Seoul Comp (South Korea) Technical Analysis

KS11 -- South Korea Index  

 1,948  2.03  0.10%

As of 23 of August Seoul Comp has Risk Adjusted Performance of (0.22) and Coefficient Of Variation of (423.56). Macroaxis technical analysis interface makes it possible for you to check existing technical drivers of Seoul Comp as well as the relationship between them. In other words you can use this information to find out if the index will indeed mirror its model of past prices and volume data or the prices will eventually revert. We found nineteen technical drivers for Seoul Comp which can be compared to its competition. Please validate Seoul Comp Maximum Drawdown, Potential Upside and the relationship between Treynor Ratio and Value At Risk to decide if Seoul Comp is priced more or less accurately providing market reflects its prevalent price of 1948.3 per share.
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Seoul Comp Trend Analysis

Use this graph to draw trend lines for Seoul Comp. You can use it to identify possible trend reversals for Seoul Comp as well as other signals and approximate when it will take place. Remember, you need at least two touches of the trend line with actual Seoul Comp price movement. To start drawing, click on the pencil icon on top-right. To remove the trend, use eraser icon.

Seoul Comp Best Fit Change Line

The following chart estimates an ordinary least squares regression model for Seoul Comp applied against its price change over selected period. The best fit line has a slop of 5.45 % which may suggest that Seoul Comp market price will keep on failing further. It has 78 observation points and a regression sum of squares at 293289.16, which is the sum of squared deviations for the predicted Seoul Comp price change compared to its average price change.

Seoul Comp August 23, 2019 Technical Indicators

Seoul Comp August 23, 2019 Daily Price Condition

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