If: Hypothesis
And: test
Then: prediction
and/but: result
Therefore: hypothesis is or isnt supported
Should not be relied on: Ex. All ducks in this pond are white therefore all ducks are white
If-and-then (comparing results to prediction). Active voice is preferred (I kicked the ball vs the ball was kicked). First person > third person
Observation
Causal question
Hypothesis
Test
Prediction
Results
Conclusion
Logical extension of hypothesis; what were to happen if it were true
Purely observable test, no manipulation of variables
Provide support but it's more tentative than controlled experiment
Measures a response variable of interest after manipulating some aspects of chosen test subjects
Ex. Changing the diet of a rat to measure weight gain
Not useful for long term, historical and globally scaled questions
Change in independent variable also changes other variables in the experiment (confounding variable)
For questions that cannot be replicated (why did the airplane crash?)
Already completed research studies are analyzed
Questions that use a lot of words such as quantify, measure, count, and enumerate
Seek explanations for observed patterns
Explain how a trait or behaviour works
Every hypothesis must be testable, so it allows to provide support or against a particular hypothesis
Misleading idea that you can never know when something is true, only if it's false.
Science is not bound by this and can show things are tentatively true without needing to find every other possibility false
Random: every potential sampling unit has an equal chance of being chosen
Systematic: sampling units are selected in a systematic way
Stratified random sampling: random sampling within subgroups where subgroups differ in some characteristic
Basic: aims to expand fundamental knowledge to understand natural phenomena
Applied: practical applications for scientific knowledge and solve specific problems
What to measure
Treatment/factors - what to manipulate
Number of different treatments
How many times you sample
What is staying consistent between replicates
Difference between a samples characteristics and the characteristics of the entire population it represents
Because you're only taking a subset of the whole population
Average amount of sampling error decreases
Data selection is skewed by collection criteria (conscious or unconscious)
ex. Sampling what's easy and supports your hypothesis (only picking tall trees)
Applies to how you analyze and interpret data
Not always, but minimized and acknowledged
💀
Accurate: value close to real value
Precision: values close to each other
Measure of variation- gives an estimated range of values which is likely to include an unknown population parameter
Collection, compilation, and communication of data
Scientific usage: the probalistic analysis of data
NOT THE SAME AS DATA
Two competing hypotheses (null, alternate)
Goal: determine if there's enough evidence within the sample to reject the null hypothesis
P < 0.05, then we accept the result is "real"
tells you that the probability is real and not due to chance
Assumes no effect, no difference, no relationship
Assumes there is an effect, difference, or relationship
Used to compare the means of two groups (two treatment levels)
Includes null and alternate hypothesis
Degrees of freedom: observation rows - # of parameters
How far apart the numbers are related to each other
compare observed data to expected data to determine whether there is a significant difference between them
Expected = (row total * column total) / total total
Is there an effect of this variable on this thing measured
Are these two variables related?
How do all of these variables interact to show one thing
Group related data into interpretable groups
Put new experimental units into existing groups based on the composition of units
Original research and/or new scientific discoveries
Summarizes abd synthesizes primary literature. Usually broader and less current than primary literature
Summarized or condensed version of materials with references to primary or secondary sources (textbooks, dictionaries, handbooks)
Objective: Present current research, often at conference or meeting
Audience: Interested public, scientists in fields
Authors: active researchers, upper year undergrads
Type: Visual
pros: very current, often first source on new finding, author is present
cons: limited audience
Oral, very current, presented newly published paper or even in progress work.
Cons: limited audience, meeting attendees, may present in progress work
Reaches everyone, promote what you're doing, very current, easy access, lots of material
Cons: info can be misinterpreted, rely on readers going further to get the whole story
Science news articles are by science journalists and are meant for everybody
- more accessible, great way to understand research
cons:
- clickbait
- reviewed by non specialist/editor with different priorities
- depends on good news source
News articles
- Not written like scientific papers
- Headline- concise and attention grabbing (click bait)
- most important info is presented first
objective: education, reach wide audience, abstract of paper
audience: everyone
authors: everyone
type: video
pros: audience, accessible, creates buzz, promote what you're doing
cons: can be misinterpreted, may not be peer reviewed, relies on readers to get full story
