4.1: Probability, Sample Spaces, and Probability models Flashcards

1
Q

What is the definition of probability?

A

Probability is a number that measures the chance or likelihood that an event will occur.

It is always a value between 0 and 1, where 0 indicates the event will not occur, and 1 indicates certainty that the event will occur.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
2
Q

How is the likelihood of an event related to its probability value?

A

The likelihood of an event is directly related to its probability value.

The closer the probability is to 1, the higher the likelihood of the event occurring.

Conversely, the closer the probability is to 0, the smaller the likelihood of the event occurring.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
3
Q

What is an experiment in the context of statistical studies?

A

4: An experiment refers to the method of data collection in statistical studies.

It can involve either performing a controlled experiment, where specific conditions are varied, or observing uncontrolled events, such as recording stock prices over a period.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
4
Q

How is the sample space of an experiment defined?

A

The sample space of an experiment is the set of all possible outcomes or results that can occur. In the context of statistical studies, it encompasses all the potential outcomes that can be observed or measured during the experiment.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
5
Q

What is an experiment in the context of probability theory?

A

An experiment in probability theory is any process of observation that has an uncertain outcome.

It can involve activities like tossing a coin, rolling a die, or conducting scientific tests, where the result is uncertain.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
6
Q

The sample space of an experiment is the set of all possible outcomes for that experiment.

A

Sample space outcomes are the specific results that can occur in a single repetition of the experiment.

These outcomes must be clearly defined so that only one outcome can occur in a single repetition.

For example, when tossing a coin, the sample space outcomes are “head” and “tail,” and when rolling a die, the outcomes are numbers 1 to 6.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
7
Q

Why is it necessary to define sample space outcomes clearly?

A

Defining sample space outcomes clearly is essential because it ensures that, in any single repetition of the experiment, one and only one sample space outcome will occur.

This precision is vital for accurate probability calculations and understanding the likelihood of different outcomes.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
8
Q

What are the three methods commonly used to assign probabilities to sample space outcomes?

A

The three methods used to assign probabilities to sample space outcomes are the classical method,
the relative frequency method,
and the subjective method.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
9
Q

What are the two conditions that must be met when assigning probabilities to sample space outcomes?

A

When assigning probabilities to sample space outcomes, two conditions must be met:

The probability assigned to each sample space outcome must be between 0 and 1, denoted as

0≤P(E)≤1, where E represents a sample space outcome.

The probabilities of all sample space outcomes must sum to 1.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
10
Q

How is the classical method of assigning probabilities applied, and when is it appropriate to use this method?

A

The classical method is used when sample space outcomes are equally likely. For example, in the experiment of tossing a fair coin (with outcomes “head” and “tail”), both outcomes are equally likely. In this method, the probability of each outcome is 1/N, where N is the number of equally likely outcomes.

For instance, when rolling a fair die (with outcomes 1, 2, 3, 4, 5, and 6), each outcome is assigned a probability of 1/6 because there are 6 equally likely outcomes.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
11
Q

Explain the logic behind assigning probabilities using the classical method.

A

In the classical method, when all sample space outcomes are equally likely, the logic dictates that the probability of each outcome is 1/N, where N is the number of equally likely outcomes.
This ensures that each outcome has a probability between 0 and 1, and the sum of probabilities for all outcomes equals 1.

For example, in tossing a fair coin, both “head” and “tail” are equally likely, so each has a probability of 1/2, which satisfies the conditions of probabilities being between 0 and 1 and summing up to 1.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
12
Q

What is the long-run relative frequency interpretation of probability?

A

The long-run relative frequency interpretation of probability states that probability is interpreted as a long-run relative frequency.

In other words, if an experiment is repeated a large number of times (approaching infinity), the probability of an event is the proportion of times that event occurs in these repetitions.

For example, if a fair coin is tossed many times, the probability of getting heads (.5) means that in the long run, heads will appear in 50 percent of the tosses.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
13
Q

How is the relative frequency of an event calculated, and what does it represent?

A

The relative frequency of an event is calculated by dividing the number of times the event occurs by the total number of repetitions or trials.

It represents the fraction or proportion of times the event occurs in a finite set of trials.

For example, if a coin is tossed 10 times and 6 times it shows heads, the relative frequency of heads is 6/10=0.6.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
14
Q

Why is the relative frequency interpretation of probability considered a mathematical idealization?

A

The relative frequency interpretation of probability is a mathematical idealization because it assumes an infinite number of repetitions of an experiment, which is practically impossible.

While it provides a theoretical basis for understanding probabilities, it is not always feasible to perform experiments an indefinitely large number of times in reality.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
15
Q

How is probability often perceived in terms of the percentage of time an outcome would occur in many repetitions of the experiment?

A

Probability is often perceived as the percentage of time a sample space outcome would occur in many repetitions of the experiment.

For example, if the probability of obtaining a head when tossing a coin is 0.5, it means that in many repetitions of tossing the coin, a head would occur 50 percent of the time. This interpretation helps in understanding probabilities in practical terms.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
16
Q

When is it difficult or impossible to use the classical method to assign probabilities, and what method can be used in such cases?

A

It is difficult or impossible to use the classical method to assign probabilities when sample space outcomes are not equally likely.

In such cases, the relative frequency method can be used, where probabilities are estimated by performing the experiment multiple times and calculating the proportion of times an outcome occurs.

17
Q

How is the relative frequency method applied in estimating probabilities?

A

In the relative frequency method, probabilities are estimated by performing the experiment multiple times and determining the proportion of times a specific outcome occurs during these repetitions.

For example, if 140 out of 1,000 surveyed consumers prefer Coca-Cola, the estimated probability of preferring Coca-Cola is 140/1000=0.14.

18
Q

What is the subjective method of assigning probability, and when is it used?

A

The subjective method of assigning probability involves estimating probabilities based on personal experience, intuition, or special expertise.

When it is difficult to perform an experiment many times, individuals might rely on their previous experience, knowledge, or intuition to assess probabilities.

For instance, a company president might estimate the probability of a business venture’s success based on their knowledge of similar situations, opinions of personnel, and other relevant information.

19
Q

What is a subjective probability, and does it always have a relative frequency interpretation?

A

A subjective probability is a probability estimated based on personal experience, intuition, or expertise.

It may or may not have a relative frequency interpretation.

For example, when a company president estimates the probability of a successful business venture as 0.7, it might mean that in similar situations, the venture would be successful 70 percent of the time in repeated attempts.

However, the interpretation might also be specific to the current situation, considering it a one-time event without thinking in terms of repeated experiments.

20
Q

What is a probability model, and how is it defined?

A

A probability model is a mathematical representation of a random phenomenon.

It describes an experiment and consists of two components:

the sample space of the experiment and

a procedure for calculating probabilities related to the sample space outcomes.

21
Q

A probability model for an experiment includes two essential elements:

A

A probability model for an experiment includes two essential elements:

Sample Space: The set of all possible outcomes for the experiment.

Procedure for Calculating Probabilities: A method to calculate probabilities associated with the outcomes in the sample space.

22
Q

What is a random variable, and how is it different from an experiment in the context of probability models?

A

A random variable is a numeric variable whose value is determined by the outcome of an experiment.

It represents a specific aspect of the experiment’s outcome and can take on various numerical values.

In contrast, an experiment is any process of observation that has an uncertain outcome, while a random variable is a specific numerical representation derived from the experiment’s outcome.

23
Q

What is a probability distribution, and what does it include for a random variable?

A

A probability distribution is a probability model that describes a random variable. It consists of two components:

Possible Values: A specification of all the values that the random variable can take.

Probability Calculation: A table, graph, or formula that allows the calculation of probabilities associated with the values the random variable might equal.

24
Q

How is a probability distribution used to calculate probabilities for a random variable?

A

A probability distribution provides a way to calculate probabilities for different values of a random variable.

By using the specified values and the associated probabilities from the distribution, one can calculate the likelihood of specific outcomes or events related to the random variable.

For instance, it can be used to calculate the probability that a certain number of items will be sold or the probability of achieving a particular measurement in a test.

25
Q

What are the two main types of probability distributions, and in which chapters are they discussed?

A

The two main types of probability distributions are discrete probability distributions (discussed in Chapter 6) and continuous probability distributions (discussed in Chapter 7).

26
Q

What are the two important discrete probability distributions mentioned, and what are they sometimes called?

A

The two important discrete probability distributions mentioned are the binomial distribution and the Poisson distribution, sometimes referred to as the binomial model and the Poisson model, respectively.

27
Q

What are the two significant continuous probability distributions mentioned, and what are they sometimes called?

A

The two important continuous probability distributions mentioned are the normal distribution and the exponential distribution, sometimes known as the normal model and the exponential model, respectively.

28
Q

What are the assumptions underlying every probability model, and why are they important?

A

Every probability model is based on one or more assumptions about the random phenomenon it describes.

These assumptions might include equally likely sample space outcomes or sample space outcomes associated with the possible occurrences of independent events.

These assumptions are crucial because they form the foundation upon which the probability model is built.

While these assumptions may not capture all the nuances of the random phenomenon, if they capture the essential aspects, the probability model can provide reasonably accurate probabilities related to the phenomenon.

29
Q
A