Ryan Fuller - PowerPoint PPT Presentation

1 / 26
About This Presentation
Title:

Ryan Fuller

Description:

My Study. I chose to study the overall sadness of people over the age of sixty-five. My main concerns are to look at how the effect of a spouse passing, bad health, ... – PowerPoint PPT presentation

Number of Views:35
Avg rating:3.0/5.0
Slides: 27
Provided by: Ryan1197
Category:
Tags: fuller | lookover | ryan

less

Transcript and Presenter's Notes

Title: Ryan Fuller


1
Presentation
  • By
  • Ryan Fuller

2
My Study
  • I chose to study the overall sadness of people
    over the age of sixty-five. My main concerns are
    to look at how the effect of a spouse passing,
    bad health, and the presence of children and
    grandchildren effect their overall sadness.

3
Research Questions
  • Does being a widow have a positive effect on your
    sadness?
  • Is the positive effect of being a widow on your
    sadness weaker when children or grandchildren are
    present?
  • How long does the effect of being a widow on
    sadness last?

4
Variables
  • Dependant- Overall sadness of members in the
    widow group as well as the control group.
  • Independent- Whether or not individual is a widow
    or not
  • Control- bad health, sex, number of children,
    number of grandchildren
  • Children and grandchildren are also interaction
    variables

5
Statement of Purpose
  • Reason this is worth studying?
  • Help to understand why the elderly are often sad
  • See how long the effect of spousal death lasts
  • If the study is proven significant, we could
    present to City and State legislations with
    possible ideas or replacement efforts for widows
    who do not posses any children or grandchildren.

6
Relevant Sociological Theory
  • Durkheims Social Integration and Regulation
    Theory
  • This theory is relevant because it helps me
    explain why the death of a spouse is an important
    aspect of the persons overall sadness.
  • Also, why children and grandchildren may prevent
    sadness when a spouse dies.

7
Quote From Durkheim
  • While discussing Suicide, Modern man kills
    himself, Durkheim argues primarily as a result of
    two conditions the loss of cohesion in modern
    society and the absence of suitable moral norms
    by which to orient himself (Zeitlin 287).

8
Explanation of Theory
  • Although the subjects in my study are not being
    examined for suicide, this theory explains why
    for instance elderly are often sad. Durkheim
    said that man kills himself as a result of two
    instances, the loss of cohesion in modern society
    is one of them. When a spouse dies these people
    often lose a sense of cohesion and social
    integration which intern will lead to a higher
    level of sadness. This is similar to Durkheims
    idea except we are replacing suicide with sadness.

9
Continuation of Theory
  • Core concepts- Integration and Regulation
  • Assumptions- society works as a whole to develop
    society. Members of society all play a small
    role in the large functioning body
  • Central Proposition- Death of a spouse will
    reduce an individual's integration and regulation.

10
Hypotheses
  • Null- Being a widow will not be positively
    related to your overall sadness.
  • Alternative- Being a widow will be positively
    related to your overall sadness.
  • 2nd Null- the positive effect of widow should
    not be weaker for respondents with children and
    grandchildren.
  • 2nd Alternative- the positive effect of widow
    should be weaker for respondents with children
    and grandchildren.

11
Research Design
  • I used multiple regression to study the
    respondents.
  • They were surveyed at three time periods after
    spouse dies 6 months, 18 months, 48 months.

12
Sampling
  • The subjects are residents of Detroit and the
    first wave of the study was in 1987-1988.
  • The subjects were selected by using a
    multi-staged approach. First, areas within
    Detroit were studied. Second persons sixty-five
    and older were selected randomly.

13
Data
  • These data are available through the
    Inter-University Consortium for Political and
    Social Research.
  • Data collected by Prospective Study of
    Bereavement.

14
Strengths of Data
  • These data appear to be valid measures of the
    concepts of interest.
  • More importantly their face-validity appears to
    be sound.
  • Importantly these data allow me to replicate my
    analysis at all three time points.

15
Type of Data
  • For purposes of my analysis the variable widow
    (my main independent variable) will be scored 1
    for widows and 0 for the control group of
    non-widows. The main dependent variable is
    sadness, which is measured by the following
    three-category item (saddep) Please tell me
    how often you felt sad during the past week
    (1hardly ever, 2some of the time, and 3most of
    the time).

16
Type of Data Cont.
  • My analysis has four control variables. First,
    bad health is measured using the variable badh
    which is based on the following question In
    general, how satisfied are you with your health?
    (1completely satisfied, 2very satisfied,
    3somewhat satisfied, 4not very satisfied, and
    5not at all satisfied). Second, gender of the
    respondent is controlled via the variable
    female that is scored 1 for females and 0 for
    males. Third, the number of children is measured
    using the variable kids that is a simple count
    variable. Fourth, the number of grandchildren is
    measured using the variable gkids which is also
    a simple count variable.

17
Design of Proof
  • Testing First Null and Alternative Hypothesis
  • I will estimate the effect of the variable
    widow in my model of saddep while controlling
    for the aforementioned control variables. If the
    effect of widow is positive and significant, I
    will reject my first null and let my first
    alternative stand.

18
Design of Proof Cont.
  • Testing my 2nd null and alternative hypotheses
  • To test my second set of hypotheses, those that
    pertain to the interactions that involve the
    number of children and grandchildren, I will
    create multiplicative terms by multiplying the
    number of children by the widow variable and then
    again by multiplying the number of grandchildren
    by the widow variable. If the coefficients on
    these multiplicative terms are negative and
    significant that means that the positive effect
    of widow on saddep is weaker for respondents
    who have children or grandchildren. Should even
    one such coefficient be found, I will be able to
    reject my second null hypothesis and let my
    second alternative hypothesis stand.

19
Six Months
  • Widow .23
  • .23
  • Bad Health Sadness
  • -.23
  • Kids

20
Interpretation for Six Months
  • Reject first null hypothesis
  • Alternative will stand- being a widow will be
    positively related to your sadness.
  • Allow my second null hypothesis to stand.

21
Eighteen Months
  • Widow .18

  • Sadness
  • Bad Health .32

22
Interpretation for Eighteen Months
  • Reject first null hypothesis
  • Alternative will stand- being a widow will be
    positively related to your sadness.
  • Accept second null hypothesis
  • The positive effect of widow should not be weaker
    for respondents with children and grandchildren.

23
Forty-Eight Months
  • Bad Health .20

  • Sadness
  • Grandkids -.21

24
Interpretation for Forty-Eight Months
  • First Null hypothesis will stand
  • The effect of being a widow will not be
    positively related to your overall sadness.
  • Reject the second Null hypothesis
  • Alternative will stand- the positive effect of
    widow should be weaker for respondents with
    children.

25
Limitations
  • My use of data for Detroit may be problematic.
    For instance the the City of Detroit mat have a
    positive or negative effect in how people view
    their sadness compared to other cities. As a
    result, the effects uncovered by my study may not
    be generalizable.
  • The use of secondary also imposes a limitation
    because the data was not collected with my
    research question in mind.
  • When you use panel data you have to allow for
    attrition which is people dropping out of your
    study for whatever reason, which may cause a bias
    in my results.

26
The End
Write a Comment
User Comments (0)
About PowerShow.com