Question
Write discussion based on results: Discussion In the discussion section, the researcher reviews the current study from various perspectives. Do the results support all the
Write discussion based on results:
Discussion
In the discussion section, the researcher reviews the current study from various perspectives. Do the results support all the hypotheses, some of them, or none of them? The author should try to discuss possible explanations for the results and discuss why one explanation might be more likely than others. If the hypotheses have not been supported, or have received only partial support, the author should suggest potential reasons. What might have been wrong with the methodology, the hypothesis, or both? There is nothing wrong with admitting that you realized a flaw in your study only after the data have been collected and analyzed. All studies have flaws and no study is perfect: It's very important to be upfront about the weaknesses and limitations of your particular study so that readers can probably evaluate your findings. In this section, the researcher also discusses how the results compare with past research on the topic. Lastly, this section frequently includes suggestions for future research on the topic, and possibly some practical applications.
Results:
BIKE CHOICE
X2=0.35, p=0.55, Cramer's V=0.03
X2=0.35, padj.=1, Cramer's V=0.03
FOOD CHOICE
X2=0.61, p=.43, Cramer's V=0.04
X2=0.61, padj.=1, Cramer's V=0.04
X2=3.91, p=.048, Cramer's V=0.09
X2=3.91, padj.=0.14, Cramer's V=0.09
Condition | Sent e-mail | Did not sent e-mail | Condition | Free bike membership for one year | Free Uber gift card | Condition | A week of free plant-based meals | A week of free regular meals | |||||||||||
Happy | 29.76% | 70.24% | Happy | 30.56% | 69.44% | Happy | 38.17% | 71.83% | |||||||||||
Doomsday | 21.76% | 78.24% | Doomsday | 31.60% | 66.95% | Doomsday | 20.50% | 79.50% |
What were your findings? First, present descriptive statistics (mean, SD of each condition). Then, explain what statistical analyses you performed on your data, and the results of the inferential statistical tests as they relate to your research question and hypothesis. Did they support your hypothesis? Use tables or graphs to present results. If space is limited, you can show tables and graphs in the appendix, but make sure to describe your results in this section.
Reference:
Hypotheses
Hypothesis 1: There will be a difference in how many participants choose the climate friendly options between the two conditions. Hypothesis 2: There will be a difference in how many participants send an email to the Minister between the two conditions.
Design Plan
Study type
Experiment - A researcher randomly assigns treatments to study subjects, this includes field or lab experiments. This is also known as an intervention experiment and includes randomized controlled trials.
Blinding
- For studies that involve human subjects, they will not know the treatment group to which they have been assigned.
Is there any additional blinding in this study?
No response
Study design
We will use a between-subjects design with 2 conditions from a randomized design. 1. Condition 1: participants will read a message that frames climate change information in a negative way (doomsday frame). 2. Condition 2: participants will read a message that frames climate change information in a happiness-inducing way (happy climate frame).
No files selected
Randomization
Participants will be randomly assigned to 1 of 2 conditions at the beginning of the study using simple randomization using Qualtrics.
Sampling Plan
Existing Data
Registration prior to creation of data
Explanation of existing data
No response
Data collection procedures
Inclusion criteria: Participants must meet the following criteria to be included in our sample: Language - Participants must be able to speak English. Student - Participants must be a UBC student registered in the HSP participation pool. Age - Participants must be at least 18 years of age. Exclusion criteria: Participants will be excluded according to the following criteria: If they withdraw before completing the survey. If their responses are incomplete (e.g., missing answers to required questions). If their responses to all questions are the same (e.g., answering "3" for every question). Attrition: Participants who are excluded from the study will be replaced.
No files selected
Sample size
We will recruit at least N=197 participants total. The units are individual participants.
Sample size rationale
We assume a small effect size of w=0.2, alpha=0.05, power=0.8, with 2 between-subjects conditions for a chi-square test, so we need a minimum of N=197 participants total.
Stopping rule
No response
Variables
Manipulated variables
The study involves manipulating one variable (framing) across two conditions. 1. Condition 1: participants will read a message that frames climate change information in a negative way (doomsday frame). 2. Condition 2: participants will read a message that frames climate change information in a happiness-inducing way (happy climate frame).
No files selected
Measured variables
Primary outcome measure: Travel prize - Participants are asked to choose between a free bike membership for one year (climate-friendly option) or a free Uber gift card. The choice will be measured. Food prize - Participants are asked to decide between a week of free plant-based meals (climate-friendly option) or a week of free regular meals. The choice will be measured. Email the Minister - Participants are asked whether they would like to send an email to the Minister of Environment and Climate Change Canada to support a climate policy. Whether they send an email will be measured.
No files selected
Indices
No response
No files selected
Analysis Plan
Statistical models
To examine Hypothesis 1: There will be a difference in how many participants choose the climate friendly options between the two conditions, we will conduct a chi-square test for the travel prize and another chi-square test for the food prize to see if there is a difference in how many participants choose the climate friendly options between the two conditions. To examine Hypothesis 2: There will be a difference in how many participants send an email to the Minister between the two conditions, we will conduct a chi-square test to see if there is a difference in how many participants send an email between the two conditions.
No files selected
Transformations
No response
Inference criteria
We will use the standard two-tailed, alpha=0.05 criteria for determining the significance of the effect.
Step by Step Solution
There are 3 Steps involved in it
Step: 1
Get Instant Access to Expert-Tailored Solutions
See step-by-step solutions with expert insights and AI powered tools for academic success
Step: 2
Step: 3
Ace Your Homework with AI
Get the answers you need in no time with our AI-driven, step-by-step assistance
Get Started