HPotter

Z-Score Strategy

The author of this indicator is Veronique Valcu. The z-score (z) for a data
item x measures the distance (in standard deviations StdDev) and direction
of the item from its mean (U):
z = (x-StdDev) / U
A value of zero indicates that the data item x is equal to the mean U, while
positive or negative values show that the data item is above (x>U) or below
(x Values of +2 and -2 show that the data item is two standard deviations
above or below the chosen mean, respectively, and over 95.5% of all data
items are contained within these two horizontal references (see Figure 1).
We substitute x with the closing price C, the mean U with simple moving
average (SMA) of n periods (n), and StdDev with the standard deviation of
closing prices for n periods, the above formula becomes:
Z_score = (C - SMA(n)) / StdDev(C,n)
The z-score indicator is not new, but its use can be seen as a supplement to
Bollinger bands. It offers a simple way to assess the position of the price
vis-a-vis its resistance and support levels expressed by the Bollinger Bands.
In addition, crossings of z-score averages may signal the start or the end of
a tradable trend. Traders may take a step further and look for stronger signals
by identifying common crossing points of z-score, its average, and average of average.
You can to change Trigger parameter for to get best values of strategy.

开源脚本

本着真正的TradingView精神,该脚本的作者将其开源发布,以便交易者可以理解和验证它。为作者喝彩!您可以免费使用它,但在出版物中重复使用此代码受网站规则的约束。 您可以收藏它以在图表上使用。

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想在图表上使用此脚本?
////////////////////////////////////////////////////////////
//  Copyright by HPotter v1.0 07/07/2014
// The author of this indicator is Veronique Valcu. The z-score (z) for a data 
// item x measures the distance (in standard deviations StdDev) and direction 
// of the item from its mean (U):
//     z = (x-StdDev) / U
// A value of zero indicates that the data item x is equal to the mean U, while 
// positive or negative values show that the data item is above (x>U) or below 
// (x Values of +2 and -2 show that the data item is two standard deviations 
// above or below the chosen mean, respectively, and over 95.5% of all data 
// items are contained within these two horizontal references (see Figure 1).
// We substitute x with the closing price C, the mean U with simple moving 
// average (SMA) of n periods (n), and StdDev with the standard deviation of 
// closing prices for n periods, the above formula becomes:
//     Z_score = (C - SMA(n)) / StdDev(C,n)
// The z-score indicator is not new, but its use can be seen as a supplement to 
// Bollinger bands. It offers a simple way to assess the position of the price 
// vis-a-vis its resistance and support levels expressed by the Bollinger Bands. 
// In addition, crossings of z-score averages may signal the start or the end of 
// a tradable trend. Traders may take a step further and look for stronger signals 
// by identifying common crossing points of z-score, its average, and average of average. 
////////////////////////////////////////////////////////////
study(title="Z-Score Strategy", shorttitle="Z-Score Strategy")
Period = input(20, minval=1)
Trigger = input(0)
hline(Trigger, color=purple, linestyle=line)
xStdDev = stdev(close, Period)
xMA = sma(close, Period)
nRes = (close - xMA) / xStdDev
pos =	iff(nRes > Trigger, 1,
	    iff(nRes < Trigger, -1, nz(pos[1], 0))) 
barcolor(pos == -1 ? red: pos == 1 ? green : blue )
plot(nRes, color=blue, title="Z-Score")