Title: Dissertation Proposal
1Dissertation Proposal
- Title A study of performance and effort
expectancy factors among generational and gender
groups to predict enterprise social software
technology acceptance - Presented by Sunil Patel
2Background / Need for the Study / Purpose of the
Study
- Background Social software usage in
non-business contexts has risen significantly in
the last decade - Web 2.0 software technology gives rise to
Enterprise Social Software (ESS) - Companies across industries are increasingly
investigating ESS for usage in the context of
business to support business objectives such as
enhancing employee productivity - Need for the study Technology adoption
(acceptance) is a critical success factor to
successful IT delivery - Ample research literature exists on general
technology acceptance, but little exists on IT
managers perceptions of ESS technology
acceptance - Age and gender have shown differing patterns on
technology acceptance - Purpose of the study Examine IT managers
perceptions of ESS usefulness (PU), ease of use
(PEOU), and behavioral intention (BI) to use ESS
to determine if differences exist between the
managers, generations or gender types or if
relationships exist with age, gender
Pg. 1-11
3Research Questions
Link Detailed Hypotheses
- IT Acceptance Factors Is there a relationship
between variables of IT managers' behavioral
intention to use ESS, perceived usefulness, and
perceived ease of use? Is there a moderating
variable? - Age Is there a relationship or difference
between IT managers' age and generational groups
and the variables of perceived usefulness,
perceived ease of use, and behavioral intention
to use ESS? - Gender Is there a relationship or difference
between IT managers' gender and the variables of
perceived usefulness, perceived ease of use, and
behavioral intention to use ESS? - All variables Is there a relationship or
difference between IT managers' behavioral
intention to use ESS and the variables of age,
generation, gender, perceived usefulness, and
perceived ease of use?
Pg. 11-12
4Literature Review
Link Theoretical Model
Link Variables / Analyses
- IT Acceptance Factors Perceived usefulness
(PU), Perceived Ease of Use (PEOU), and
Behavioral Intention (BI) to use ESS - Studies indicate individuals are more apt to use
technology to the extent it will (a) increase
performance through usefulness and (b) decrease
effort required through ease of use - Technology acceptance factors in the context of
IT / social software - Social software Lane Coleman, 2011 Wattal,
Racherla Mandviwalla, 2009 - General IT and voluntariness Brown, Massey,
Montoya-Weiss Burkman, 2002 - IT and productivity enhancement Lehr
Lichtenberg, 1999 - Age and Generational Groups / Technology
Acceptance - Aging workforce as a business dynamic
- Studies indicate differing IT acceptance patterns
among generational groups - Generational cohort-groups theorized to have
differing patterns of identifying traits (Strauss
Howe, 1994) - Online communities and ubiquitous technologies
(Chung et al., 2010) - Other studies supporting age as moderating factor
in IT acceptance decisions (Morris Venkatesh,
2000 Morris, Venkatesh Ackerman, 2005)
Pg. 16-22
5Literature Review, cont.
Link Theoretical Model
Link Variables / Analyses
- Gender Types / Technology Acceptance
- One of the first studies on the influence of
gender on IT acceptance factors performed just
over 14 years ago - Research supports gender differences with general
technology acceptance although little empirical
data exists in context of enterprise social
software - Gender differences on acceptance of e-mail
technology (Gefen Straub, 1997) - Differing salience to technology usage and ease
of use between gender types (Minton Schneider,
1980 Morris, Venkatesh Ackerman, 2005
Venkatesh Morris, 2000 Wattal, Racherla
Mandviwalla, 2009)
Pg. 22-23
6Methodology
Link Theoretical Model
Link Variables / Analyses
- Correlation-research design
- IT managers in the U.S. are in scope for this
study - Population consists of over 288,000 IT Managers
(U.S. BLS, 2010) - Sample size of 384 necessary based on alpha set
to .05 and power set to .80 - Instrumentation
- Perceived Usefulness Ease of Use scale (Adapted
from Venkatesh Davis, 1996) - Item grouping and analysis did not indicate
artificial inflation or deflation of reliability
/ validity (Davis, Bagozzi Warshaw, 1989 Davis
Venkatesh, 1996) - Validity and reliability are consistent through
numerous replication studies - Adams, Nelson Todd 1992 Davis, Bagozzi
Warshaw, 1989 Hendrickson, Massey Cronan 1993
Igbaria Iivari, 1995 Segars Grover 1993
Subramanian, 1994 Szajna, 1994 - Reliability Cronbachs alpha remained at over
.90 in above listed studies - Validity High discriminant / factorial validity
as measured by correlation coefficient (r)
Pg. 26-31
7Methodology, cont.
Link Theoretical Model
Link Variables / Analyses
Link Detailed Hypotheses
- Data Collection Procedures
- Online panel research survey firm to collect data
(e.g. ResearchNow, Qualtrics) - Recruitment email sent to panel participants
meeting the criteria specified for studys
population (i.e. IT managers in U.S.) - Survey open 45 days or until minimum number of
valid responses received - Data Analysis
- Independent and Dependent Variables List
(Reference Table 4, p. 34) - Run data for descriptive, inferential, and
multivariate analyses - Tests of statistical significance (significant at
p lt .05) - Pearsons r (Ho1a, Ho1b, Ho2a, Ho3a, Ho4a)
- Wilks Lambda for MANOVAs (Ho2b, Ho3b, Ho4b)
Pg. 32-42
8Status and Next Steps
- Human Subjects Approval Status
- IRB Approval granted on April 19, 2012 (No.
12-192) - Next Steps
- Proceed with online panel research survey firm to
publish informed consent notice and instrument
items - Collect data, complete Chapters 4 and 5
- Review, schedule dissertation defense (July)
- Seek publication
- Option 1 Performance Improvement Quarterly
(PIQ) - Option 2 Human Resource Development Quarterly
(HRDQ)
9Backup
10Theoretical Framework
Link Literature Review
Link Methodology
Link Variables / Analyses
Pg. 33
11Hypotheses Analysis and Variable Types
Link Literature Review
Link Methodology
Link Theoretical Model
Pg. 33
12Hypotheses Analysis and Variable Types, cont.
Link Literature Review
Link Methodology
Link Theoretical Model
Pg. 34
13Hypotheses Analysis and Variable Types, cont.
Link Literature Review
Link Methodology
Link Theoretical Model
Pg. 35
14Research Questions and Hypotheses
Link Research Questions
Link Methodology
Link Theoretical Model
- Is there a relationship between variables of IT
managers' behavioral intention to use ESS
technology, perceived usefulness, and perceived
ease of use? - Ho1a There is no statistically significant
relationship between IT managers' perceived
behavioral intention to use ESS technology and
variables of perceived usefulness and perceived
ease of use. - Ho1b IT managers' perceived ease of use is not
positively related to perceived usefulness. - Is there a relationship or difference between IT
managers' age and generational groups and the
variables of perceived usefulness, perceived ease
of use, and behavioral intention to use ESS
technology? - Ho2a There is no statistically significant
relationship between IT managers' behavioral
intention to use ESS technology and the variables
of perceived usefulness, perceived ease of use,
and age. - Ho2b There is no statistically significant
difference between IT managers' generational
groups and the variables of perceived ease of
use, perceived usefulness, and behavioral
intention to use ESS technology.
Pg. 11-12
15Research Questions and Hypotheses, cont.
Link Literature Review
Link Methodology
Link Theoretical Model
- Is there a relationship or difference between IT
managers' gender and the variables of perceived
usefulness, perceived ease of use, and behavioral
intention to use ESS technology? - Ho3a There is no statistically significant
relationship between IT managers' behavioral
intention to use ESS technology and the variables
of perceived usefulness, perceived ease of use,
and gender. - Ho3b There is no statistically significant
difference between IT managers' gender and the
variables of perceived ease of use, perceived
usefulness, and behavioral intention to use ESS
technology. - Is there a relationship or difference between IT
managers' behavioral intention to use ESS
technology and the variables of age, gender,
perceived usefulness, and perceived ease of use? - Ho4a There is no statistically significant
relationship between IT managers' behavioral
intention to use ESS technology and the variables
of perceived usefulness, perceived ease of use,
age, and gender. - Ho4b There is no statistically significant
difference between IT managers' generational
groups and gender types and the variables of
perceived usefulness, perceived ease of use, and
behavioral intention to use ESS technology.
Pg. 12