Critical thinking - English summary 12th edition
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An argument based on analogy is an argument that says that something has a certain property, because an equal thing has the same property. For instance:
The analogues in the example above are Bill and Sam. The conclusion analogue (Sam) is attributed a certain characteristic (to love to fish), because the premise analogue (Bill) loves to fish.
Here are a few guidelines for evaluating arguments based on analogy.
When it is proven that an argument based on analogy is wrong, there is "the attack of an analogy". A weak analogy (also called false analogy) is a weak argument based on unimportant similarities between two or more things.
You generalize from a sample when you attribute a certain trait to members of a certain population, because this is proven in a small(er) group that belongs to that population.
The most important principles for evaluating such arguments are:
The "sampling frame" is a definition of the population and the attribute. It helps us to determine whether an individual belongs to the population and whether they have the attribute. It is therefore a part of the population (or: a sample) that we were able to determine to study. However, we do not know for certain whether the values resulting from the sample are exactly the same in the population. Which party people vote for, for example, also depends on gender, age, religion and income. A sample represents a population if the variables linked to the attribute are present in the same proportion in the sample as in the population.
A sample is biased when the variable is not present in the sample in the same proportion as in the population.
The spread that is calculated differs from sample to sample, in other words: a random (or random) variation is created. This is also referred to as the error margin. The error margin can be calculated on the basis of (1) the sample size and (2) the confidence level. The confidence level shows the probability that the proportion found in a sample falls within the margin of error. A sample can be increased to reduce an error margin. In colloquial language we use informal terms to indicate the likelihood that a conclusion is true, for example by using terms such as "likely" and "it is almost certain that ...".
A random sample is therefore not completely free of biases, because the variables are still vulnerable to random variation.
If you want to reason from general to specific, it has the following form:
Example:
In the example you find above is an inductive syllogism (also called statistical syllogism). The power of an inductive syllogism depends on the general statement, namely "Most X’s are Y’s". If this is not correct, then the conclusions that result from this statement are not correct either. The more often most X’s and Y’s are (for example, the more often teachers appear to vote for the SP), the stronger the argument is that someone who is a teacher should be an SP voter.
A causal statement describes the cause of a certain event. A causal hypothesis is a statement describing that X causes another variable (Y). It is important that a certain causal pattern is not incorrectly described. Three principles apply:
In a randomized experiment, subjects are randomly assigned to one of the conditions: the experimental condition or the control condition.
Observational studies are not experiments. The researcher does not manipulate the allocation of people to a certain group. The groups are merely observed. A distinction is made here between a prospective (something that has yet to take place) and a retrospective (something that has already taken place is being investigated) design.
Calculating statistical opportunities
If we want to calculate the probability that two independent events occur together (X and Y), then we need to multiply the probability of X and the probability of Y with each other. Many people go wrong and add up the chances. However, if we want to calculate the probability that one of these two events occurs (X or Y), then we add the probabilities of X and Y together.
The estimated value is the result of how much you expect to win combined with the amount that you can win. If the estimated value is greater than 0, it makes sense to take the gamble.
b. Which parts does such an argument consist of?
Suppose: "If P then Q" = 1 and Q = 1 then P can be both 1 and 0. You can see this in the first and second to last line of the truth table. Verification therefore provides no certainty and is also referred to as the fallacy of the consequence (fallacy of the consequent). Verification is used in testing and accepting hypotheses, but according to the proposition logic therefore gives no certainty. The hypothesis is correct with regard to the observation, but can also be caused by something completely different.
With a physical causal explanation, a causal explanation is requested for an event in terms of the physical background. The physical background is about the general conditions in which an event has occurred. Examples of these general conditions are temperature or humidity. Often these conditions are not specifically highlighted because we already know them. When the conditions are not expected, it is often necessary to specifically highlight them. The physical background of an event is also about the direct cause of an event. However, in reality, multiple causes contribute to an event. Our interests and knowledge determine which link in a causal chain we identify as the cause of the event. Examples of questions that deal with physical causal explanations are: "How come my tape is empty?", "How come I have high blood pressure?", "Why are some species extinct?" “How does global warming come to be?'
b. Such an argument consists of two analogues: a premise analogue and a conclusion analogue.
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