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Books > Computing & IT > Computer software packages > Spreadsheet software > General
Designed as a project and case-oriented approach to learning Excel,
the emphasis of this book is on learning by doing. The book
presents a series of progressively reinforcing problem sets, which
allow the exploration of real-life business problems. First, the
background, theory, formulas, and calculations are discussed,
followed by the design of Excel spreadsheets, which support the
creation of effective spreadsheets for these applications. Finally,
the proper solution and other related aspects are discussed,
forming a cohesive set of practical application problems. Some of
the topics explored include amortization tables, weighted averages,
cash flows, payroll calculations, break even analysis, and
spreadsheet databases. Excel techniques include formulas and
functions, cell addressing, conditional and lookup functions,
graphs, sorting, and filtering. FEATURES Provides 30 projects,
several How-to Guides, and Application Types to learn Excel skills
using problems, applications, and case studies featuring practical
business problems Explores formulas and functions, financial
functions, cell addressing, conditional functions, lookup
functions, graphs, sorting, and filtering, amortization tables,
future values of an investment, weighted averages, cash flows,
payroll calculations, break even analysis, economic order quantity,
spreadsheet databases, and more Companion files with four Excel
video tutorials and images from the text. Instructor resources
available.
The prediction of the valuation of the "quality" of firm accounting
disclosure is an emerging economic problem that has not been
adequately analyzed in the relevant economic literature. While
there are a plethora of machine learning methods and algorithms
that have been implemented in recent years in the field of
economics that aim at creating predictive models for detecting
business failure, only a small amount of literature is provided
towards the prediction of the "actual" financial performance of the
business activity. Machine Learning Applications for Accounting
Disclosure and Fraud Detection is a crucial reference work that
uses machine learning techniques in accounting disclosure and
identifies methodological aspects revealing the deployment of
fraudulent behavior and fraud detection in the corporate
environment. The book applies machine learning models to identify
"quality" characteristics in corporate accounting disclosure,
proposing specific tools for detecting core business fraud
characteristics. Covering topics that include data mining; fraud
governance, detection, and prevention; and internal auditing, this
book is essential for accountants, auditors, managers, fraud
detection experts, forensic accountants, financial accountants, IT
specialists, corporate finance experts, business analysts,
academicians, researchers, and students.
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