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BUS1MIS Management Information Systems
Semester 1, 2012
Week 6 Lecture 1
Data, Databases, Data Warehouses, Information and Business Intelligence
Learning objectives
Ref. Chapter 6 (Text)
• Describe the level, format and granularity of organisational information.• List, describe and provide an example of each of the five characteristics of high quality
information.• Define the relationship between a database and a database management system• Describe the advantages an organisation can gain by using a database• Describe the roles and purposes of data warehouses and data marts in an organisation• Compare the multidimensional nature of data warehouses (and data marts) with the two-
dimensional nature of databases• Identify the importance of ensuring the cleanliness of information throughout an organisation• Explain the relationship between business intelligence and a data warehouse
Data Warehouses and Business Intelligence
The use of data warehouses to generate business intelligence has been shown to create competitive advantages.
Database Data Warehouse Business Intelligence
Data Warehouses and Business Intelligence
The use of data warehouses to generate business intelligence has been shown to create competitive advantages.
For example: Samsung Electronics (see p. 256 of the Textbook)
Business Intelligence
Examples:
TV Broadcasting – predicting what programs and advertisements are best to air during prime time.
Retail – predicting correct inventory levels
Law enforcement – tracking crime patterns
See a Business Intelligence Dashboard example
Organisational data comes in different formats and granularities, and at different levels
Understanding Organisational Data (Information)
Granularity
Understanding Organisational Data (Information)
Transactional Data – full detail
Understanding Organisational Data (Information)
Analytical Data – summary
Understanding Organisational Data (Information)
Management of Organisational Data
Appropriate management of organisational data means that for a particular context the data is:
• Of the appropriate granularity (transactional or analytical), level and format • Timely • Of High Quality
The effective management, access and analysis of organisational data leads to high quality information (business intelligence) and high quality decision making.
Management of Organisational Data
Timeliness
Timeliness is an aspect of information that depends on the situation:
Real-time information – immediate, up-to-date information. For example, emergency centers, banks, Web Jet.
Batch-updated information - sometimes information that is several days or weeks old may still be relevant in decision making --- it all depends on the situation. For example, Music Australia
High Quality
Characteristics of high-quality information include:
• Accuracy (all values correct?)• Completeness (is anything missing?)• Consistency (is the aggregate information consistent with the
individual items?)• Uniqueness (is each transaction only recorded once? ) • Timeliness (real time? Batch update?)
[See table 6.1 p. 258 Text]
Management of Organisational Data
An example of low quality information
[Fig 6.3 p. 259 Text]
Management of Organisational Data
• For efficient access organisational data should be stored in a database.
• The database needs to be designed so there is no redundant data (see Lecture 2 Week 6)
• A quality database management system (DBMS) should be used to manage and query a database
Efficient Access to Organisational Data
The business advantages of using a database and DBMS include:
• Increased flexibility
• Increased scalability and performance
• Reduced information redundancy
• Increased information integrity (quality)
• Increased information security
Flexibility: a user can access data in a way that suits his/her needs
Scalability: how well a system can adapt to increased demands
Performance: how quickly the system can perform transactions or processes
Redundancy: the duplication of information
Integrity: the quality of the information
Security: levels of access to data through passwords and access controls
Efficient Access to Organisational Data
Analysis of Organisational Data
It is difficult for an organisation to efficiently and effectively analyse its data if the data is transactional and stored in multiple databases.
It is better to aggregate the data (count, total, average, etc.) and store it in a data warehouse where it can be used for decision-making purposes.
ETL – extract, transform and load
Data Mart – a subset of a data warehouse focused on the needs of a single business unit, eg. finance.
Databases contain information in a series of two-dimensional tables (rows and columns).
In a data warehouse and data mart, information is multi-dimensional, in cubes, rather than tables.
Cube a represents all store information, all product information and all promotional information
Analysis of Organisational Data
Cube b represents promotion II information for all stores and all product s
Analysis of Organisational Data
Cube c represents promotion III information for store 2 and product B
Analysis of Organisational Data
An organisation must maintain high-quality data in the data warehouse
Information cleansing or scrubbing – a process that weeds out and fixes or discards inconsistent, incorrect, or incomplete information
e.g. standardising customer name
Analysis of Organisational Data
Data warehouse
Data mining – the process of analysing data to extract information not offered by the raw data alone
Data-mining tools help users uncover business intelligence (BI), eg.
Cluster analysis – a supermarket chain analysed the buying behaviours of its large number of loyalty card holders. A number of clusters were identified statistically and targeted advertising campaigns were developed.
Analysis of Organisational Data