LPA Stock | | | 6.16 0.06 0.96% |
Logistic Properties coefficient-of-variation technical analysis lookup allows you to check this and other technical indicators for Logistic Properties of or any other equities. You can select from a set of available technical indicators by clicking on the link to the right. Please note, not all equities are covered by this module due to inconsistencies in global equity categorizations and data normalization technicques. Please check also
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Logistic Properties of has current Coefficient Of Variation of
(423.84). Coefficient of Variation (or CV) is a normalized measure of dispersion of a probability distribution. It is also known as the variation coefficient or simply unitized risk. The absolute value of the Coefficient of Variation is sometimes called Relative Standard Deviation (or RSD), which is expressed as a percentage.
Coefficient Of Variation | = | STDER |
| = | (423.84) | |
Logistic Properties Coefficient Of Variation Peers Comparison
Logistic Coefficient Of Variation Relative To Other Indicators
Logistic Properties of is rated
fifth overall in coefficient of variation category among its peers. It is currently under evaluation in maximum drawdown category among its peers .
CV is the measure of price and return dispersion, sometimes known as unitized risk or the variation coefficient. The CV is derived from the ratio of the standard deviation to the non-zero mean and the absolute value is taken for the mean to ensure it always positive. It is sometimes expressed as a percentage, in which case the CV is multiplied by 100. Coefficient of Variation for a single equity instrument describes the dispersion of price movement or daily returns. The higher the Coefficient of Variation, the greater the dispersion of prices, and the more riskier is the asset.
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