Data Valuation Model for Estimating Collateral Loans in Corporate Financial Transaction
Abstract
:1. Introduction
2. Previous Studies
2.1. Data Valuation and Mortgage
2.2. Intangible Asset Valuation Models
3. Building a Data Valuation Model
3.1. Valuation Method Based on the Cost Approach
3.2. Data Definition and Calculation
4. Simulation Results
4.1. Selection of an Evaluation Targe and Collateral Set
4.2. Results
5. Conclusions
5.1. Discussion and Implications
5.2. Research Limitations and Future Plans
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Classification | Account Title | Classification Related to Data Activity | ||||
---|---|---|---|---|---|---|
Collection | Storage | Curation | Analysis | Utilization | ||
Tangible assets | Equipment | ○ | ○ | ○ | ○ | - |
Intangible assets | Software | ○ | ○ | ○ | ○ | ○ |
Personnel expenses | Salary and others (1) | ○ | ○ | ○ | ○ | ○ |
Other expenses related to personnel expenses | Employee benefits and others (2) | △ | △ | △ | △ | △ |
Direct costs | Communication expenses | ○ | ○ | ○ | ○ | - |
Commission fees | ○ | ○ | ○ | ○ | ○ | |
Advertising expenses | ○ | △ | - | - | - |
Classification | Account Title | Data Cost Calculation Method | |
---|---|---|---|
Assets | Tangible assets | Equipment | Assets acquired over the past five years were identified and classified as data activity assets based on the nature of each asset. |
Intangible assets | Software | ||
Operating expenses (Sales and administrative expenses) | Personnel expenses | Salary and others | Data direct departments and indirect departments were divided, evaluating the level of involvement in data activities by team. Based on the salary details of each team, the ratio of the data activity salary to the total employee’s salary was applied to the account amount each year. |
Other expenses related to personnel expenses | Employee benefits and others | The level of involvement in data activities by team was evaluated, and the ratio of the data activity man-hours to the total employee man-hours was applied to the account based on the number of employees in each team. | |
Direct costs | Communication expenses | Data-related communication expenses, such as Amazon Web Services and CLOUD server hosting fees, were classified. | |
Commission fees | Data-related commission fees, such as server operation fees and software license purchase expenses, were classified. | ||
Advertising expenses | Data-related advertising expenses, such as marketing and advertising expenses to secure users who are data contributors and mobile marketing platform Appsflyer fees, were classified. |
Classification | FY 16 | FY 17 | FY 18 | FY 19 | FY 20 | FY21 1H |
---|---|---|---|---|---|---|
Sales | 2313 | 3528 | 7477 | 11,991 | 14,035 | 10,787 |
Gross profit | 2313 | 3247 | 6255 | 10,053 | 12,262 | 6298 |
Operating profit(loss) | 163 | 562 | 2073 | (2558) | (13,523) | (16,773) |
Net profit(loss) | (206) | 261 | 1855 | (2509) | (13,170) | (16,662) |
Total assets | 1076 | 5709 | 2164 | 5858 | 53,715 | 34,736 |
Total liabilities | 4671 | 3474 | 1833 | 4215 | 7396 | 5079 |
Total capital | (3595) | 2235 | 331 | 1643 | 46,319 | 29,657 |
Evaluation Items | Detailed Evaluation Items |
---|---|
Data-based business model (Both required) | Is its data-based industry clearly stated in the section of business purpose and type on its articles of incorporation, corporate registration certificate, and business registration certificate? |
Does it have a plan for operating a data-based business in its business plan or mid- to long-term strategy? | |
Marketability and growth potential (At least 1 out of 3) | Is it listed on the stock market (including KOSDAQ, excluding KONEX)? |
Did it attract more than 10 billion won in investment (paid-in capital increase) within the last three years as of the date of loan counseling? | |
Is its technology grade evaluated by designated TCB agencies higher than T3? | |
Data management capability (All 5 required) | Does it have its own data management organization composed of data scientists? |
Does it have security policies for data management? | |
Does it have backup systems for data management? | |
Does it have work guidelines or manuals for efficient management and operation of data? | |
Does it conduct periodic inspections for data quality management and document the inspection results? |
Steps | Details |
---|---|
Step 1. Data and App registration (Registration of rights) | The rights of data and apps were registered in the copyright register. |
Step 2. Right of pledge agreement | The pledge agreement was signed. |
Step 3. Pledge registration (Registration of alteration of rights) | The pledge was registered in the data and app copyright register. |
Step 4. Confirmation of pledge setting | The copyright registration was issued on the Internet. |
Step 5. Report on right of pledge registration | After the confirmation of the pledge setting, a report on the pledge registration was made. |
Classification | Account Title | Data Activity Ratio Calculation Method | Data Activity Ratio Calculation Result | |
---|---|---|---|---|
Assets | Tangible assets | Equipment | The data contribution was calculated by aggregating the acquisition value of data activity assets. | Data contribution: 42.71% |
Intangible assets | Software | The total acquisition value of data activity assets was aggregated. | Unapplied | |
Operating expenses | Personnel expenses | Salary and others | The ratio of data-related work salary to total employee salary was calculated based on the proportion of data activities by team. | Ratio of data-related work salary to total employee salary: 44.96% |
Other expenses related to personnel expenses | Employee benefits and others | The ratio of data activity man-hours to the total employee man-hours was calculated based on the proportion of data activity work by team. | Ratio of data activity man-hours to the total employee man-hours: 43.71% | |
Direct costs | Communication expenses | The total expense of data activities was aggregated based on the details of the general ledger. | Unapplied | |
Commission fees | ||||
Advertising expenses |
Classification | Data Activity Man-Hour | Data Activity Salary (Unit: KRW Million) | ||||
---|---|---|---|---|---|---|
Employees by Department (1) | Employees for Data Work | MH Ratio (%) | Salary by Department | Salary for Data Work | Salary Ratio (%) | |
Technical Support line | 61 | 41.4 | 68 | 3469 | 2431 | 70 |
Directly under the CEO | 18 | - | - | 1282 | - | - |
Customer | 22 | 15.8 | 72 | 1171 | 834 | 71 |
Platform Business | 14 | - | - | 750 | - | - |
Fashion and Life Biz | 9 | - | - | 314 | - | - |
Digital Biz | 11 | - | - | 462 | - | - |
Product | 11 | 5.5 | 50 | 870 | 435 | 50 |
Creative Center | 17 | 8.5 | 50 | 779 | 390 | 50 |
Ratio of data MH to employee MH | 163 | 71 | 43.71 | - | - | - |
Ratio of data salary to employee salary | - | - | - | 9097 | 4090 | 44.96 |
Classification | FY 16 | FY 17 | FY 18 | FY 19 | FY 20 | FY21 1H | Total |
---|---|---|---|---|---|---|---|
Equipment | 10 | 19 | - | - | 269 | 117 | 415 |
Data activity related equipment | 4 | 8 | - | - | 115 | 50 | 177 |
Data activity ratio | 40 | 42.1 | - | - | 42.75 | 42.73 | 42.71 |
Classification | Account Title | Data Operating by Account | Amount (Unit: KRW Million) | |
---|---|---|---|---|
Calculation Method | Applied Ratio (%) | |||
Tangible assets | Equipment | Data contribution applied | 42.71 | 176 |
Intangible assets | Software | Total acquisition value aggregated | Unapplied | 556 |
Subtotal | 732 | |||
Personnel expenses | Salary and others | Ratio of data salary to employee salary | 44.96 | 10,255 |
Other expenses related to personnel expenses | Employee benefits and others | Ratio of data MH to employee MH | 43.71 | 1845 |
Direct costs | Communication expenses | Aggregation of data operating expenses | Unapplied | 12,958 |
Subtotal | 25,058 | |||
Total | 25,790 |
Classification | Applied Item | FY16 | FY17 | FY18 | FY19 | FY20 | FY21 1H |
---|---|---|---|---|---|---|---|
Wage increase rate | Personnel expenses | 3.8% | 2.7% | 5.1% | 3.3% | 0.7% | 3.3% |
Inflation rate | Personnel expenses and others (1) | 1.0% | 1.9% | 1.5% | 0.4% | 0.5% | 1.5% |
Classification | Account Title | Amount (Unit: KRW Million) |
---|---|---|
Tangible assets | Equipment (Business PCs and others) | 181 |
Intangible assets | Software (SW for data security management and fraud prevention) | 564 |
Subtotal | 745 | |
Personnel expenses | Salary, retirement benefits, bonuses, benefits for unused annual leave | 10,942 |
Other expenses related to personnel expenses | Employee benefits, travel expenses, transportation expenses, water and heat expenses, rent, education and training expenses, printing expenses, consumables, property management expenses | 1889 |
Direct cost | Communication expenses, commission fees, advertising expenses | 13,217 |
Subtotal | 26,047 | |
Total | 26,792 |
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Share and Cite
Cheong, H.; Kim, B.; Vaquero, I.U. Data Valuation Model for Estimating Collateral Loans in Corporate Financial Transaction. J. Risk Financial Manag. 2023, 16, 206. https://doi.org/10.3390/jrfm16030206
Cheong H, Kim B, Vaquero IU. Data Valuation Model for Estimating Collateral Loans in Corporate Financial Transaction. Journal of Risk and Financial Management. 2023; 16(3):206. https://doi.org/10.3390/jrfm16030206
Chicago/Turabian StyleCheong, Hyongmook, Boyoung Kim, and Ivan Ureta Vaquero. 2023. "Data Valuation Model for Estimating Collateral Loans in Corporate Financial Transaction" Journal of Risk and Financial Management 16, no. 3: 206. https://doi.org/10.3390/jrfm16030206
APA StyleCheong, H., Kim, B., & Vaquero, I. U. (2023). Data Valuation Model for Estimating Collateral Loans in Corporate Financial Transaction. Journal of Risk and Financial Management, 16(3), 206. https://doi.org/10.3390/jrfm16030206