Linear regression is a statistical tool used to
predict future values from past values. In the case of security prices,
it is commonly used to determine when prices are overextended.
A Linear Regression trendline uses the least squares
method to plot a straight line through prices so as to minimize the
distances between the prices and the resulting trendline.
Interpretation
If you had to guess what a particular security's
price would be tomorrow, a logical guess would be "fairly close to
today's price." If prices are trending up, a better guess might be
"fairly close to today's price with an upward bias." Linear regression
analysis is the statistical confirmation of these logical assumptions.
A Linear Regression trendline is simply a trendline
drawn between two points using the least squares fit method. The
trendline is displayed in the exact middle of the prices. If you think
of this trendline as the "equilibrium" price, any move above or below
the trendline indicates overzealous buyers or sellers.
A popular method of using the Linear Regression
trendline is to construct Linear Regression Channel lines. Developed by
Gilbert Raff, the channel is constructed by plotting two parallel,
equidistant lines above and below a Linear Regression trendline. The
distance between the channel lines to the regression line is the
greatest distance that any one closing price is from the regression
line. Regression Channels contain price movement, with the bottom
channel line providing support and the top channel line providing
resistance. Prices may extend outside of the channel for a short period
of time. However if prices remain outside the channel for a longer
period of time, a reversal in trend may be imminent.
A Linear Regression trendline shows where
equilibrium exists. Linear Regression Channels show the range prices can
be expected to deviate from a Linear Regression trendline.
The Time Series Forecast indicator displays the same
information as a Linear Regression trendline. Any point along the Time
Series Forecast is equal to the ending value of a Linear Regression
Trendline. For example, the ending value of a Linear Regression
trendline that covers 10 days will have the same value as a 10-day Time
Series Forecast.
Example
The following chart shows the Japanese Yen with a
Linear Regression Channel.