PsychStix
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Hypotheses; directional and non-directional โ PsychStix
August 27, 2024 - If you have a non-directional hypothesis, you must do a two tailed test. Remember, a decent hypothesis will contain two variables, in the case of an experimental hypothesis there will be an IV and a DV; in a correlational hypothesis there will be two co-variables ยท both variables need to be fully operationalised to score the marks, that is you need to be very clear and specific about what you mean by your IV and your DV; if someone wanted to repeat your study, they should be able to look at your hypothesis and know exactly what to change between the two groups/conditions and exactly what to measure (including any units/explanation of rating scales etc, e.g.
What are the advantages and disadvantages of both one-tailed and two-tailed hyphotesis in a RCT?
One-tailed is used when you already ... when you hypothesize there is difference between two groups but do not know which one will be better, or worse. It is easier to get p<0.05 for one-tailed but one-taile also means you are already biased. ... Ca Dr. Gaurav Bhambri ... Join ResearchGate to ask questions, get input, and advance your work. ... Two-tailed is for more exploratory research, or newer work, where you might not be sure of the direction of the ... More on researchgate.net
Directional hypothesis for moderation analysis
This subreddit is aimed at an intermediate to master level, generally in or around graduate school or for professionals ... I'm currently working on my thesis which I am using a moderation analysis for. Based on my readings, it seems that for moderation analysis, a null hypothesis is "moderator ... More on reddit.com
Can someone explain the intuition behind hypothesis testing, confidence interval and p-values.
With Null Hypothesis Significance Testing, you assume the null hypothesis is true And 2) try to find evidence against it This method is similar to the " reductio ad absurdum " method in logic/philosophy. You assume the null is true, show that something ridiculous follows from that assumption and then conclude that since that happened, the null probably isn't true. 0.05 is a (pretty arbitrary) cutoff that we use for "statistical significance". But in reality, choosing a cutoff (our alpha value) is more about controlling our Type I error rate (falsely rejecting the null) than about telling us whether our p-value is good "evidence". If we choose alpha = 0.05, then if the null is true, we will only falsely reject it 5% of the time if we repeated this experiment over and over. Ronald Fisher once said (and I'm paraphrasing) that p-values don't tell you anything about the probability of what is true in the real world; they're instead a measure of how much you should distrust that the null hypothesis is correct. P-values tell is in a kind of hand wavy way whether there's evidence against the null. Within one experiment, a p of 0.00001 provides stronger evidence against the null than p = 0.001 but there's no real way to calibrate that between experiments. A p = 0.001 could represent different amounts of evidence in different studies. (Side note, though there's some difficulties with Bayes frameworks as well, this is one reason why Bayes is cool; it CAN provide you with a measure of "evidence" that is comparable between experiments). Confidence intervals are pretty heavily misunderstood. Confidence intervals can be thought of in two(related) ways: you can think of these values as "values we can't rule out based on our data and statistical tests". if you think about the confidence interval as a process, then if a 95% confidence interval procedure is repeated a BUNCH of times, 95% of them will contain the true population mean. However, this does NOT mean that there's a 95% chance that YOUR confidence interval contains the mean, as it is no longer a random variable. But this is useful if you're worried about controlling your Type I error rate. If you work at Guiness' beer factory measuring the quality of hops they put in a batch of beer, and you do this could continually, you could say that you want your quality to be about an average of 7 (I have no clue how they measure that), and so you take a sample of each batch of hops, calculate the mean quality and it's 6.75. do you throw out this batch? You could calculate a 95% confidence interval and say "as long as it contains 7, I'll consider this batch good", then if the batches are actually good, you'll only get a confidence Interval that doesn't contain the value 7 (which causes you to throw out he batch) 5% of the time. If you calculated a 99% confidence interval then you'd only mistakenly throw out a batch 1% of the time. More on reddit.com
ELI5: What is the Null hypothesis?
The null hypothesis says "there is nothing going on here". Let's say you rolled a die three times and it always came up six. You conclude the die is probably loaded, and that becomes your hypothesis. The null hypothesis is the die is not loaded, and your results were due to chance or experimental error. After all, there is a 1 in 216 chance you would expect to see that on a fair die. You would next design an experiment to drive the likelihood of the null hypothesis so low that it can be ignored. If you rolled the dice ten times and got all sixes, that would represent a 1 in 60 million longshot, and strong evidence the null hypothesis is not true. Note that evidence against the null hypothesis is evidence something is going on, but not necessarily evidence for your hypothesis. Your hypothesis could have just as easily been "I am controlling the die with my telekineses", and eliminating the null hypothesis certainly would not support that conclusion. Further experiments would be required to determine exactly when the die always rolls sixes. The null hypothesis is often tied to the placebo effect. When people receive treatment, they tend to report improvement even when there is none. The null hypothesis remains "there is nothing going on here", and that any results were due to chance and/or the placebo effect. More on reddit.com
Videos
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Statology
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What is a Directional Hypothesis? (Definition & Examples)
June 23, 2022 - He then performs a hypothesis test using the following hypotheses: H0: ฮผ = .285 (the program will have no effect on the mean hitting percentage) HA: ฮผ > .285 (the program will cause mean hitting percentage to increase) This is an example of a directional hypothesis because the alternative hypothesis contains the greater than โ>โ sign.
TheFreeDictionary.com
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Directional hypothesis | definition of directional hypothesis by Medical dictionary
alternative hypothesis the hypothesis ... dependent variables. directional hypothesis a statement of the specific nature (direction) of the relationship between two or more variables....
tutor2u
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Directional Hypothesis | Topics | Psychology | tutor2u
A directional hypothesis is a one-tailed hypothesis that states the direction of the difference or relationship (e.g. boys are more helpful than girls).
Statistics How To
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Directional Test (Directional Hypothesis) - Statistics How To
June 8, 2020 - This is because the critical region is in one tail and the error is all in one direction (either less than or greater than a central point, not both) A directional hypothesis states not only that a null hypothesis is false, but also that the actual value of the parameter weโre interested in is either greater than or less than the value given in the null hypothesis.
AlleyDog
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Directional Hypothesis Definition | Psychology Glossary | Alleydog.com
In statistics and science, a directional hypothesis predicts that a specific relationship between numbers or objects will exist, and furthermore, the direction in which that relationship is heading. In math, this relates to the concept of the null hypothesis where a two-tailed solution might ...
Springer
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Directional and nondirectional alternative hypotheses
Providing access to millions of research articles and chapters from Science, Technology and Medicine, and Humanities and Social Sciences
Scribd
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Notes On Directional and Non Directional | PDF | Statistical Hypothesis Testing | Null Hypothesis
There are two types of hypotheses: directional hypotheses, which predict the direction of the relationship between two variables, and non-directional hypotheses, which simply state that a relationship exists without predicting the direction.
Westgard QC
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Z-8: Two-Sample and Directional Hypothesis Testing
Here group A's life span is hypothesized to be greater (longer) than group B's (the control group). In this case, an alpha level of 0.05 implies that all 0.05 would have to appear in the right or high tail of the curve, which then is a one-tailed or directional test, as shown in Figure 8-3.
Utk
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Encyclopedia of research design/edited by Neil J. Salkind.
Professor of Educational Administration and Policy Studies Principal Investigator / TRIO Director and Director of the CAPS Outreach Center
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One-tailed is used when you already determine that one is better, or worse, than the other whereas two-tailed is used when you hypothesize there is difference between two groups but do not know which one will be better, or worse. It is easier to get p<0.05 for one-tailed but one-taile also means you are already biased.
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Two-tailed is for more exploratory research, or newer work, where you might not be sure of the direction of the relationship between the variables (e.g. targeting a different population, such as: an effect among men might play out differently among women and if the research has not been done with women, then a two-tailed test is more appropriate). One-tailed tests are more permissible when you have a very strong theory for why the relationship would go in a certain direction and there has been previous research confirming that direction in correlation using those same variables/measures/constructs. Hope that helps!
The Student Room
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Why would you use a directional hypothesis? - The Student Room
They're used when you already know a certain amount of knowledge about a subject so I suppose you're making more of a point with a directional hypothesis - your results would confirm what you thought, the point you were trying to make, whereas a non-directional one might have less of an impact.