Deere Overlap Studies Bollinger Bands |
Deere Company -- USA Stock | USD 146.29 0.67 0.46% |
Deere overlap-studies tool provides you with the Overlap Studies execution environment for running Bollinger Bands study against Deere. Deere overlay technical analysis usually involve calculating upper and lower limits of price movements based on various statistical techniques. Please specify the following input to run this model: Time Period, Deviations up, Deviations down, and MA Type.
Time Horizon | 30 Days Login to change |
Symbol | Refresh |
The output start index for this execution was thirteen with a total number of output elements of twenty-six. The Bollinger Bands is very popular indicator that was developed by John Bollinger. It consist of three lines. Deere middle band is a simple moving average of its typical price. The upper and lower bands are (N) standard deviations above and below the middle band. The bands widen and narrow when the volatility of the price is higher or lower, respectively. The upper and lower bands can also be interpreted as price targets for Deere Company. When the price bounces off of the lower band and crosses the middle band, then the upper band becomes the price target. View also all equity analysis or get more info about bollinger bands overlap studies indicator.
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The main assumption in equity investing is that a higher degree of volatility (or risk) means a higher potential (or expected) return on investment. Conversely, investors who take on a low degree of risk have a low expection for return.You can create optimal portfolios in USA market or optimize your existing portfolio in one of two ways: 1) For any level of risk, select the one which has the highest expected return. 2) For any expected return, select the one which has the lowest volatility.
Diversify PortfoliosAdditionally see Investing Opportunities. Please also try Portfolio Volatility module to check portfolio volatility and analyze historical return density to properly model market risk.