Sprint Total Assets Per Share Trend

S -- USA Stock  

USD 5.47  0.01  0.18%

This module enables investors to look at Sprint various fundamental indicators over time in order to gain insight into the company future performance. Macroaxis historical fundamental analysis tools allow evaluation of not only typical financial statement drivers such as Cost of Revenue of 17.9 B or Earning Before Interest and Taxes EBIT of 385.9 M, but also many exotic indicators such as Interest Coverage of 0.1671 or Long Term Debt to Equity of 1.7405. This module is a perfect complement to use when analyzing Sprint Valuation or Volatility. It can also complement various Sprint Technical models. Also please take a look at analysis of Sprint Correlation with competitors.
Showing smoothed Total Assets Per Share of Sprint Corporation with missing and latest data points interpolated.
Total Assets Per Share10 Years Trend
Slightly volatile
 Total Assets Per Share 

Regression Statistics

Arithmetic Mean  511.93
Geometric Mean  144.88
Coefficient Of Variation  100.17
Mean Deviation  490.96
Median  1,003
Standard Deviation  512.80
Sample Variance  262,960
Range  983.02
R Value (0.87)
Mean Square Error  70,851
R Squared  0.76
Significance  0.00024338
Slope (123.58)
Total Sum of Squares  2,892,557

Sprint Total Assets Per Share Over Time

2016-12-31  19.87 
2017-12-31  19.87 
2018-12-31  23.38 

Other Fundumenentals

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Sprint Upcoming Company Events

Upcoming Quarterly ReportMay 2, 2017
Next Earnings ReportJuly 24, 2017
Also please take a look at analysis of Sprint Correlation with competitors. Please also try Watchlist Optimization module to optimize watchlists to build efficient portfolio or rebalance existing positions based on mean-variance optimization algorithm.