A TOOL FOR MEASURING INDIVIDUAL INFORMATION
COMPETENCY ON AN ENTERPRISE INFORMATION SYSTEM
Chui Young Yoon, In Sung Lee and Byung Chul Shin
School of Electrical, Electronic & Computer Engineering, Chungbuk National University
410 Sungbong-ro, Heungduk-gu, Cheongju city, Chungbuk, 361-763, South Korea
Keywords: Information competency, Measurement factor, Measurement tool, Measurement system.
Abstract: This study presents a tool that can efficiently measure individual information competency to execute the
given tasks on an enterprise information system. The measurement items are extracted from the major
components of a general competency. By factor analysis and reliability analysis, a 14-item tool is proposed
to totally measure individual information capability. The tool’s application and utilization are confirmed by
applying it to measuring the information competency of the individuals in an enterprise.
1 INDIVIDUAL INFORMATION
COMPETENCY
In this study, an individual is defined as a person
who directly interacts with his or her information
systems based on previous studies (Rockart and
Flannery, 1983; Martin, 1982). Competency is a
total set of knowledge, skills, and attitudes as the
action characteristics of an organizational member
that can do his or her tasks outstandingly and
efficiently in an organizational environment
(Mirable, 1997; Arthey and Orth, 1999; Rodriguez et
al., 2002). In general competency, individual
characteristics such as motives, traits, self-concepts
and knowledge lead to skills, and the action of a
person with skills has an effect on the performance
of his or her business in an organizational
environment (Spencer and Spencer, 1993). Namely,
information competency can be defined by
transforming a general competency into a type of
competency in an information perspective.
Hence, the individual information competency
(IIC) can be defined as a total set of knowledge,
technology, skills, and attitudes which function as
action characteristics of an organizational member
who can do his or her tasks outstandingly and
efficiently on an enterprise information system. With
these studies, we generated the first 24 items for
efficiently measuring an IIC on an enterprise
information system.
2 RESEARCH METHODS
In previous literature, most studies presented two
methods of model construct validation (Etezadi-
Amoli and Farhoodmand, 1996; Torkzadeh and Doll,
1999; and Torkzadeh and Lee, 2003): (1)
correlations between total scores and item scores
(Torkzadeh and Doll, 1999; Torkzadeh and Lee,
2003), and (2) factor analysis (Etezadi-Amoli and
Farhoodmand, 1996; Torkzadeh and Lee, 2003).
This study used factor analysis and reliability
analysis to verify the tool construct and to extract
adequate items for measuring an IIC. The
measurement questionnaire used a five-point Likert-
type scale from 1 (not at all) to 5 (very good). The
survey was gathered data from a variety of industries
and business departments. A sample of 258 usable
responses was identified in business departments as
follows: strategy planning (20.9%), development
and maintenance (26.8%), business application
(38.4%), and administration support (13.9%).
3 ANALYSIS AND DISCUSSION
After factor analysis and reliability analysis, the first
24 measurement items were reduced to 14 items,
with 10 items were deleted. The elimination was
considered sufficient to ensure that the retained
items were adequate measures of IIC. These
analyses were used to identify the underlying factors
or components that comprise the IIC construct. Each
289
Yoon C., Lee I. and Shin B. (2009).
A TOOL FOR MEASURING INDIVIDUAL INFORMATION COMPETENCY ON AN ENTERPRISE INFORMATION SYSTEM.
In Proceedings of the 11th International Conference on Enterprise Information Systems - Artificial Intelligence and Decision Support Systems, pages
289-292
DOI: 10.5220/0001855202890292
Copyright
c
SciTePress
of the 14 items had a factor loading > 0.635. The
reliability coefficients (Cronbach’s alpha) of four
potential factors had values > 0.792, above the
threshold recommended for exploratory research
(Rodriguez, Patel, Bright, and Gowing, 2002).
Table 1: Factor loadings obtained from factor analysis.
0.727V23
0.635V24
0.786V21
0.723V18
0.719V17
0.781V16
0.894V14
0.702V12
0.713V11
0.787V10
0.839V08
0.642V06
0.713V03
0.754V01
Factor 4Factor 3Factor 2Factor 1
Factor Loadings
Variable
0.727V23
0.635V24
0.786V21
0.723V18
0.719V17
0.781V16
0.894V14
0.702V12
0.713V11
0.787V10
0.839V08
0.642V06
0.713V03
0.754V01
Factor 4Factor 3Factor 2Factor 1
Factor Loadings
Variable
* Significant at P 0.01
The descriptions and loadings for the 14 items are
presented in Table 1 and Table 2.
Table 2: Corrected item-total correlations and coefficient
alpha for each factor.
Coefficient alpha for the above 3 items as a composite measure of Factor =0.798
0.5930.624V24
0.7380.712V23
0.7240.692V21
Coefficient alpha for the above 4 items as a composite measure of Factor =0.901
0.7980.738V18
0.8360.634V17
0.7780.826V16
0.8520.743V14
Coefficient alpha for the above 4 items as a composite measure of Factor =0.884
0.7230.629V12
0.8210.817V11
0.8480.714V10
0.8470.781V08
Coefficient alpha for the above 3 items as a composite measure of Factor =0.792
0.6270.678V06
0.7240.689V03
0.8120.728V01
Alpha if item deleted
Corrected item-total
correlation
Variable
Coefficient alpha for the above 3 items as a composite measure of Factor =0.798
0.5930.624V24
0.7380.712V23
0.7240.692V21
Coefficient alpha for the above 4 items as a composite measure of Factor =0.901
0.7980.738V18
0.8360.634V17
0.7780.826V16
0.8520.743V14
Coefficient alpha for the above 4 items as a composite measure of Factor =0.884
0.7230.629V12
0.8210.817V11
0.8480.714V10
0.8470.781V08
Coefficient alpha for the above 3 items as a composite measure of Factor =0.792
0.6270.678V06
0.7240.689V03
0.8120.728V01
Alpha if item deleted
Corrected item-total
correlation
Variable
In order to research the reliability and validity of the
measures, we calculated the corrected item-total
correlations between each variable and its
corresponding factor. This also shows the alpha
coefficients for the measurement of factors if a
measure was deleted from the scale. These
coefficients indicate the relative contribution of a
measure to the construction of a scale for measuring
a particular factor. They are all in the acceptable
range. Most corrected item-total correlations were
greater than 0.600, showing that the individual
measures are good indicators of their corresponding
factors. Each of the 14 items had a corrected item-
total correlation > 0.624. The correlation for each
item was positive and significant (p = 0.01 or below).
Hence, the measurement items with a validity and
reliability were extracted by carrying two analyses
as shown in Table 1 and Table 2. However, efforts
to present additional evidence of this tool’s validity,
internal consistency, and stability are encouraged.
4 MEASUREMENT TOOL
The extracted 14 items were classified as 4 factor
groups. The 4 factor groups indicate the potential
factors that can measure the IIC. With researching
the measurement items of each factor, we identified
the 4 potential factors as shown in Figure 1.
Information Understanding (IU)
IU01 Do you understand the Internet and information society ?
IU03 Do you know IT progress trends in IT leading countries ?
IU06 Do you consider an etiquette in using your information systems ?
Information Knowledge (IK)
IK08 Do you know hardware, software, networks, and database for your information systems ?
IK10 Do you have solution knowledge related to ERP, SCM, CRM, and e-Commerce ?
IK11 Do you know how to use B2E, B2C, and B2B on your information systems ?
IK12 Do you know how to establish security measures on your information systems ?
Information Application (IA)
IA14 Can you use word processing, spreadsheets, and presentation in on your information systems ?
IA16 Can you use the solutions such as ERP, SCM, CRM, and E-Commerce ?
IA17 Can you apply your information systems to B2E, B2C, and B2B ?
IA18 Can you establish and manage information security measures on your information systems ?
Information Potential (IP)
IP21 How long did you work at IT departments ?
IP23 How many did you participate in overseas or domestic educations and trainings related to IT ?
IP24 How many did you present your articles and ideas for a task improvement on your enterprise’s
webpage ?
Information Understanding (IU)
IU01 Do you understand the Internet and information society ?
IU03 Do you know IT progress trends in IT leading countries ?
IU06 Do you consider an etiquette in using your information systems ?
Information Knowledge (IK)
IK08 Do you know hardware, software, networks, and database for your information systems ?
IK10 Do you have solution knowledge related to ERP, SCM, CRM, and e-Commerce ?
IK11 Do you know how to use B2E, B2C, and B2B on your information systems ?
IK12 Do you know how to establish security measures on your information systems ?
Information Application (IA)
IA14 Can you use word processing, spreadsheets, and presentation in on your information systems ?
IA16 Can you use the solutions such as ERP, SCM, CRM, and E-Commerce ?
IA17 Can you apply your information systems to B2E, B2C, and B2B ?
IA18 Can you establish and manage information security measures on your information systems ?
Information Potential (IP)
IP21 How long did you work at IT departments ?
IP23 How many did you participate in overseas or domestic educations and trainings related to IT ?
IP24 How many did you present your articles and ideas for a task improvement on your enterprise’s
webpage ?
Individual
Information
Competency
(IIC)
Information
Understanding
(IU)
Information
Application
(IA)
Information
Knowledge
(IK)
Information
Potential
(IP)
V01 V03 V06 V08 V11 V12 V14 V17 V18 V21 V23 V24
V10 V16
Figure 1: Structure of the developed measurement tool.
These are considered as the major measurement
factors of the tool construct. Figure 1 shows the
structure of the measurement tool with the 4
potential factors and 14 measurement items. Each
factor has three or four measurement items, and each
item is composed of two or three measurement
problems from the measurement problem database.
As presented in Figure 1, the information
understanding is the realm where measures concepts,
attitude, and adaptability on information. The
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information knowledge indicates the knowledge that
an individual has to know to efficiently apply
information solutions and systems to his or her tasks.
The information application means the ability that an
individual effectively apply information knowledge,
solutions, and systems to his or her tasks. The
information potential refers to the potential
development probability of the IIC by job
experience, participation of domestic and overseas
educations and trainings, and presentation of articles
and ideas for a task improvement on the enterprise
website.
Hence, this tool with 4 factors and 14 items is an
important theoretical construct to measure an
individual’s total information ability.
5 MEASUREMENT SYSTEM
The measurement system, Figure 2, is comprised of
two main processes including the measurement stage
and interpretation stage.
Start
Measurement Tool
(Information understanding,
Knowledge, Application,
and Information Potential)
Measurement
Problem
Database
Performing
Measurement or Checking
Results ?
Extraction of Measurement Problems
(4 Factors/14 Items)
Measurement Execution
(Questionnaire, Written,
and Application Test)
Measurement System
(ID/PW)
Personal
Information
Database
Analysis of Measurement Results
(Extraction of Measurement Index)
Presentation of Measurement Results
(Problems and Improvement Methods)
Weight Values
Database
(4 Factors)
End
Measurement
Results
Database
Check
Perform
Figure 2: Framework of the measurement system.
The former extracts the problems based on each
measurement factor and its items from the problem
database. The problems have three kinds of problem
forms such as a questionnaire test, a written test, and
an application test based on the peculiarity of each
factor. After generating the measurement problems,
the tool examines an individual by the extracted
problems. The results are analyzed by extracting the
measurement values of each factor, and by applying
each weight value to the values of each factor. The
latter explained the measurement results based on
each measurement index extracted from each factor.
The interpretation presents the present states and
problems of the IIC, and the directions and methods
to efficiently improve the IIC.
5.1 Measurement Method
This study used the weight values for each factor in
order to develop an objective and efficient tool
considered the relative importance of each factor in
measuring the IIC as shown in Table 3.
Table 3: Weight value of each measurement factor.
The measurement index (MI) means the value
extracted by multiplying the weight value by the
measurement value of each factor. The sum of the
measurement indices of each factor becomes the
total MI of the individual. In this way, this tool
presents the measurement results of the IIC based on
the total MI and the MI of each factor.
6 CASE STUDY
AND DISCUSSION
This case study applied the developed tool to 163
workers working in “B” enterprise, South Korea.
The business departments of respondents were
identified as follows: the strategy plan department:
23.1%; development and maintenance department:
21.3%; business application department: 37.4% and
administration support department: 18.2%.
First, we present the measurement results of each
business department of the overall organization as
shown in Figure 3. Total MI of the organization was
61.58. The business application department (BAD)
were 65.78. The MI of the BAD was higher than
those of the other departments. This is due to the
ability to effectively accomplish their tasks by
frequently applying information knowledge,
solutions, and systems to their tasks on an enterprise
information system.
0.20Information Potential
0.33Information Application
0.25Information Knowledge
0.22Information Understanding
Weight ValueMeasurement Factor
0.20Information Potential
0.33Information Application
0.25Information Knowledge
0.22Information Understanding
Weight ValueMeasurement Factor
A TOOL FOR MEASURING INDIVIDUAL INFORMATION COMPETENCY ON AN ENTERPRISE INFORMATION
SYSTEM
291
Total
Measurement
Index
Strategy
Plan
Department
Development &
Maintenance
Department
Business
Application
Department
Administration
Support
Department
61.58
62.12
60.34
65.78
58.09
40
50
60
70
80
Figure 3: Measurement indices of each business
department and overall organization.
Second, the measurement results of an individual
working in the administration support department
(ASD) were presented as a sample. The MI of each
factor was generated by multiplying each weight
value by the measurement value of each factor. The
total MI of an individual is the sum of the
measurement indices of each factor as shown in
Table 4.
Table 4: Extraction process of the total measurement index
for an individual.
63.0911.2921.2415.0315.53
Calculation of Total
Measurement Index
1.000.200.330.250.22
Weight Values of
Each Factor
-56.4664.3760.1261.48
Measurement Indices
of Each Factor
Total
Measurement
Index
Information
Potential
Information
Application
Information
Knowledge
Information
Understanding
Division
63.0911.2921.2415.0315.53
Calculation of Total
Measurement Index
1.000.200.330.250.22
Weight Values of
Each Factor
-56.4664.3760.1261.48
Measurement Indices
of Each Factor
Total
Measurement
Index
Information
Potential
Information
Application
Information
Knowledge
Information
Understanding
Division
The individual MI was 63.09. The MI of the
information application was a little high. This means
the outstanding application ability that the individual
can apply the information knowledge, solutions, and
systems to his or her given tasks on an enterprise
information system. But the information potential
was very low.
63.09
61.48
60.12
64.37
56.46
40
50
60
70
80
Total
Measurement
Index
Information
Understanding
Information
Knowledge
Information
Application
Information
Potential
Figure 4: Measurement indices of an individual in the
ASD.
Hence, this individual should endeavour after IT
educations and trainings, job experience, and
presentation of articles on the firm’s website in order
to efficiently raise his or her total information ability.
7 CONCLUSIONS
This tool can be used in measuring an IIC to perform
the given tasks on an enterprise information system.
This presents the concrete items, process, and
method to measure the IIC. Hence, this 14-item tool
maybe provides a new direction and foundation for
developing the efficient measures for an IIC.
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