regressive tax
(noun)
A tax imposed in such a manner that the rate decreases as the amount subject to taxation increases.
Examples of regressive tax in the following topics:
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Comparing Marginal and Average Tax Rates
- Taxes can be evaluated based on an average impact or a marginal impact and can be categorized as progressive, regressive, or proportional.
- The opposite of a progressive tax is a regressive tax, where the relative tax rate or burden increases as an individual's ability to pay it decreases.
- A regressive tax is a tax imposed in such a manner that the average tax rate decreases as the amount subject to taxation increases .
- "Regressive" describes a distribution effect on income or expenditure, referring to the way the rate progresses from high to low, where the average tax rate exceeds the marginal tax rate.
- Graph demonstrates a progressive tax distribution on income that becomes regressive for top earners.
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Taxes
- Examples of an indirect tax include sales tax and VAT (value added tax).
- Progressive Tax: The more a person earns, the higher the tax rate.
- Regressive Tax:In a regressive tax system, poorer families pay a higher tax rate.
- Although a regressive tax system is never explicitly used, some claim a sales tax is a type of regressive tax.
- Categorize types of taxes into ad valorem taxes and excise taxes
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Trading off Equity and Efficiency
- Income taxes are a laddered progressive tax where income tax rates are set in income bands or ranges.
- At the highest income tax rate, income taxes can become regressive, since high earners are only subject to a constant albeit highest rate on their income.
- These individuals and groups support a flat tax or proportional tax instead.
- Income tax is a progressive tax that assumes a regressive nature at the highest tax rate.
- Explain tax equity in relation to the progressive, proportional, and regressive nature of taxes.
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What Taxes Do
- Taxes are the primary source of revenue for most governments.
- Taxes are most readily understood from the perspective of income taxes or sales tax, although there are many other types of taxes levied on both individuals and firms.
- Governments use different kinds of taxes and vary the tax rates.
- Sales tax is a form of regressive taxation; the liability is based on the percentage of income consumed, which is higher for low income earners.
- As a result, individuals earning a relatively lower income will pay a higher proportion of income in the form of sales tax, defining the regressive nature of the tax.
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Multiple Regression Models
- Multiple regression is used to find an equation that best predicts the $Y$ variable as a linear function of the multiple $X$ variables.
- You use multiple regression when you have three or more measurement variables.
- One use of multiple regression is prediction or estimation of an unknown $Y$ value corresponding to a set of $X$ values.
- Multiple regression is a statistical way to try to control for this; it can answer questions like, "If sand particle size (and every other measured variable) were the same, would the regression of beetle density on wave exposure be significant?
- As you are doing a multiple regression, there is also a null hypothesis for each $X$ variable, meaning that adding that $X$ variable to the multiple regression does not improve the fit of the multiple regression equation any more than expected by chance.
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Polynomial Regression
- For this reason, polynomial regression is considered to be a special case of multiple linear regression.
- Although polynomial regression is technically a special case of multiple linear regression, the interpretation of a fitted polynomial regression model requires a somewhat different perspective.
- This is similar to the goal of non-parametric regression, which aims to capture non-linear regression relationships.
- Therefore, non-parametric regression approaches such as smoothing can be useful alternatives to polynomial regression.
- An advantage of traditional polynomial regression is that the inferential framework of multiple regression can be used.
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How Income is Allocated
- Policy reforms and regressive taxation have promoted disparity but are relatively minor contributors to existing inequality.
- Wealthier people pay proportionally more of their income in taxes, which are then used to pay for services for the poor.
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Regression Analysis for Forecast Improvement
- Regression Analysis is a causal / econometric forecasting method.
- In regression analysis, it is also of interest to characterize the variation of the dependent variable around the regression function, which can be described by a probability distribution.
- Familiar methods, such as linear regression and ordinary least squares regression, are parametric, in that the regression function is defined in terms of a finite number of unknown parameters that are estimated from the data.
- Nonparametric regression refers to techniques that allow the regression function to lie in a specified set of functions, which may be infinite-dimensional.
- The performance of regression analysis methods in practice depends on the form of the data generating process and how it relates to the regression approach being used.
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Estimating and Making Inferences About the Slope
- You use multiple regression when you have three or more measurement variables.
- When the purpose of multiple regression is prediction, the important result is an equation containing partial regression coefficients (slopes).
- When the purpose of multiple regression is understanding functional relationships, the important result is an equation containing standard partial regression coefficients, like this:
- Where $b'_1$ is the standard partial regression coefficient of $y$ on $X_1$.
- A graphical representation of a best fit line for simple linear regression.
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Evaluating Model Utility
- Multiple regression is beneficial in some respects, since it can show the relationships between more than just two variables; however, it should not always be taken at face value.
- It is easy to throw a big data set at a multiple regression and get an impressive-looking output.
- But many people are skeptical of the usefulness of multiple regression, especially for variable selection, and you should view the results with caution.
- You should examine the linear regression of the dependent variable on each independent variable, one at a time, examine the linear regressions between each pair of independent variables, and consider what you know about the subject matter.
- You should probably treat multiple regression as a way of suggesting patterns in your data, rather than rigorous hypothesis testing.