium | High | 50,000,000 |
30 | savedroid | Medium | High | 50,000,000 |
31 | BlockStack | Medium | Low | 50,000,000 |
32 | Celsius | Very High | Medium | 50,000,000 |
33 | HybridBlock | High | Medium | 47,830,000 |
34 | GoNetwork | High | Medium | 46,790,000 |
35 | iungo | High | NotRated | 45,979,000 |
36 | NAGACoin | Medium | Very High | 45,319,000 |
37 | Loopring | High | Medium | 45,000,000 |
38 | ArcBlock | High | Medium | 45,000,000 |
39 | Fresco | Low | High | 45,000,000 |
40 | indahash | High | Low | 42,716,000 |
41 | Fusion | Medium | Medium | 42,200,000 |
42 | Consentium | Medium | High | 42,000,000 |
43 | SONM | High | NotRated | 42,000,000 |
44 | Finom | Medium | Medium | 41,285,000 |
45 | Electroneum | Medium | Low | 40,000,000 |
46 | Datawallet | High | Low | 40,000,000 |
47 | Yggdrash | Medium | High | 40,000,000 |
48 | Hurify | Medium | Low | 40,000,000 |
49 | WePower | High | Medium | 40,000,000 |
50 | FANTOM | High | Medium | 39,400,000 |
51 | 0chain | Medium | NotRated | 39,000,000 |
52 | Stellar | High | NotRated | 39,000,000 |
53 | Ripio | Medium | NotRated | 37,800,000 |
54 | Crypto20 | High | Medium | 37,698,000 |
55 | Kelta | Medium | High | 37,378,000 |
56 | MoneyToken | High | Very High | 37,189,000 |
57 | Monetha | High | Very Low | 37,000,000 |
58 | Wanchain | High | Low | 35,658,000 |
59 | PundiX | High | NotRated | 35,000,000 |
60 | Agrello | High | Medium | 35,000,000 |
61 | BasicAttentionToken | Very High | NotRated | 35,000,000 |
62 | SHIVOM | High | Medium | 35,000,000 |
63 | stox | High | Medium | 33,000,000 |
64 | BackToTheFuture | Medium | Medium | 33,000,000 |
65 | Civic | High | NotRated | 33,000,000 |
66 | SingularityNET | High | NotRated | 32,848,000 |
67 | JET8 | Medium | Medium | 32,700,000 |
68 | Qlink | Low | Low | 32,000,000 |
69 | Polybius | Medium | NotRated | 31,000,000 |
70 | CyberMiles | Very High | Medium | 30,882,000 |
71 | STORMToken | High | Medium | 30,716,000 |
72 | Play2Live | Medium | Low | 30,000,000 |
73 | ShipChain | High | NotRated | 30,000,000 |
74 | DigitalTicks | Medium | NotRated | 30,000,000 |
75 | havven | Medium | Medium | 30,000,000 |
76 | JioCoin | Low | High | 30,000,000 |
77 | Fitrova | Low | NotRated | 29,028,000 |
78 | Faceter | Medium | Low | 28,610,000 |
79 | Universa | High | Low | 28,559,000 |
80 | AirCoin | Low | NotRated | 27,988,000 |
81 | Refereum | High | Low | 27,800,000 |
82 | SentinelProtocol | High | Medium | 27,700,000 |
83 | Eidoo | Medium | NotRated | 27,423,000 |
84 | AION | High | NotRated | 27,000,000 |
85 | OmiseGO | Medium | NotRated | 27,000,000 |
86 | UserVice | Medium | High | 26,893,000 |
87 | Monaco | Medium | Low | 26,700,000 |
88 | Pchain | Medium | NotRated | 26,674,000 |
89 | SENSE | Medium | Medium | 26,000,000 |
90 | PowerLedger | High | Medium | 26,000,000 |
91 | Essentia | Very High | Medium | 25,500,000 |
92 | Aitheon | Medium | NotRated | 25,353,000 |
93 | Bitdepositary | Low | NotRated | 25,000,000 |
94 | Storiqa | High | Low | 25,000,000 |
95 | APEX | Medium | NotRated | 25,000,000 |
96 | Atonomi | High | Low | 25,000,000 |
97 | Madnetwork | Low | Medium | 25,000,000 |
98 | Telcoin | Medium | Medium | 25,000,000 |
99 | Tierion | Medium | Low | 25,000,000 |
100 | AELF | High | NotRated | 24,750,000 |
101 | InterValue | Low | NotRated | 24,500,000 |
102 | Aeternity | Medium | NotRated | 24,427,000 |
103 | ParkGene | Medium | Low | 24,335,000 |
104 | 0xProject | Medium | Medium | 24,000,000 |
105 | Decentraland | Medium | Medium | 24,000,000 |
106 | Egretia | High | Low | 23,650,000 |
107 | CrowdMachine | High | Medium | 23,606,000 |
108 | SophiaTX | High | Medium | 23,470,000 |
109 | NeuroChain | Medium | Low | 23,400,000 |
110 | mandala | High | NotRated | 22,752,000 |
111 | Foresting | Low | NotRated | 22,734,000 |
112 | KYC.LEGAL | Low | NotRated | 22,500,000 |
113 | OriginTrail | Very High | Medium | 22,500,000 |
114 | THEKEY | Medium | NotRated | 22,000,000 |
115 | Midex | Medium | Medium | 22,000,000 |
Appendix B
S.No. | ScamType/Year | 2016 | 2017 | 2018 | 2019 | No.ICOs | %Count | RaisedUSD(B) | %Amount |
---|---|---|---|---|---|---|---|---|---|
1 | Premine | 0 | 2 | 3 | 0 | 5 | 0.8700 | 0.048 | 0.47 |
2 | Porn | 0 | 1 | 4 | 1 | 6 | 1.0400 | 0.031 | 0.31 |
3 | Website | 0 | 5 | 4 | 1 | 10 | 1.7400 | 0.179 | 1.77 |
4 | Ponzi | 1 | 4 | 4 | 2 | 11 | 1.9100 | 3.874 | 1.13 |
5 | PumpNdump | 0 | 5 | 7 | 0 | 12 | 2.0800 | 0.198 | 1.96 |
6 | Plagiarised | 0 | 4 | 9 | 0 | 13 | 2.2600 | 0.222 | 2.20 |
7 | Exchange | 0 | 1 | 11 | 1 | 13 | 2.2600 | 0.056 | 0.56 |
8 | Airdrop | 1 | 8 | 6 | 0 | 15 | 2.6000 | 0.862 | 8.52 |
9 | Previous | 0 | 14 | 34 | 3 | 51 | 8.8500 | 0.421 | 4.16 |
10 | Exit | 0 | 12 | 41 | 2 | 55 | 9.5500 | 1.487 | 14.70 |
11 | Bounty | 1 | 8 | 51 | 2 | 62 | 10.7600 | 0.651 | 6.43 |
12 | Fake | 0 | 24 | 36 | 4 | 64 | 11.1100 | 0.553 | 5.46 |
13 | PhishingNfraud | 0 | 54 | 101 | 7 | 162 | 28.1300 | 2.226 | 22.00 |
Listed by third parties | 1 | 33 | 61 | 2 | 97 | 16.8400 | 3.07 | 30.34 | |
Total | 576 | 100.00 | 10.119 | 100.00 |
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Metric | Scam ICOs |
---|---|
Mean | 17,572,118 |
Median | 6,834,500 |
Maximum | 735,000,000 |
Minimum | 2000 |
Std.Dev | 52,493,273 |
Skewness | 10.10 |
Kurtosis | 123.83 |
Observations | 576 |
Observations | |||
---|---|---|---|
53 | 0.25 | 78,036,414.26 | 119,847,707.12 |
54 | 0.25 | 76,897,073.34 | 118,810,941.11 |
55 | 0.25 | 75,799,745.10 | 117,807,080.01 |
56 | 0.25 | 74,745,097.02 | 116,835,426.70 |
57 | 0.26 | 73,730,512.28 | 115,894,319.95 |
58 | 0.26 | 72,726,189.66 | 114,973,797.53 |
59 | 0.26 | 71,747,661.60 | 114,077,909.17 |
60 | 0.26 | 70,808,483.95 | 113,210,077.37 |
61 | 0.26 | 69,906,366.34 | 112,368,925.18 |
62 | 0.26 | 69,039,192.80 | 111,553,164.53 |
63 | 0.27 | 68,162,429.69 | 110,748,741.31 |
Sample | (in USD) | Observations (in % of the Total) | KS Test (p-Value) | |
---|---|---|---|---|
Scam ICOs | 2.5052 | 19,500,000.00 | 132 (22.92%) | 0.4650 |
% of Distribution | Simulated Losses (Scam ICOs) |
---|---|
50% | 54,698,776.50 |
upper25% | 59,635,399.20 |
upper 10% | 66,936,376.82 |
upper 5% | 74,535,280.77 |
upper 1% | 108,263,805.74 |
upper 0.1% | 322,072,331.30 |
upper 0.01% | 1,726,332,507.79 |
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Grobys, K.; King, T.; Sapkota, N. A Fractal View on Losses Attributable to Scams in the Market for Initial Coin Offerings. J. Risk Financial Manag. 2022, 15, 579. https://doi.org/10.3390/jrfm15120579
Grobys K, King T, Sapkota N. A Fractal View on Losses Attributable to Scams in the Market for Initial Coin Offerings. Journal of Risk and Financial Management. 2022; 15(12):579. https://doi.org/10.3390/jrfm15120579
Chicago/Turabian StyleGrobys, Klaus, Timothy King, and Niranjan Sapkota. 2022. "A Fractal View on Losses Attributable to Scams in the Market for Initial Coin Offerings" Journal of Risk and Financial Management 15, no. 12: 579. https://doi.org/10.3390/jrfm15120579
APA StyleGrobys, K., King, T., & Sapkota, N. (2022). A Fractal View on Losses Attributable to Scams in the Market for Initial Coin Offerings. Journal of Risk and Financial Management, 15(12), 579. https://doi.org/10.3390/jrfm15120579