Title: BUSINESS ANALYSIS AND FINANCIAL POLICY
1BUSINESS ANALYSIS AND FINANCIAL POLICY
- UPSA LEVEL 300
- Mr. Charles Barnor, Mr. Danaa Nantogmah and Mr.
K. Fosu-Boateng
2Week 1Introduction to Business Analysis and
Financial Policy
- INTRODUCTION Week 1
- BUSINESS STRATEGY ANALYSIS Week 23
- INVESTIGATION TECHNIQUES Week 4-5
- CONSIDER PERSPECTIVES Week 6
- ANALYSE NEEDS Week 7
- CASE STUDY PRESENTATIONS Week 8
- INTERIM ASSESSMENTS Week 9
- EVALUATE OPTIONS Week 10
- CORPORATE FINANCIAL POLICY DECISIONS Week 11
- DEFINE REQUIREMENTS Week 12
- REVISION Week 13
3Topic 1Introduction to Business Analysis and
Financial Policy
- The rationale for business analysis
- The development of business analysis
- The scope of business analysis
- The responsibilities of a business analyst
- The Business Analysis Maturity Model
- The competencies of a business analyst
4Introduction
- Business analysis is the set of task and
techniques use to work as a liaison among
stakeholders in order to understand the
structure, policies and operations of an
organization, and recommend solutions that will
enable an organization to achieve its goals
(International institute of business analysis,
2008). - The development of business analysis as a
professional discipline has extended the role and
responsibilities of the business analyst (BA).
Business analysts investigate ideas and problems,
formulate options for a way forward and produce
business cases setting out their conclusions and
recommendations.
5The development of business analysis
- Business analysts have responsibility for the
following areas - Identifying the tactical options that will
address a given situation and will support the
delivery of the business strategy - Defining the tactics that will enable the
organization to achieve its strategy - Supporting the implementation and operation of
those tactics - Redefining the tactics after implementation to
take account of business changes and to ensure
continuing alignment with business objectives
6There is a chain of reasoning that leads from the
statement of a problem to the implementation of
solutions
7Chain Of Reasoning
Stakeholders
- Change Requirements must be assumed to be wrong
until they are proved to be right
8Fundamental Components of Business Analysis
9All the Links in the Chain Of Reasoning
Description
Driver
The problems / opportunities that the business
face
Addressed as measured by
The measures and targets that will enable us to
declare the change project has been successful
business Objective
Delivered by
Definitions of what changes are required that
will affect the measures of success (objectives)
sufficiently for the business to be declared
successful
Change Requirement
Enforces
What rules must be implemented by the changes
specified in the requirements
Business Rule
10Business Analysis
11Business Analysis
- Purpose
- Identify where the business stands in relation
to rivals, etc. - Collect and use data to inform business decision
making - Identify strengths and weaknesses in the
business - Use information to inform strategic planning
12Business Analysis
- Method
- Collection of data from a range of sources
- Market research
- Past sales data
- Market growth data
- Specialist analyst data
- Secondary data, e.g. Mintel
13Data
14Analysis
- Range of methods used to analyse data
- Trends
- Growth rates
- Nominal
- Average
- Mean
- Median
- Mode
- Variance
- Standard deviation
- Range
- Time series analysis
- Scatter graphs
- Correlation
15Trends
- Looking for patterns in data collections
- Frequency and reliability of trends
- Impact of external factors, e.g. seasonal
variation, random events, cyclical trends
16Averages
- Averages are a measure of central tendency the
most likely or common item in a data series - Calculated through 3 measures
- Mean
- Median
- Mode
17Averages
- Mean Sum of items in the series/number of
items - X Sx
- x
- Median middle number in a data series 0.5
(n1) - Mode the most frequently occurring value in a
data series -
18Variance
- Averages have limitations measures of data
spread used to assess width - Range difference between the highest and the
lowest value - Standard Deviation used to measure the variance
of the data set from the mean can highlight
how reliable the mean is as being representative
of the data set
19The Standard Deviation
S (xi x )2
S
n
20Correlation
- The degree to which there is a relationship
between two or more random variables - The closer the relationship the higher the degree
of correlation - Perfect correlation would be where r 1
21Time-Series Analysis
- Used to analyse movements of a variable over a
time period usually years, quarters, months,
etc. - Importance of assessing the
- Trend
- Seasonality
- Key moments
- Magnitude
22Presentation
- Graphs
- Charts
- Tables
- Index numbers Method of showing average changes
in large amounts of data - Laspeyres Uses a base period weighting
measurement - Paasche Uses a current price weighting
measurement
23Forecasting
24Qualitative
- Focus groups - a group of individuals selected
and assembled by researchers to discuss and
comment on, from personal experience, a topic,
issue or product - User groups similar to focus groups but
consisting of those who have experience in the
use of a product, system, service, etc. - Panel surveys repeated measurements from the
same sample of people over a period of time - Delphi method calls on the expertise and
insights of a panel of experts to help with
forecasting seen as being more reliable than
data analysis only - Could be drawn together from around the world as
there is no need to have people together at the
same time - In-house judgements Use the expertise and
judgements of those involved in the business in
aiding and making judgements
25Quantitative
- Makes use of all the statistical data collected
by the firm and by other firms/organisations to
help inform decision making - Surveys
- Sales data
- Impact on sales
- Primary data collected by the firm themselves
- Data collected by others and used by the firm,
e.g. Office of National Statistics (ONS), Gallup,
Mori, Mintel
26Forecasting
- Advantages and disadvantages
- Data from several years can give accurate guides
to future performance - Statistical techniques can make the data
informative and useful - All depends on the quality of the data and the
accuracy of the techniques used to analyse the
data
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