Financial Management: Quantitative Methods Flashcards
Quantitative Forecasting Methods Types:
There are two types of Quantitative Forecasting Methods:
- Time Series Models – are based on the premise that data patterns from the past will continue more or less unchanged into some future period.
- Causal Models – assume the variable being forecasted (dependent variable) is related to one or more other variables (independent variable) and makes forecasts based on those associations.
Time Series Methodologies or Models:
Time Series Models: a number of specific models have been developed to predict a future value (or values) from past values, Here are the most significant models, beginning with the simplest method:
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Naive – Uses the immediate prior period’s actual value as a forecast for the next period.
- “Next year is expected to be just like this year”.
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Simple Mean (Average) – Uses the average of past values as the forecast for a future period or periods.
- E.g. average the last 2 yrs as the forecast for next year.
- Simple Moving Average – Uses the average of a specific number of the most recent values as the forecast for future period(s). Values are not adjusted.
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Weighted Moving Average – Uses the average of a specific number of most recent values with each receiving a different emphasis or weight.
- Average the last 3 months with the last month weight being .5, two months ago weight being .3, and three months ago weighted .2
- E.g.: Forecasted value = (1 month ago x .5) + (2 months ago x .3) + (3 month ago x .2)
- Weights must equal 1.0
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Exponential Smoothing – Uses the average of a specific number of most recent values with weights assigned to each which decline exponentially as data becomes older.
- A weight is assigned to the most recent period; that weight is called “smoothing factor”
- All other weights for earlier periods are computed asa function of the smoothing factor.
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Trend-adjusted Exponential Smoothing – An exponential smoothing method which makes adjustments to past data when strong trend patterns are evident in the data.
- This trend can be used when the forecast period is long enough to have a trend.
- Seasonal Indexes – Adjusts past data to accomodate seasonal patterns in data
- Linear Trend Line – Uses least squares to fit a straight line to past data and extends trendline to establish forecast.
Time Series Patterns:
Over time, actual time series data will relect a pattern. Commom patterns in Time Series Data include:
- Level or Horizontal – Data are relatively constant or stable over time; little increase or decrease in values.
- Seasonal -- Data reflects upward or downward swings over a short to intermediate time period, with each swing about same timing and level of change.
- Cycles – Data reflects upward and downward swings over long period of time.
- Trend – Data reflects a steady and persistent upward and downward movement over some long time period.
- Random – Data reflects unpredictable, erratic variations over time.
Time Series Decomposition:
Time series data that shows pattern often can be decomposed (i.e., separated into multiple causes).
- Decomposition is the removal of effects of each pattern component from the data.
Decomposition Process:
- Removing the seasonal effects from the data, typically using smoothing;
- Removing the overall trend from the deseasonalized data, typically using regression;
- Removing the cyclic effects from the remaining data values, typically using a cyclic index.
Causal Models:
Causal Models: Assume the variable being forecasted (dependent variable) is related to one or more other variables (independent variable) and makes forecasts based on those associations.
Common Causal Model Types:
- Regression Models
- Input-Output Models
- Economic Models
Causal Model Types:
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Regression Models – Uses mathematical equations that relate a dependent variable to one or more independent variables that influence the dependent variable:
- Regression fits a curve to the data points to minimize error
- Curve may be linear or non-linear
- Trend analysis uses regression with time as the independent (explanatory) variable.
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Input-Output Models – Describe the flow from one stage of a process or sector to another stage or sector.
- Outputs of one stage or sector determines inputs to a subsequent stage or sector.
- Crude oil production > refining > gasoline
- Can be used at macroeconomic level
- Outputs of one stage or sector determines inputs to a subsequent stage or sector.
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Economic Models – Specify statistical relationship believed to exist between economic quantities.
- Black Scholes model is economic model.