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The benchmark interest rate in the United States was last recorded at 4.50 percent. This dataset provides the latest reported value for - United States Fed Funds Rate - plus previous releases, historical high and low, short-term forecast and long-term prediction, economic calendar, survey consensus and news.
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United States US: Lending Interest Rate data was reported at 3.512 % pa in 2016. This records an increase from the previous number of 3.260 % pa for 2015. United States US: Lending Interest Rate data is updated yearly, averaging 6.922 % pa from Dec 1960 (Median) to 2016, with 57 observations. The data reached an all-time high of 18.870 % pa in 1981 and a record low of 3.250 % pa in 2014. United States US: Lending Interest Rate data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s United States – Table US.World Bank.WDI: Interest Rates. Lending rate is the bank rate that usually meets the short- and medium-term financing needs of the private sector. This rate is normally differentiated according to creditworthiness of borrowers and objectives of financing. The terms and conditions attached to these rates differ by country, however, limiting their comparability.; ; International Monetary Fund, International Financial Statistics and data files.; ;
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The benchmark interest rate in Mexico was last recorded at 8 percent. This dataset provides - Mexico Interest Rate - actual values, historical data, forecast, chart, statistics, economic calendar and news.
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Iran IR: Lending Interest Rate data was reported at 18.000 % pa in 2016. This records an increase from the previous number of 14.210 % pa for 2015. Iran IR: Lending Interest Rate data is updated yearly, averaging 12.000 % pa from Dec 2004 (Median) to 2016, with 13 observations. The data reached an all-time high of 18.000 % pa in 2016 and a record low of 11.000 % pa in 2013. Iran IR: Lending Interest Rate data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s Iran – Table IR.World Bank.WDI: Interest Rates. Lending rate is the bank rate that usually meets the short- and medium-term financing needs of the private sector. This rate is normally differentiated according to creditworthiness of borrowers and objectives of financing. The terms and conditions attached to these rates differ by country, however, limiting their comparability.; ; International Monetary Fund, International Financial Statistics and data files.; ;
This data package includes the underlying data and files to replicate the calculations, charts, and tables presented in Public Debt and Low Interest Rates, PIIE Working Paper 19-4. If you use the data, please cite as: Blanchard, Olivier. (2019). Public Debt and Low Interest Rates. PIIE Working Paper 19-4. Peterson Institute for International Economics.
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The benchmark interest rate in China was last recorded at 3 percent. This dataset provides the latest reported value for - China Interest Rate - plus previous releases, historical high and low, short-term forecast and long-term prediction, economic calendar, survey consensus and news.
This dataset contains a wealth of information from 52,000 loan applications, offering detailed insights into the factors that influence loan approval decisions. Collected from financial institutions, this data is highly valuable for credit risk analysis, financial modeling, and predictive analytics. The dataset is particularly useful for anyone interested in applying machine learning techniques to real-world financial decision-making scenarios.
Overview: This dataset provides information about various applicants and the loans they applied for, including their demographic details, income, loan terms, and approval status. By analyzing this data, one can gain an understanding of which factors are most critical for determining the likelihood of loan approval. The dataset can also help in evaluating credit risk and building robust credit scoring systems.
Dataset Columns: Applicant_ID: Unique identifier for each loan application. Gender: Gender of the applicant (Male/Female). Age: Age of the applicant. Marital_Status: Marital status of the applicant (Single/Married). Dependents: Number of dependents the applicant has. Education: Education level of the applicant (Graduate/Not Graduate). Employment_Status: Employment status of the applicant (Employed, Self-Employed, Unemployed). Occupation_Type: Type of occupation, which provides insights into the nature of the applicant’s job (Salaried, Business, Others). Residential_Status: Type of residence (Owned, Rented, Mortgage). City/Town: The city or town where the applicant resides. Annual_Income: The total annual income of the applicant, a key factor in loan eligibility. Monthly_Expenses: The monthly expenses of the applicant, indicating their financial obligations. Credit_Score: The applicant's credit score, reflecting their creditworthiness. Existing_Loans: Number of existing loans the applicant is servicing. Total_Existing_Loan_Amount: The total amount of all existing loans the applicant has. Outstanding_Debt: The remaining amount of debt yet to be paid by the applicant. Loan_History: The applicant’s previous loan history (Good/Bad), indicating their repayment reliability. Loan_Amount_Requested: The loan amount the applicant has applied for. Loan_Term: The term of the loan in months. Loan_Purpose: The purpose of the loan (e.g., Home, Car, Education, Personal, Business). Interest_Rate: The interest rate applied to the loan. Loan_Type: The type of loan (Secured/Unsecured). Co-Applicant: Indicates if there is a co-applicant for the loan (Yes/No). Bank_Account_History: Applicant’s banking history, showing past transactions and reliability. Transaction_Frequency: The frequency of financial transactions in the applicant’s bank account (Low/Medium/High). Default_Risk: The risk level of the applicant defaulting on the loan (Low/Medium/High). Loan_Approval_Status: Final decision on the loan application (Approved/Rejected).
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Based on a large historical panel dataset, this paper provides evidence that the government spending multiplier can be significantly higher when interest rates are at or near the zero lower bound (ZLB). We estimate multipliers that are as high as 1.5 during ZLB episodes but small and statistically indistinguishable from zero during normal times. Our results are robust to different definitions of ZLB episodes, alternative ways of identifying government spending shocks, controlling for the exchange rate regime, and other potentially important state variables. In particular, we show that the difference in multipliers is not driven by multipliers being higher during periods of economic slack.
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The benchmark interest rate in Norway was last recorded at 4.25 percent. This dataset provides the latest reported value for - Norway Interest Rate - plus previous releases, historical high and low, short-term forecast and long-term prediction, economic calendar, survey consensus and news.
Have you ever wondered how lenders use various factors such as credit score, annual income, the loan amount approved, tenure, debt-to-income ratio etc. and select your interest rates?
The process, defined as ‘risk-based pricing’, uses a sophisticated algorithm that leverages different determining factors of a loan applicant. Selection of significant factors will help develop a prediction algorithm which can estimate loan interest rates based on clients’ information. On one hand, knowing the factors will help consumers and borrowers to increase their credit worthiness and place themselves in a better position to negotiate for getting a lower interest rate. On the other hand, this will help lending companies to get an immediate fixed interest rate estimation based on clients information. Here, your goal is to use a training dataset to predict the loan rate category (1 / 2 / 3) that will be assigned to each loan in our test set.
You can use any combination of the features in the dataset to make your loan rate category predictions. Some features will be easier to use than others.
https://www.ontario.ca/page/open-government-licence-ontariohttps://www.ontario.ca/page/open-government-licence-ontario
Tax interest is compounded daily and interest rates are reset every 3 months.
Note: Provincial land tax interest rates are not reset every three months. Provincial land tax interest rates are summarized on the "https://www.fin.gov.on.ca/en/consultations/landtaxreform/payment-forms.html">provincial land tax webpage. Interest rates do not apply to the Estate Administration Tax Act, 1998.
Current interest rates (July 1, 2025 to September 30, 2025):
You can download the dataset to view the historical tax interest rates.
Non-Resident Speculation Tax (NRST)
(1) Interest on tax you overpaid begins to accrue 40 business days after a complete NRST rebate or refund application is received by the Ministry of Finance to the date the rebate or refund is paid.
(2) On refunds you are eligible for as a result of a successful appeal or objection of a NRST refund/rebate disallowance, the interest rate is the same rate as though you had overpaid and will begin to accrue 40 business days after a complete NRST rebate or refund application is received by the Ministry of Finance to the date the rebate or refund is paid. Refunds as a result of a successful appeal or objection of NRST that was paid pursuant to a Notice of Assessment, interest will accrue at the higher appeals/objection rate, beginning to accrue from the date of payment to the date the rebate or refund is paid.
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Moldova MD: Risk Premium on Lending: Lending Rate Minus Treasury Bill Rate data was reported at 3.558 % pa in 2017. This records an increase from the previous number of -1.145 % pa for 2016. Moldova MD: Risk Premium on Lending: Lending Rate Minus Treasury Bill Rate data is updated yearly, averaging 6.014 % pa from Dec 1996 (Median) to 2017, with 22 observations. The data reached an all-time high of 17.539 % pa in 2002 and a record low of -8.014 % pa in 1996. Moldova MD: Risk Premium on Lending: Lending Rate Minus Treasury Bill Rate data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s Moldova – Table MD.World Bank.WDI: Interest Rates. Risk premium on lending is the interest rate charged by banks on loans to private sector customers minus the 'risk free' treasury bill interest rate at which short-term government securities are issued or traded in the market. In some countries this spread may be negative, indicating that the market considers its best corporate clients to be lower risk than the government. The terms and conditions attached to lending rates differ by country, however, limiting their comparability.; ; International Monetary Fund, International Financial Statistics database.; ;
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A traditional way of thinking about the exchange rate regime and capital account openness has been framed in terms of the 'impossible trinity' or 'trilemma', according to which policymakers can only have two of three possible outcomes: open capital markets, monetary independence and pegged exchange rates. The present paper is a natural extension of Escude (A DSGE Model for a SOE with Systematic Interest and Foreign Exchange Policies in Which Policymakers Exploit the Risk Premium for Stabilization Purposes, 2013), which focuses on interest rate and exchange rate policies, since it introduces the third vertex of the 'trinity' in the form of taxes on private foreign debt. These affect the risk-adjusted uncovered interest parity equation and hence influence the SOE's international financial flows. A useful way to illustrate the range of policy alternatives is to associate them with the faces of an isosceles triangle. Each of three possible government intervention policies taken individually (in the domestic currency bond market, in the foreign currency market, and in the foreign currency bonds market) corresponds to one of the vertices of the triangle, each of the three possible pairs of intervention policies corresponds to one of the three edges of the triangle, and the three simultaneous intervention policies taken jointly correspond to the triangle's interior. This paper shows that this interior, or 'pos sible trinity' is quite generally not only possible but optimal, since the central bank obtains a lower loss when it implements a policy with all three interventions.
By Noah Brod [source]
The Small Business Administration (SBA) Loan Guarantee Data provides a comprehensive look at loans that were approved by the SBA from January 1, 1990 to December 31, 1999. This dataset offers insight into roughly 1.5 million approved loans, including details such as the loan amount, interest rate, project county, and more.
This data was collected as part of an FOIA request and is updated quarterly for up-to-date information. It should be noted that the SBA is not a direct lender but rather a guarantor of the loan which is made by either a bank or non-bank lender.
The dataset includes detailed fields such as AsOfDate, Program Type, Gross Approval Amounts and Initial Interest Rates; Fanchise Codes and County Information; Delivery Method and Status Reports; Congressional Districts involved in financing these loans; Jobs Supported as part of each loan; Billing Information related to ChargeOff Dates and Amounts; SBADistrict Office associated with individual loan approvals ;and more!
This unique pool of data can offer invaluable insights into the mechanisms behind small business lending throughout the nineties in America – showing how much has changed since then but also how some trends remain consistent over time. The Small Business Administration Loan Guarantee Data can help shine light on important topics such as demographic disparities among borrowers or regional differences between approving offices - increasing our understanding of American business practices overall!
For more datasets, click here.
- 🚨 Your notebook can be here! 🚨!
- Using NaicsCode, initialize a visual representation of the most popular types of businesses that receive SBA loan ensures to get a better sense of which industries are the biggest uses for this financing program.
- Calculating Loan Status data over a period of time to analyse trends in terms of loan defaults and how much money is disbursed vs charged off.
- Examining GrossApproval and SBAGuarterNeedApproval data to determine which zipcodes or states have received more funding from the SBA and apply this information in aid targeting certain areas as part of govermental stimulus packages during tough economic times
If you use this dataset in your research, please credit the original authors. Data Source
Unknown License - Please check the dataset description for more information.
File: 7a_504_FOIA%20Data%20Dictionary.csv
File: FOIA%20-%207(a)(FY1991-FY1999).csv | Column name | Description | |:--------------------------|:-------------------------------------------------------------| | AsOfDate | Date the data was last updated. (Date) | | Program | Type of loan program. (String) | | BorrName | Name of the borrower. (String) | | BorrStreet | Street address of the borrower. (String) | | BorrCity | City of the borrower. (String) | | BorrState | State of the borrower. (String) | | BorrZip | Zip code of the borrower. (String) | | BankName | Name of the bank. (String) | | BankStreet | Street address of the bank. (String) | | BankCity | City of the bank. (String) | | BankState | State of the bank. (String) | | BankZip | Zip code of the bank. (String) | | GrossApproval | Total amount of the loan approved. (Number) | | SBAGuaranteedApproval | Amount of the loan guaranteed by the SBA. (Number) | | ApprovalDate | Date the loan was approved. (Date) | | ApprovalFiscalYear | Fiscal year the loan was approved. (Number) | | FirstDisbursementDate | Date the loan was disbursed. (Date) | | DeliveryMethod | Method of delivery for the loan. (String) | | subpgmdesc | Description of the loan program. (String) ...
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Bangladesh BD: Lending Interest Rate data was reported at 9.852 % pa in 2024. This records an increase from the previous number of 7.570 % pa for 2023. Bangladesh BD: Lending Interest Rate data is updated yearly, averaging 12.219 % pa from Dec 1976 (Median) to 2024, with 49 observations. The data reached an all-time high of 14.846 % pa in 1990 and a record low of 7.121 % pa in 2022. Bangladesh BD: Lending Interest Rate data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s Bangladesh – Table BD.World Bank.WDI: Interest Rates. Lending rate is the bank rate that usually meets the short- and medium-term financing needs of the private sector. This rate is normally differentiated according to creditworthiness of borrowers and objectives of financing. The terms and conditions attached to these rates differ by country, however, limiting their comparability.;International Monetary Fund, International Financial Statistics and data files.;;
CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
A traditional way of thinking about the exchange rate regime and capital account openness has been framed in terms of the 'impossible trinity' or 'trilemma', according to which policymakers can only have two of three possible outcomes: open capital markets, monetary independence and pegged exchange rates. The present paper is a natural extension of Escude (A DSGE Model for a SOE with Systematic Interest and Foreign Exchange Policies in Which Policymakers Exploit the Risk Premium for Stabilization Purposes, 2013), which focuses on interest rate and exchange rate policies, since it introduces the third vertex of the 'trinity' in the form of taxes on private foreign debt. These affect the risk-adjusted uncovered interest parity equation and hence influence the SOE's international financial flows. A useful way to illustrate the range of policy alternatives is to associate them with the faces of an isosceles triangle. Each of three possible government intervention policies taken individually (in the domestic currency bond market, in the foreign currency market, and in the foreign currency bonds market) corresponds to one of the vertices of the triangle, each of the three possible pairs of intervention policies corresponds to one of the three edges of the triangle, and the three simultaneous intervention policies taken jointly correspond to the triangle's interior. This paper shows that this interior, or 'pos sible trinity' is quite generally not only possible but optimal, since the central bank obtains a lower loss when it implements a policy with all three interventions.
https://fred.stlouisfed.org/legal/#copyright-citation-requiredhttps://fred.stlouisfed.org/legal/#copyright-citation-required
Graph and download economic data for Interest Rates, Discount Rate for United States (INTDSRUSM193N) from Jan 1950 to Aug 2021 about discount, interest rate, interest, rate, and USA.
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The benchmark interest rate in Russia was last recorded at 20 percent. This dataset provides the latest reported value for - Russia Interest Rate - plus previous releases, historical high and low, short-term forecast and long-term prediction, economic calendar, survey consensus and news.
This table contains 102 series, with data starting from 2013, and some select series starting from 2016. This table contains data described by the following dimensions (Not all combinations are available): Geography (1 item: Canada), Components (51 items: Total, funds advanced, residential mortgages, insured; Variable rate, insured; Fixed rate, insured, less than 1 year; Fixed rate, insured, from 1 to less than 3 years; ...), and Unit of measure (2 items: Dollars; Interest rate). For additional clarification on the component dimension, please visit the OSFI website for the Report on New and Existing Lending.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
The dataset contains several macroeconomic time-series regarding the Russian economy. The time-series were collected from the Russian Federal State Statistics Service, the Bank of Russia and Federal Reserve Economic Data. The time-series included in the dataset are:
1. Time
: 1-Jan-2005 = 1, every successive step in time represents one quarter
2. Date
: Quarterly dates from 1-Jan-2005 to 1-Oct-2021
5. GDP
: Quarterly nominal GDP in 2016 prices, excluding seasonal factor (bln RUB)
6. GDPgr
: Nominal GDP growth rate (Quarterly, %)
7. M0
: Base or high-powered money (bln RUB)
8. M0gr
: M0 growth rate (Quarterly, %)
9. BM
: M2 measure of money supply (bln RUB)
10. BMgr
: M2 growth rate (Quarterly, %)
11. Interest
: 90-day interbank rate (APR, %)
12. USDRUB
: USD/RUB exchange rate (RUB)
12. EURRUB
: EUR/RUB exchange rate (RUB)
13. Unemployment
: Unemployment rate (%)
14. PPI
: Domestic producer price index (index: 2015=100)
15. PPIgr
: Growth rate of producer price index (Quarterly, %)
16. OIL
: Spot prices of Brent per barrel (USD)
17. OILgr
: Growth rate of Brent prices (Quarterly, %)
18. WAGE
: Average monthly nominal wage rate (RUB)
19. WAGEgr
: Changes in nominal wage rate (Quarterly, %)
3. CPI
: Change in CPI as a ratio (End of quarter to end of previous quarter, %)
4. Inflation
: Percentage change in CPI, calculated as Relative CPI - 100 (Quarterly, %)
The data was used to in time-series regression modelling to explain the factors affecting inflation in Russia. Some other modelling ideas for the dataset are: 1. Shift the focus from factor analysis to predicting future inflation 2. Perform factor analyses of other key macroeconomic variables, such as the GDP growth rate, the unemployment rate or the interest rate
Due to the low number of available observations because of quarterly sampling, this dataset is probably better suited to time-series econometric analysis rather than more modern machine learning methods.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
The benchmark interest rate in the United States was last recorded at 4.50 percent. This dataset provides the latest reported value for - United States Fed Funds Rate - plus previous releases, historical high and low, short-term forecast and long-term prediction, economic calendar, survey consensus and news.