a.
To explain: The financial position of average household improved during given time period or not.
b. The expected balance sheet of current time for average household.
Balance Sheet: Balance sheet is a part of financial statements that lists company’s assets, liabilities and shareholders’ fund. It is prepared at the end of accounting period and informs about company’s financial position on that day.
b.
To explain: The expected balance sheet of current time for average household.
Balance Sheet: Balance sheet is a part of financial statements that lists company’s assets, liabilities and shareholders’ fund. It is prepared at the end of accounting period and informs about company’s financial position on that day.
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