Apple Shareholders Equity USD Trend

AAPL -- USA Stock  

USD 190.80  0.53  0.28%

This module enables investors to look at Apple 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 Consolidated Income of 53.7 B, Cost of Revenue of 154.6 B or Earning Before Interest and Taxes EBIT of 72.2 B, but also many exotic indicators such as Long Term Debt to Equity of 0.6919, Calculated Tax Rate of 30.0674 or PPandE Turnover of 10.2823. This module is a perfect complement to use when analyzing Apple Valuation or Volatility. It can also complement various Apple Technical models. Check also Trending Equities.
Showing smoothed Shareholders Equity USD of Apple with missing and latest data points interpolated. Shareholders Equity in USD
Shareholders Equity USD10 Years Trend
Slightly volatile
 Shareholders Equity USD 

Regression Statistics

Arithmetic Mean  97,354,598,039
Geometric Mean  74,255,897,991
Coefficient Of Variation  47.45
Mean Deviation  38,242,065,359
Median  119,355,000,000
Standard Deviation  46,191,436,578
Range  146,961,176,471
R Value  0.90
R Squared  0.81
Significance  0.00006535
Slope  11,534,485,808

Apple Shareholders Equity USD Over Time

2016-12-31  128,249,000,000 
2017-12-31  128,249,000,000 
2018-12-31  150,881,176,471 

Other Fundumenentals

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Apple Upcoming Company Events

Upcoming Quarterly ReportOctober 24, 2017
Next Earnings ReportJanuary 30, 2018
Check also Trending Equities. Please also try Watchlist Optimization module to optimize watchlists to build efficient portfolio or rebalance existing positions based on mean-variance optimization algorithm.