Accounting Analytics

Methode

Accounting Analytics

Coursera (CC)
Logo von Coursera (CC)
Bewertung: starstarstarstar_halfstar_border 7,2 Bildungsangebote von Coursera (CC) haben eine durchschnittliche Bewertung von 7,2 (aus 6 Bewertungen)

Tipp: Haben Sie Fragen? Für weitere Details einfach auf "Kostenlose Informationen" klicken.

Beschreibung

When you enroll for courses through Coursera you get to choose for a paid plan or for a free plan

  • Free plan: No certicification and/or audit only. You will have access to all course materials except graded items.
  • Paid plan: Commit to earning a Certificate—it's a trusted, shareable way to showcase your new skills.

About this course: Accounting Analytics explores how financial statement data and non-financial metrics can be linked to financial performance.  In this course, taught by Wharton’s acclaimed accounting professors, you’ll learn how data is used to assess what drives financial performance and to forecast future financial scenarios. While many accounting and financial organizations deliver data, accounting analytics deploys that data to deliver insight, and this course will explore the many areas in which accounting data provides insight into other business areas including consumer behavior predictions, corporate strategy, risk management, optimization, and more. By the end of this course,…

Gesamte Beschreibung lesen

Frequently asked questions

Es wurden noch keine FAQ hinterlegt. Falls Sie Fragen haben oder Unterstützung benötigen, kontaktieren Sie unseren Kundenservice. Wir helfen gerne weiter!

Noch nicht den perfekten Kurs gefunden? Verwandte Themen: Cognos, IBM, Business Intelligence (BI), Software- / Systemingenieurwesen und Software Entwicklung.

When you enroll for courses through Coursera you get to choose for a paid plan or for a free plan

  • Free plan: No certicification and/or audit only. You will have access to all course materials except graded items.
  • Paid plan: Commit to earning a Certificate—it's a trusted, shareable way to showcase your new skills.

About this course: Accounting Analytics explores how financial statement data and non-financial metrics can be linked to financial performance.  In this course, taught by Wharton’s acclaimed accounting professors, you’ll learn how data is used to assess what drives financial performance and to forecast future financial scenarios. While many accounting and financial organizations deliver data, accounting analytics deploys that data to deliver insight, and this course will explore the many areas in which accounting data provides insight into other business areas including consumer behavior predictions, corporate strategy, risk management, optimization, and more. By the end of this course, you’ll understand how financial data and non-financial data interact to forecast events, optimize operations, and determine strategy. This course has been designed to help you make better business decisions about the emerging roles of accounting analytics, so that you can apply what you’ve learned to make your own business decisions and create strategy using financial data. 

Created by:  University of Pennsylvania
  • Taught by:  Brian J Bushee, The Geoffrey T. Boisi Professor

    Accounting
  • Taught by:  Christopher D. Ittner, EY Professor of Accounting

    Accounting
Basic Info Course 4 of 5 in the Business Analytics Specialization Commitment 4 weeks, 3 -5 hours per week Language English, Subtitles: Mongolian How To Pass Pass all graded assignments to complete the course. User Ratings 4.4 stars Average User Rating 4.4See what learners said Coursework

Each course is like an interactive textbook, featuring pre-recorded videos, quizzes and projects.

Help from your peers

Connect with thousands of other learners and debate ideas, discuss course material, and get help mastering concepts.

Certificates

Earn official recognition for your work, and share your success with friends, colleagues, and employers.

University of Pennsylvania The University of Pennsylvania (commonly referred to as Penn) is a private university, located in Philadelphia, Pennsylvania, United States. A member of the Ivy League, Penn is the fourth-oldest institution of higher education in the United States, and considers itself to be the first university in the United States with both undergraduate and graduate studies.

Syllabus


WEEK 1


Ratios and Forecasting



The topic for this week is ratio analysis and forecasting. Since ratio analysis involves financial statement numbers, I’ve included two optional videos that review financial statements and sources of financial data, in case you need a review. We will do a ratio analysis of a single company during the module. First, we’ll examine the company's strategy and business model, and then we'll look at the DuPont analysis. Next, we’ll analyze profitability and turnover ratios followed by an analysis of the liquidity ratios for the company. Once we've put together all the ratios, we can use them to forecast future financial statements. (If you’re interested in learning more, I’ve included another optional video, on valuation). By the end of this week, you’ll be able to do a ratio analysis of a company to identify the sources of its competitive advantage (or red flags of potential trouble), and then use that information to forecast its future financial statements.


9 videos, 2 readings expand


  1. Video: Module 1 Overview 1.0
  2. Video: Review of Financial Statements (Optional) 1.1
  3. Video: Sources for Financial Statement Information (Optional) 1.2
  4. Video: Ratio Analysis: Case Overview 1.3
  5. Video: Ratio Analysis: Dupont Analysis 1.4
  6. Video: Ratio Analysis: Profitability and Turnover Ratios 1.5
  7. Video: Ratio Analysis: Liquidity Ratios 1.6
  8. Video: Forecasting 1.7
  9. Video: Accounting-based Valuation (Optional) 1.8
  10. Reading: PDF of Lecture Slides
  11. Reading: Excel Files for Ratio Analysis

Graded: Ratio Analysis and Forecasting Quiz

WEEK 2


Earnings Management



This week we are going to examine "earnings management", which is the practice of trying to intentionally bias financial statements to look better than they really should look. Beginning with an overview of earnings management, we’ll cover means, motive, and opportunity: how managers actually make their earnings look better, their incentives for manipulating earnings, and how they get away with it. Then, we will investigate red flags for two different forms of revenue manipulation. Manipulating earnings through aggressive revenue recognition practices is the most common reason that companies get in trouble with government regulators for their accounting practices. Next, we will discuss red flags for manipulating earnings through aggressive expense recognition practices, which is the second most common reason that companies get in trouble for their accounting practices. By the end of this module, you’ll know how to spot earnings management and get a more accurate picture of earnings, so that you’ll be able to catch some bad guys in finance reporting!


6 videos, 2 readings expand


  1. Video: Module Overview: Earnings Management 2.0
  2. Video: Overview of Earnings Management 2.1
  3. Video: Revenue Recognition Red Flags: Revenue Before Cash Collection 2.2
  4. Video: Revenue Recognition Red Flags: Revenue After Cash Collection 2.3
  5. Video: Expense Recognition Red Flags: Capitalizing vs. Expensing 2.4
  6. Video: Expense Recognition Red Flags: Reserve Accounts and Write-Offs 2.5
  7. Reading: PDFs of Lecture Slides
  8. Reading: Excel Files for Earnings Management

Graded: Earnings Management

WEEK 3


Big Data and Prediction Models



This week, we’ll use big data approaches to try to detect earnings management. Specifically, we're going to use prediction models to try to predict how the financial statements would look if there were no manipulation by the manager. First, we’ll look at Discretionary Accruals Models, which try to model the non-cash portion of earnings or "accruals," where managers are making estimates to calculate revenues or expenses. Next, we'll talk about Discretionary Expenditure Models, which try to model the cash portion of earnings. Then we'll look at Fraud Prediction Models, which try to directly predict what types of companies are likely to commit frauds. Finally, we’ll explore something called Benford's Law, which examines the frequency with which certain numbers appear. If certain numbers appear more often than dictated by Benford's Law, it's an indication that the financial statements were potentially manipulated. These models represent the state of the art right now, and are what academics use to try to detect and predict earnings management. By the end of this module, you'll have a very strong tool kit that will help you try to detect financial statements that may have been manipulated by managers.


7 videos, 2 readings expand


  1. Video: Module 3 Overview 3.0
  2. Video: Discretionary Accruals: Model 3.1
  3. Video: Discretionary Accruals: Cases 3.2
  4. Video: Discretionary Expenditures: Models 3.3
  5. Video: Discretionary Expenditures: Refinements and Cases 3.4
  6. Video: Fraud Prediction Models 3.5
  7. Video: Benford's Law 3.6
  8. Reading: PDFs of Lecture Slides
  9. Reading: Excel Files for Big Data and Prediction Models

Graded: Big Data and Prediction Models

WEEK 4


Linking Non-financial Metrics to Financial Performance



Linking non-financial metrics to financial performance is one of the most important things we do as managers, and also one of the most difficult. We need to forecast future financial performance, but we have to take non-financial actions to influence it. And we must be able to accurately predict the ultimate impact on financial performance of improving non-financial dimensions. In this module, we’ll examine how to uncover which non-financial performance measures predict financial results through asking fundamental questions, such as: of the hundreds of non-financial measures, which are the key drivers of financial success? How do you rank or weight non-financial measures which don’t share a common denominator? What performance targets are desirable? Finally, we’ll look at some comprehensive examples of how companies have used accounting analytics to show how investments in non-financial dimensions pay off in the future, and finish with some important organizational issues that commonly arise using these models. By the end of this module, you’ll know how predictive analytics can be used to determine what you should be measuring, how to weight very, very different performance measures when trying to analyze potential financial results, how to make trade-offs between short-term and long-term objectives, and how to set performance targets for optimal financial performance.


8 videos, 2 readings expand


  1. Video: Introduction: Connecting Numbers to Non-financial Performance Measures 4.0
  2. Video: Linking Non-financial Metrics to Financial Performance: Overview 4.1
  3. Video: Steps to Linking Non-financial Metrics to Financial Performance 4.2
  4. Video: Setting Targets 4.3
  5. Video: Comprehensive Examples 4.4
  6. Video: Incorporating Analysis Results in Financial Models 4.5
  7. Video: Using Analytics to Choose Action Plans 4.6
  8. Video: Organizational Issues 4.7
  9. Reading: PDF of Lecture Slides
  10. Reading: Expected Economic Value Spreadsheet

Graded: Linking Non-financial Metrics to Financial Performance

Werden Sie über neue Bewertungen benachrichtigt

Es wurden noch keine Bewertungen geschrieben.

Schreiben Sie eine Bewertung

Haben Sie Erfahrung mit diesem Kurs? Schreiben Sie jetzt eine Bewertung und helfen Sie Anderen dabei die richtige Weiterbildung zu wählen. Als Dankeschön spenden wir € 1,00 an Stiftung Edukans.

Es wurden noch keine FAQ hinterlegt. Falls Sie Fragen haben oder Unterstützung benötigen, kontaktieren Sie unseren Kundenservice. Wir helfen gerne weiter!

Bitte füllen Sie das Formular so vollständig wie möglich aus

(optional)
(optional)
(optional)
(optional)

Haben Sie noch Fragen?

(optional)

Anmeldung für Newsletter

Damit Ihnen per E-Mail oder Telefon weitergeholfen werden kann, speichern wir Ihre Daten.
Mehr Informationen dazu finden Sie in unseren Datenschutzbestimmungen.