100% tevredenheidsgarantie Direct beschikbaar na je betaling Lees online óf als PDF Geen vaste maandelijkse kosten 4.2 TrustPilot
logo-home
Samenvatting

Data Analytics in Accounting: Samenvatting

Beoordeling
-
Verkocht
1
Pagina's
50
Geüpload op
29-05-2025
Geschreven in
2024/2025

Data Analytics in Accounting: Samenvatting

Instelling
Vak











Oeps! We kunnen je document nu niet laden. Probeer het nog eens of neem contact op met support.

Geschreven voor

Instelling
Studie
Vak

Documentinformatie

Geüpload op
29 mei 2025
Aantal pagina's
50
Geschreven in
2024/2025
Type
Samenvatting

Onderwerpen

Voorbeeld van de inhoud

DATA ANALYTICS IN ACCOUNTING
CHAPTER 1
Data analytics is revolutionizing both the business landscape and the accounting profession.

This chapter:

- Understand the core concepts of data analytics and its transformative impact.
- Defining data analytics + insights it provides to businesses and accounting professionals.
- Importance of adopting an analytics mindset.
- IMPACT cycle: data analytics process and how it can be applied to address critical questions in
business and accounting.

1. GENERAL INTRODUCTION
Define data analytics

- Data analytics = the process of transforming and evaluating data with the purpose of drawing
conclusions to address business questions
- Effective DA provides a way to search through large structured and unstructured data to identify
unknown patterns or relationships
- Goal: transform (big) data into valuable knowledge to make more informed business decisions
- Big data = datasets which are too large and complex to be analysed traditionally
- Remember the 4V’s:
o Volume = size
o Velocity = speed of processing
o Variety = different types of data
o Veracity = data quality


How does DA affect business?

- By the numbers:
o Global volume of data created: hundreds of zettabytes/year
o 85% of CEOs put a high value on DA
o 86% of CEOs place data mining and analysis as 2 nd most important strategic technology
o Business analytics tops CEO’s list of priorities
o DA could generate up to $2 trillion in value per year
- DA is expected to have dramatic effects on auditing and financial reporting + tax and managerial
accounting

How does DA affect auditing?

- DA enhances audit quality
- Audit process is changing from a traditional toward a more automated process
- DA enables enhanced audits, expanded services, and added value to clients



1

,How does DA affect management accounting?

- DA enhances cost analysis
- DA enables better decision-making
- DA enables better forecasting, budgeting, production, and sales

How does DA affect financial reporting?

- Accountants make better estimates of collectability, write-downs, …
- Managers better understand the business environment through social media + other external
date sources
- Analysts identify risks and opportunities through analysis of internet searches

2. INTRODUCTION IMPACT MODEL
How does DA make an IMPACT

- I: identify the questions
- M: master the data
- P: perform the test plan
- A: address and refine results
- C: communicate insights
- T: track outcomes

Step 1: identify the questions

Understand the business problems that need to be addressed

Attributes to consider:

- What data do we need to answer the question?
- Who is the audience that will use the results?
- Is the scope of the question too narrow or too broad?
- How will the results be used?

Step 2: master the data

Consider the following 8 elements

- Know what data are available and how they relate to the problem
- Data available in Internal systems
- Data available in External networks and data warehouses (e.g. government data)
- Data dictionaries (details about variables: categorial, …)
- ETL (extraction, transformation, and loading)
- Data validation and completeness (ensure that data is reliable)
- Data normalization (reduce data redundancy)
- Data preparation and scrubbing (cleaning data to remove errors, irrelevant information)

Step 3: perform the test plan



2

,Identify a relationship between the response (or dependent) variable and those items that affect the
response (predictor = explanatory = independent variables)

Generally, we make a model, or a simplified representation of reality to address this purpose

For example, predict the performance on the next accounting exam:
- The response/dependent variable: score on the exam
- The independent variables: study time, IQ, score on last exam, …

8 key approaches to DA depending on the question (Provost and Fawcett):

- Classification: assign each unit in a population to a specific pre-defined category or class
o E.g. whether a law should be approved or denied
- Regression: predict a continuous dependent variable’s value based on independent variable
inputs using a statistical model
o Can help to set a relationship between variables
- Similarity matching: identify similar individuals or items based on known data
o Focusses on pairwise matching, not big groups
o E.g. address data “123 Main St.” Vs. “123 Main Street”)
- Clustering: divide individuals or items into meaningful or useful groups (without predefined
categories)
o Segmenting customers based on shopping frequency, …
o No predefined categories
- Co-occurrence grouping: discover relationships between individuals/items based on shared
transactions
o Observed associations
- Link Prediction: predict connections/relationships between two data items
o Unobserved associations
- Profiling: characterise the typical behaviour of an individual, group, or population by generating
summary statistics about the data
o Describe, rather than group
- Data reduction: reduce the amount of information being analysed to focus on the most critical
and relevant elements




3

, Step 4: address and refine results

- Identify issues with the analyses, possible issues, and refine the model
- Ask further questions
- Explore the data
- Rerun analyses

Step 5 & 6: communicate insights & track outcomes

Step 5:

- Communicate effectively using clear language and visualisations
- Dashboards
- Static reports
- Summaries

Step 6:

- Follow up on the results of the analysis
- How frequently should the analysis be performed
- Have the analytics changed
- What are the trends

What DA skills do accountants need

- Articulate business problems
- Communicate with data scientists
- Draw appropriate conclusions
- Present results in an accessible manner
- Develop an analytics mindset  7 important areas:
o Know when and how data analytics can address business questions
o Data scrubbing and data preparation
o Data quality
o Descriptive data analysis

4
€8,89
Krijg toegang tot het volledige document:

100% tevredenheidsgarantie
Direct beschikbaar na je betaling
Lees online óf als PDF
Geen vaste maandelijkse kosten

Maak kennis met de verkoper
Seller avatar
HIRstudent123

Maak kennis met de verkoper

Seller avatar
HIRstudent123 Katholieke Universiteit Leuven
Volgen Je moet ingelogd zijn om studenten of vakken te kunnen volgen
Verkocht
11
Lid sinds
2 jaar
Aantal volgers
5
Documenten
14
Laatst verkocht
4 maanden geleden

0,0

0 beoordelingen

5
0
4
0
3
0
2
0
1
0

Recent door jou bekeken

Waarom studenten kiezen voor Stuvia

Gemaakt door medestudenten, geverifieerd door reviews

Kwaliteit die je kunt vertrouwen: geschreven door studenten die slaagden en beoordeeld door anderen die dit document gebruikten.

Niet tevreden? Kies een ander document

Geen zorgen! Je kunt voor hetzelfde geld direct een ander document kiezen dat beter past bij wat je zoekt.

Betaal zoals je wilt, start meteen met leren

Geen abonnement, geen verplichtingen. Betaal zoals je gewend bent via iDeal of creditcard en download je PDF-document meteen.

Student with book image

“Gekocht, gedownload en geslaagd. Zo makkelijk kan het dus zijn.”

Alisha Student

Veelgestelde vragen