MSIS 3223 Exam 2 Content
The Delphi method is a popular forecasting approach which uses a panel of experts to respond to a series of questionnaires.
True
The higher the variance, the higher the uncertainty of the outcome.
True
The mean absolute deviation (MAD) is the absolute difference between the actual value and the forecast, averaged over a range of forecasted values.
True
The mean, median, and mode are all equal in normal distribution.
True
The more scattered the data, the larger the standard error.
True
The normal distribution is a continuous distribution that is described by the familiar bell-shaped curve and is perhaps the most important distribution used in statistics.
True
The union of two events contains all outcomes that belong to either of the two events.
True
Three major categories of forecasting approaches are qualitative and judgmental techniques, statistical time-series models, and explanatory/casual methods.
True
Time series that do not have trend, season, or cyclical effects but are relatively constant and exhibit only random behavior are called stationary time series.
True
Variance calculates the probability of a random variable lying within a certain interval.
True
Excels Regression Tool can be used for both:
simple and multiple linear regressions.
Residuals are the observed errors which are:
the differences between the actual values and the estimated values of the dependent variables.
Probability density functions:
the distribution that characterizes the outcomes of a continuous random variable.
Discrete random variable:
the numbers of a possible outcome can be counted.
Regression models of ______ data focus on predicting the future.
time-series
Regression models of ________ data focus on predicting the future.
time-series
Logarithmic functions:
use when the rate of change in a variable increases or decreases quickly and then levels out, such as diminishing returns to scale.
The Delphi method used for forecasting:
uses a panel of experts, whose identities are typically kept confidential from one another, to respond to a sequence of questionnaires.
Exponential function
y+abx
Properties of Probability Density Functions:
-density function must lie at or above the x-axis. -total area under the density function above the x-axis is 1. -For continuous random variables, there are an infinite number of values. -Calculates the probability of a random variable lying within a certain interval. -P is the area under the density functions between a and b.
Simple linear regression involves finding a linear relationship between one independent variable, X, and one dependent variable, Y.
True
Polynomial function:
A second-order polynomial is parabolic in nature and has only one hill or valley, a third-order polynomial has one or two hills or valleys. Revenue models that incorporate price elasticity are often polynomial functions.
Relative frequency definition:
Based on empirical data. The probability than an outcome will occur is simply it associated with that outcome. Ex: Distribution of computer repair times.
Subjective definition:
Based on judgement and experience. Ex: Sports experts might predict at the start of the football season.
A seasonal effect is one that describes ups and downs over a long time frame, such as several years.
False
Cyclical effects are those that repeat at fixed intervals of time, typically a year, month, week, or day.
False
Excel's Trendline feature cannot be used in modeling trends which include time variables. Group of answer choices
False
Higher variance implies low uncertainty.
False
Indicators and indexes are not important in developing judgmental forecasts.
False
Linear functions are used when the rate of change in a variable increases or decreases quickly and then levels out, such as with diminishing returns to scale.
False
The expected value of a random variable corresponds to the notion of the median for a sample.
False
The standard error may be assumed to be large if the data are clustered close to the regression line.
False
The triangular distribution is defined by three parameters: the mean, median, and mode.
False
Observed errors cannot be positive or negative.
False, they can.
Exponential functions:
Have the property that y rises or falls at constantly increasing rates.
Classical definition of probability:
If the process generates the outcome is known, probabilities can be deduced from theoretical arguments. Ex: Rolling dice
In Excel's Trendline tool:
Provides a convenient method for providing the best fitting functional relationship among these alternatives for a set of data.
Standard Error:
The excel output is the variability of the observed Y-value from the predicted values.
Which of the following is true of normal distributions?
The mean, median, and mode are all equal.
Standard residuals (observed errors) are residuals divided by their standard deviation.
True
A good regression model has the fewest number of explanatory variables providing an adequate interpretation of the dependent variable.
True
A probability distribution is the characterization of the possible values that a random variable may assume along with the probability of assuming these values.
True
A random variable is a numerical description of the outcome of an experiment.
True
A versatile, yet highly effective, approach for short range forecasting is simple exponential smoothing.
True
Conditional probability is the probability of occurrence of one event 'A' given that another event 'B' is known to be true or already occurred.
True
Conditional probability is the probability of occurrence of one event 'A' given that another event 'B' is known to be true or has already occurred.
True
Creating a scatter chart with an added trendline is visually superior to the scatter chart generated by line fit plots.
True
Exponential functions have the property that y rises or falls at constantly increasing rates.
True
In predictive analysis models, a second-order polynomial has only one hill or valley.
True
Indexes do not provide a complete forecast.
True
It is usually difficult to evaluate normality with small sample sizes.
True
Linear functions show steady increase or decrease over the range of x and is the simplest type of function used in predictive models.
True
Mean square error (MSE) penalizes larger errors because squaring larger numbers has a greater impact than squaring smaller numbers.
True
Normal distribution is symmetric, so its measure of skewness is zero.
True
One judgmental approach for forecasting is historical analogy, in which a forecast is obtained through a comparative analysis with a previous situation.
True
Probability is the likelihood that an outcome occurs.
True
Qualitative and judgmental techniques rely on experience and intuition.
True
R-squared is a measure of the "fit" of the line to the data and will have a value between 0 and 1. The larger the value of R-squared, the better the fit.
True
Random variables may be continuous or discrete.
True
Regression analysis is a tool for building mathematical and statistical models that characterize relationships between a dependent variable and one or more independent, or explanatory, variables.
True
Normal distribution:
a continuous distribution described by the familiar bell shaped curve.
Multiple linear regression:
a liner regression model with more than one independent variable.
Random variable:
a numerical description of the outcome of an experiment.
The Delphi Method:
a popular judgmental forecasting approach which uses a panel of experts, whose identifies are typically kept confidential from one another (promotes unbiased exchange of ideas)
Multiple regression:
a regression model that involves two or more independent variables.
Time series model:
a stream of historical data.
Regression analysis:
a tool for building mathematical and statistical models that characterize relationships between a dependent variable and one or more independent, or explanatory, variables, all of which are numerical.
Outlier:
an extreme value that is different from the rest of the data.
Logarithmic Functions
are used when the rate of change in a variable increases or decreases quickly and then levels out, such as with diminishing returns to scale. y=ln(x)
Binomial distribution:
can assume different shapes and amounts of skewness, depending on the parameters.
A probability density function:
characterizes outcomes of a continuous random variable.
Multiple R and R Square:
correlation coefficient and the coefficient of multiple determination respectively. They indicate the strength association between the dependent and independent variables.
Expected value (of a random variable):
corresponds to the notion of the mean or average for a sample.
Power functions:
define phenomena that increase at a specific rate. mathematical functions used in predictive analytical models which define phenomena that increase at a specific rate. y=ax^b
Cyclical effects:
describes ups and downs over a much longer time frame, such as several years.
Simple regression:
involves a single independent variable.
Time series models may exhibit seasonal effects or cyclical effects. A seasonal effect differs from a cyclical effect in that a seasonal effect:
is one that repeats at fixed intervals of time, typically a year, month, week, or day.
Which of the following is true about variance?
it measures the uncertainty of a random variable.
Perhaps the most important distribution used in statistics:
normal distribution
Before launching a new line of toys, Toys Inc. used the method of historical analogy to obtain a forecast. In this scenario, Toys Inc.:
noted the consumer response to similar previous products to marketing campaigns and used the responses as a basis to predict how the new marketing campaign might fare.
Interaction:
occurs when the effect of one variable is dependent on another variable.
Continuous random variable:
outcomes over one or more continuous interval or real numbers.
A seasonal effect:
repeats at fixed intervals of time, typically a year, month, week, or day.