Developing Dimensions and Indicators to Measure Decentralization in Decentralized Autonomous Organizations
Abstract
:1. Introduction
- What is the precise definition of decentralization within the context of DAOs and what factors influence or shape it?
- How can decentralization within DAOs be quantitatively measured and what are the methodologies best suited for this purpose?
- To what extent can established decentralization research within conventional governmental structures be applied to the novel context of DAOs?
- What are the efforts required to quantitatively assess the decentralization of DAOs and validate the applicability of existing decentralization theories in this context?
2. Dimensions and Indicators of Decentralization
- Voting Participation: This indicator quantifies the number of accounts actively participating in voting relative to the total potential voting accounts eligible to engage in the voting process. Voting participation serves as an indicator of the level of engagement in voting activities within the DAO and is derived from both voter and holder information. Specifically, voting data is sourced from Snapshot and entails the tally of accounts that have cast votes, counting each unique account only once even if multiple votes have been recorded. The holder information aligns with the token distribution data, utilizing the cumulative count of accounts that have held tokens at some point. Essentially, this metric aims to assess the extent to which accounts actively participated in voting in comparison to the total number of potentially eligible voting accounts.
- Proposal Participation: This indicator measures the number of accounts actively participating in proposing changes compared to the total potential accounts capable of submitting proposals. Proposal participation is figured out in a way similar to how we calculate voting participation. But, instead of counting the number of voters, we look at how many different accounts have made proposals. This metric quantifies the percentage of individuals who have actively submitted proposals relative to the total number of individuals with the capacity to do so.
- Token Distribution: This metric provides insights into the extent of token dispersion within the DAO. A more even distribution of tokens suggests a higher level of economic decentralization, where ownership is not concentrated in the hands of a few. To work this out, we use the overall token supply and the count of accounts that have possessed the tokens at some point. We figure out the number of accounts that have ever held the project’s token by analyzing all the times tokens were transferred in the project’s token contract. By using the total supply stated in the smart contract and the number of different accounts who have held the project’s token, we determine the token distribution.
- Voting Power Index: Voting power refers to the degree of influence or control an individual account or entity possesses within a voting system in DAO. This indicator quantifies the level of voting power required for a proposal to pass, elucidating the number of participants needed to contribute their voting power for a successful vote outcome. It serves as a proxy for economic decentralization, with a higher voting power index implying a more inclusive and decentralized decision-making process. Voting power is occasionally associated with token-weighted voting systems, allowing participants to allocate a greater number of tokens to proposals they consider significant. It can be inferred that as proposals necessitate a higher level of voting power for approval, and as more participants are incentivized to contribute their tokens, the DAO’s level of economic decentralization tends to increase.
- Percentage of Quorum Condition Selections: This metric quantifies the extent to which quorum criteria are employed to facilitate autonomous voting, without external intervention. A higher percentage signifies a greater reliance on predefined quorum conditions for decentralized decision making.
- Pass Rate of Proposal with Quorum Condition: This indicator reveals the degree to which proposals subject to such quorum requirements autonomously result in successful votes. It demonstrates the effectiveness of these conditions in enabling autonomous and decentralized decision outcomes.
3. Research Design and Method
3.1. Data Collection
3.2. Confirmatory Factor Analysis
4. Results
5. Discussions
6. Conclusions
6.1. Practical Implications
6.2. Research Limitations and Future Studies
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Political Dimension | Economic Dimension | Administrative Dimension |
---|---|---|
Voting Participation | Token Distribution | Percentage of Quorum Condition Selection |
Proposal Participation | Voting Power Index | Pass Rate of Proposal with Quorum Condition |
No | Name | No | Name | No | Name | No | Name |
---|---|---|---|---|---|---|---|
1 | Aave | 12 | Lido | 23 | JuiceboxDAO | 34 | Alchemix |
2 | Uniswap | 13 | Starknet | 24 | Frax | 35 | Yearn (old) |
3 | Gitcoin | 14 | OlympusDAO | 25 | Decentral Games | 36 | PoolTogether |
4 | Galxe | 15 | BanklessDAO | 26 | The Graph | 37 | MoonDAO |
5 | ENS | 16 | Gearbox | 27 | Doodles | 38 | SharkDAO |
6 | Decentraland | 17 | Curve Finance | 28 | Yam | 39 | mStable |
7 | BitDAO | 18 | Hop | 29 | SafeDAO | 40 | PieDAO |
8 | ApeCoin DAO | 19 | dYdX | 30 | Synapse Protocol | 41 | Euler |
9 | Balancer | 20 | AirSwap | 31 | Developer DAO | 42 | Ribbon |
10 | Sushi | 21 | Bancor | 32 | Fei | 43 | LinksDAO |
11 | Proof of Humanity | 22 | ShapeShift | 33 | Aura Finance | 44 | Krause House |
Factor | Initial Eigenvalue | Cumulative Variance |
---|---|---|
1 | 2.1155 | 0.3324 |
2 | 1.7773 | 0.5971 |
3 | 1.3679 | 0.7736 |
4 | 0.4809 | 0.7869 |
5 | 0.2576 | 0.7997 |
6 | 0.0008 | 1.0000 |
Political Decentralization | Economic Decentralization | Administrative Decentralization | |
---|---|---|---|
Proposal Participation | 0.9965 | −0.0166 | −0.0601 |
Voting Participation | 0.9969 | −0.0164 | −0.0552 |
Token Distribution | −0.0217 | 0.8636 | −0.0322 |
Voting Power Index | −0.0108 | 0.8945 | 0.1334 |
Percentage of Quorum Selections | −0.0245 | −0.0704 | 0.6986 |
Quorum Proposal Pass Rate | −0.0794 | 0.1917 | 0.7385 |
Purpose | Measure | Description | Acceptable Values |
---|---|---|---|
Absolute fit | Chi-Square/df | The Chi-Square test examines whether the covariance matrix of the sample matches that of the population. | 1 to 3 |
Standardized root mean square residual (SRMR) | The standardized square root of the difference between the sample covariance matrix and the implied covariance matrix according to the proposed model. | <0.08: Excellent 0.08 to 0.10: Good | |
Root means square error of approximation (RMSEA) | It quantifies the error associated with using the proposed model to predict the sample data. Additionally, it considers the impact of model complexity in relation to SRMR. | <0.06: Excellent 0.06 to 0.08: Good | |
Incremental fit | Comparative fit index (CFI) | It assesses the superiority of the proposed model (default model) compared to a baseline null model, determining whether the proposed model offers a better fit. | >0.95: Excellent 0.9 to 0.95: Good |
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Park, H.; Ureta, I.; Kim, B. Developing Dimensions and Indicators to Measure Decentralization in Decentralized Autonomous Organizations. Adm. Sci. 2023, 13, 241. https://doi.org/10.3390/admsci13110241
Park H, Ureta I, Kim B. Developing Dimensions and Indicators to Measure Decentralization in Decentralized Autonomous Organizations. Administrative Sciences. 2023; 13(11):241. https://doi.org/10.3390/admsci13110241
Chicago/Turabian StylePark, Hyejin, Ivan Ureta, and Boyoung Kim. 2023. "Developing Dimensions and Indicators to Measure Decentralization in Decentralized Autonomous Organizations" Administrative Sciences 13, no. 11: 241. https://doi.org/10.3390/admsci13110241
APA StylePark, H., Ureta, I., & Kim, B. (2023). Developing Dimensions and Indicators to Measure Decentralization in Decentralized Autonomous Organizations. Administrative Sciences, 13(11), 241. https://doi.org/10.3390/admsci13110241