Download presentation
Presentation is loading. Please wait.
Published byThomas Phelps Modified over 8 years ago
1
TYPES OF RESEARCH
2
Descriptive research Using data to describe situations and trends
3
Explanatory research Using data to explain why things change Ceasefire less youth violence? During 1996-1999 police, probation, Federal agents and social agencies in Boston applied a variety of strategies to reduce youth gun violence. These included meeting with at-risk youth, monitoring their behavior and invoking stiff Federal sanctions against armed criminals. Mean monthly gun deaths dropped 30 percent, from 3.5 pre- Ceasefire to 1.3 during Ceasefire. But gun deaths were also dropping elsewhere. Once that was taken into account the additional benefit of Ceasefire was estimated at 14 percent. More imprisonment less violence? Some researchers believe that falling crime rates were caused by harsher sentencing. One criminologist estimated that increased incarceration accounted for 20 percent of the “Great Crime Drop” of the 90’s. During 1993-2005 the average time served in State prison (all offenses) rose 38 percent, from 21 months to 29 months. In 1991 the violent crime rate was 758.2 per 100,000. By 2000 it was 506.5, one-third lower. Ceasefire OFFCeasefire ON
4
RESEARCH PROCESS: MEASURING VARIABLES
5
What gets measured? “Variables” To describe or explain, we must measure What gets measured? Variables. Variable: any characteristic or aspect of a person, thing or event that can be “measured”, that is, given a score or assigned a value – Age, height, gender – Ceasefire: N and Y – Youth gun deaths: mean number N (3.5) and Y (1.3) 3.5 1.3 Hypothesis Ceasefire Youth gun deaths Y High N Low Ceasefire OFF Ceasefire ON
6
Categorical variables Nominal – Mutually exclusive groups or categories Gender: M/F Color Period studied in Boston: Ceasefire (off/on - N/Y) Ordinal – Above, plus an implied ranking Low/medium/high Poor/fair/ good N Y Ceasefire OFF Ceasefire ON
7
Continuous variables Can be placed on a scale – Length, height, weight, temperature – Differences between adjacent points are equal (distance between 2 and 3 same as between 6 and 7) – Example: Mean (arithmetic average) number of Boston youth shot dead each month Continuous variables are sometimes “transformed” into ordinal categorical variables – 1-10 low – 11-20 medium – 21-30 high Ordinal categorical variables are sometimes “transformed” into continuous variables – Low 1 – Medium 2 – High 3 3.5 1.3 Ceasefire OFF Ceasefire ON
8
Coding Process of assigning a value or score to a variable (a) coding can be done by the subjects of a study, or (b) through “observation” by researchers Accurately assigning values requires they be “operationalized,” meaning specifically defined
9
Two important terms: “unit of analysis” and “case” Unit of analysis – “Persons, places, things or events” under study – Contains all the variables – Boston: youth homicides Contains the independent (causal) variable Ceasefire (yes/no) and the dependent (effect) variable youth homicides (mean number) – Sometimes defining the unit of analysis is tricky (we’ll have an example later) Case – A single occurrence of a unit of analysis – Boston: Each youth homicide Ceasefire OFF Ceasefire ON
10
RESEARCH PROCESS: ASSOCIATION, CAUSATION, HYPOTHESES
11
Association and causation Association means that two or more variables seem to change together – During the 70s and 80s, as the imprisonment rate (# incarcerated per 100,000 population) increased, violence decreased – After Ceasefire the mean number of youths slain by gunfire dropped Causation means that changes in one variable cause changes in one or more other variables. – The causal variable is called the “independent” variable Whether Ceasefire was in effect (Y/N) – The effect variable is called the “dependent” variable - meaning that its score or value “depends”, at least in part, on the score or value of the independent variable Number of youth homicides each month Ceasefire OFF Ceasefire ON
12
Research process: from a research question to a hypothesis Hypothesis: Ceasefire reduces youth gun deaths – Independent variable on the left, dependent variable on the right – Ceasefire Fewer youth gun deaths Direction of effect of independent variable on dependent variable – “Two tailed” hypotheses predict an effect but do not specify its direction Ceasefire affected how many youths were murdered (silent as to increase or decrease) – “One-tailed” hypotheses specify the direction of the effect Ceasefire led to fewer gun deaths (or, led to more gun deaths) Positive or negative relationship between variables? – Positive: Scores of the independent and dependent variables rise and fall together – Negative: Scores of the independent and dependent variables move in opposite directions – Whether the predicted relationship is “positive” or “negative” depends on how the variables are scaled or categorized – Here the relationship is negative – when Ceasefire is on, or “yes,” gun deaths are low; when off, or “no,” they’re high – NOTE: Negative does NOT mean “no” relationship - it is just as much a relationship as a “positive” relationship 1.Researchers begin with a (hopefully, narrow) “research question” relating to their area of interest 2.From prior studies, discovered though a literature review, they identify relevant issues and variables 3.They then formulate a hypothesis - a prediction that certain changes in the independent variable cause corresponding changes in the dependent variable (i.e., “cause and effect”). 4.Data is collected so the hypothesis can be tested. WARNING: spinning a hypothesis without sufficient basis can yield bogus (spurious) relationships)
13
WARNING: A hypothesis is NOT a question STEP ONE: RESEARCH QUESTION Is there a way to reduce youth gun deaths? Can targeting problem youths reduce gun homicide? STEP TWO: LITERATURE REVIEW Check prior studies about reducing youth gun deaths. Where did the data come from? What programs or approaches were used? Did they prove effective? For promising programs or approaches, identify the variables and how they were measured. STEP THREE: HYPOTHESIS This is a brief, declarative statement of cause and effect, with a measurable independent variable on the left (Ceasefire, on/off) and a measurable dependent variable on the right (number of youth gun deaths each month). Simple and direct! No extraneous words! Ceasefire leads to fewer youth gun deaths
14
CauseEffect measured with a speedometer Independent variableDependent variable measured with a pressure gauge or by changes in angle of pedal Get in the car and drive! Hypothesis 1: As pressure on accelerator increases, speed increases (positive relationship) Hypothesis 2: As pressure on brake increases, speed decreases (negative relationship)
15
CLASSROOM EXERCISE - HYPOTHESIS BUILDING
16
Use the variables on the coding form to make up a hypothesis with one independent (causal) and one dependent (effect) variable. Remember that the hypothesis must predict that changes in the independent variable cause corresponding changes in the dependent variable. Both variables must of course be accurately measurable. 1. State your hypothesis. Do so in the conventional manner, with the independent (causal) variable on the left, and the dependent (effect) variable on the right: 2. Identify the independent variable 3. How is it measured (categorical or continuous)? 4. Identify the dependent variable 5. How is it measured (categorical or continuous)? 6. Is the predicted relationship between variables positive or negative? Hypothesis building
17
ISSUES IN MEASUREMENT
18
Validity and reliability Is a measurement VALID? – Are we measuring what we say we are measuring? – Do the results reflect something real? Measuring how much one weighs is far simpler and more straightforward than measuring their “attitude” – Some things can’t be directly measured Use “surrogate” measures (e.g., income for poverty) Is the measurement process RELIABLE? – Is it reproducible? Regardless of who measures, does it yield the same values? – Is it accurate? – Are we throwing away information? Collapsing continuous variables into categories – Do surrogate measures adequately represent the variable of interest? Does parking lot type (faculty/student) accurately reflect income?
19
“Intervening” variables Poverty Crime Poverty is strongly associated with crime – So is it simply Poverty Crime? – Or is there something else at work? Poor people tend to get poor educations – Maybe education is a more powerful predictor of crime than income – If that is true, education may be an “intervening” variable Poverty (as measured by income) is still a factor, but its influence is mediated by education – Education is a more proximate (closer) “cause” of crime Bottom line -- we must study all variables (a) that could affect the dependent variable and (b) are related to our independent variable of interest – But sometimes what seems to be a cause turns out not to be a factor at all… Income Education Crime
20
Spurious Relationship Age Height? Given that by 18 one has usually stopped growing, how could changes in age in this sample really affect changes in height? 24 CSUF students: 12 males, 12 females, age range 18-25 r statistic - Correlation
21
Spurious Relationship Age Height? The apparent relationship between age and height is spurious. There only seemed to be a relationship because in this sample, males, who tend to be taller, for no particular reason also happened to be older. It’s still Gender Height M M M M M M M M M M M M M M 24 CSUF students: 12 males, 12 females, age range 18-25 r statistic - Correlation
22
Former chief Bratton was repeatedly credited with reducing crime in L.A. – Presence of Bratton (yes/no) is the independent, causal variable; level of crime the dependent (effect) variable – Hypothesis: Bratton less crime (negative relationship) But could the apparent relationship between the presence or absence of Bratton, and the level of crime, be spurious? – Spurious means that an apparent relationship can be explained away by other factors While Bratton was chief, crime was falling around the U.S. for various reasons – These underlying causes (each would be an independent variable, left side of the arrow) may be why crime fell in L.A. In other words, it may not have been Bratton! A spurious relationship? Bratton Crime Bratton: NO YES
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.