Gabelli Equity Income Fund Cash Position Weight

GEICX Fund   7.95  0.04  0.51%   
Gabelli Equity Income fundamentals help investors to digest information that contributes to Gabelli Equity's financial success or failures. It also enables traders to predict the movement of Gabelli Mutual Fund. The fundamental analysis module provides a way to measure Gabelli Equity's intrinsic value by examining its available economic and financial indicators, including the cash flow records, the balance sheet account changes, the income statement patterns, and various microeconomic indicators and financial ratios related to Gabelli Equity mutual fund.
  
This module does not cover all equities due to inconsistencies in global equity categorizations. Continue to Equity Screeners to view more equity screening tools.

Gabelli Equity Income Mutual Fund Cash Position Weight Analysis

Gabelli Equity's Percentage of fund asset invested in cash equivalents or risk-free instruments. About 40% of all global funds carry cash on their balance sheet.

Cash Percentage

 = 

% of Cash

in the fund

More About Cash Position Weight | All Equity Analysis
Funds or ETFs that have over 40% of their value invested in low-risk instruments or cash equivalents typically attract conservative investors.
Competition

In accordance with the recently published financial statements, Gabelli Equity Income has 0.0% in Cash Position Weight. This is 100.0% lower than that of the Gabelli family and about the same as Large Blend (which currently averages 0.0) category. The cash position weight for all United States funds is 100.0% higher than that of the company.

Gabelli Cash Position Weight Peer Comparison

Stock peer comparison is one of the most widely used and accepted methods of equity analyses. It analyses Gabelli Equity's direct or indirect competition against its Cash Position Weight to detect undervalued stocks with similar characteristics or determine the mutual funds which would be a good addition to a portfolio. Peer analysis of Gabelli Equity could also be used in its relative valuation, which is a method of valuing Gabelli Equity by comparing valuation metrics of similar companies.
Gabelli Equity is currently under evaluation in cash position weight among similar funds.

Gabelli Fundamentals

Annual Yield0.12 %
Net Asset485.31 M

About Gabelli Equity Fundamental Analysis

The Macroaxis Fundamental Analysis modules help investors analyze Gabelli Equity Income's financials across various querterly and yearly statements, indicators and fundamental ratios. We help investors to determine the real value of Gabelli Equity using virtually all public information available. We use both quantitative as well as qualitative analysis to arrive at the intrinsic value of Gabelli Equity Income based on its fundamental data. In general, a quantitative approach, as applied to this mutual fund, focuses on analyzing financial statements comparatively, whereas a qaualitative method uses data that is important to a company's growth but cannot be measured and presented in a numerical way.
Please read more on our fundamental analysis page.

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Other Information on Investing in Gabelli Mutual Fund

Gabelli Equity financial ratios help investors to determine whether Gabelli Mutual Fund is cheap or expensive when compared to a particular measure, such as profits or enterprise value. In other words, they help investors to determine the cost of investment in Gabelli with respect to the benefits of owning Gabelli Equity security.
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