Financial Statement Analysis, A Data
Analytics Approach, 2024 Release, 1st
Edition Resutek [All Lessons Included]
Complete Chapter Solution Manual
are Included (Ch.1 to Ch.10)
Rapid Download
Quick Turnaround
Complete Chapters Provided
, Table of Contents are Given Below
Here is the list of chapters from "Financial Statement Analysis: A Data Analytics Approach," 2024 Release, 1st
Edition by Robert J. Resutek and Vernon J. Richardson:
1. Contemporary Financial Statement Analysis and the Need for Data Analytics
2. Using Financial Statements
3. Alternative Data Sources
4. Financial Ratio Analysis
5. Accounting Quality and Working Capital Analysis
6. Evaluation of Noncurrent Assets and Liabilities to Assess Balance Sheet Quality
7. Analysis of Cash Flows
8. Forecasting Pro Forma Financial Statements
9. Introduction to Equity Valuation
10. Quantitative and Qualitative Sensitivity Analysis to Assess Forecast Assumptions
Additionally, the textbook includes the following appendices:
Appendix A: Excel Tutorial (Formatting, Sorting, Filtering, and Pivot Tables)
Appendix B: Tableau Tutorial
Appendix C: Installing Excel’s Analysis ToolPak Add-In
This comprehensive structure integrates financial statement analysis with data analytics, providing students with
practical skills in both areas.
Section 1: Contemporary Financial Statement Analysis and the Need for Data Analytics
Question 1
− Which of the following best describes the primary goal of financial statement analysis?
− A. To prepare financial statements for regulatory compliance
B. To assess the financial health and performance of an organization
C. To determine the market value of a company's stock
D. To manage daily cash flows
− Answer: B. To assess the financial health and performance of an organization
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, − Explanation: Financial statement analysis aims to evaluate an organization's financial health and
performance by examining its financial statements, aiding stakeholders in decision-making.
Question 2
− Data analytics in financial statement analysis primarily helps in:
− A. Reducing the need for financial audits
B. Enhancing the accuracy and depth of financial insights
C. Eliminating manual data entry
D. Complying with tax regulations
− Answer: B. Enhancing the accuracy and depth of financial insights
− Explanation: Data analytics leverages advanced techniques to analyze large datasets, providing more
accurate and comprehensive insights into financial performance and trends.
Question 3
− Which of the following is NOT a benefit of integrating data analytics into financial statement analysis?
− A. Improved trend identification
B. Enhanced predictive capabilities
C. Increased manual processing
D. Better risk assessment
− Answer: C. Increased manual processing
− Explanation: Data analytics aims to automate and streamline data processing, reducing the need for
manual intervention.
Question 4
− In the context of financial statement analysis, what does the term "predictive analytics" refer to?
− A. Analyzing past financial data to understand historical performance
B. Using statistical models to forecast future financial outcomes
C. Presenting financial data in graphical formats
D. Ensuring compliance with financial regulations
− Answer: B. Using statistical models to forecast future financial outcomes
− Explanation: Predictive analytics involves using historical data and statistical models to predict future
financial trends and outcomes.
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, Question 5
− Which technology is most commonly associated with data analytics in financial statement analysis?
− A. Blockchain
B. Machine Learning
C. Virtual Reality
D. 3D Printing
− Answer: B. Machine Learning
− Explanation: Machine learning is a key technology in data analytics, enabling the analysis of complex
financial data to uncover patterns and make predictions.
Question 6
− The use of big data in financial statement analysis allows analysts to:
− A. Ignore qualitative information
B. Analyze larger volumes of data for more accurate insights
C. Replace financial statements entirely
D. Focus solely on annual reports
− Answer: B. Analyze larger volumes of data for more accurate insights
− Explanation: Big data technologies enable the analysis of vast amounts of financial and non-financial
data, enhancing the depth and accuracy of financial insights.
Question 7
− Which of the following is a challenge associated with data analytics in financial statement analysis?
− A. Limited data availability
B. High cost of data analytics tools
C. Lack of analytical skills among analysts
D. All of the above
− Answer: D. All of the above
− Explanation: Implementing data analytics can be challenging due to factors like limited data, high costs
of tools, and a shortage of skilled analysts.
Question 8
− Descriptive analytics in financial statement analysis is primarily used to:
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