Probability that a randomly selected chicken has the genetic modification

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In summary: Ah ok! And so we get \begin{align*}P(K)=P(K\cap V_1)+P(K\cap V_2)+P(K\cap (V_1\cup V_2)^c) & \Rightarrow 0.21=0.80\cdot 0.20+0.40\cdot 0.10+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow 0.21=0.16+0.04+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow 0.21=0.20+P(K\cap (V
  • #1
mathmari
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Hey! :giggle:

In the case of the reproduction of the chicken of the breed Krueper, in some cases it can be that they are extremely short-legged, which has as a result that they already die in the egg. A group of researchers now considers that they have found two main genetic modifications, which have a short-leg effect. These two modifications never occur at the same time. The genetic modification 1 is observed twice as often as genetic modification 2, but in 70% of the cases none of the two. In total, the short-leggedness occurs in 21% of all cases. If the genetic modification 1 occurs, the chicked are in 80% of the cases short-legged, and if the genetic modification 2 occurs, it is 40%.

(a) State all probabilities contained in the text. Introduce suitable events for this purpose.
(b) Determine the probability that a randomly selected chicken has the genetic modification 1. Determine also the probability that the genetic modification 2 is present in a randomly selected chicken.
(c) A chicken chosen at random is short-legged. What is the probability with which genetic modification 1 is present?
(d) What is the probability that a chicken is short-legged even though neither the first nor the second genetic modification is present?
I have done the following :For (a) :

We consider the following events :
  • $K$: A randomly selected chicken is short-legged
  • $V_1$ : The genetic modification 1 exists.
  • $V_2$ : The genetic modification 1 exists.

From the above text we get the below probabilities :

The genetic modification 1 is observed twice as often as genetic modification 22 : $P(V_1)=2\cdot P(V_2)$
In 70% of the cases none of the two genetic modifications occur : $P((V_1\cup V_2)^c)=0.70$
In total, the short-leggedness occurs in 21% of all cases : $P(K)=0.21$
If the genetic modification 1 occurs, the chicked are in 80% of the cases short-legged : $P(K\mid V_1)=0.80$
If the genetic modification 1 occurs, the chicked are in 40% of the cases short-legged: $P(K\mid V_2)=0.40$Is everything correct and complete so far? :unsure:

For (b) :

We have the below :
$P((V_1\cup V_2)^c)=0.70 \Rightarrow P(V_1^c\cap V_2^c)=0.70$
$P(K\mid V_1)=0.80 \Rightarrow \frac{P(K\cap V_1)}{P(V_1)}=0.80$
$P(K\mid V_2)=0.40 \Rightarrow \frac{P(K\cap V_2)}{P(V_2)}=0.40$

The probability that a randomly selected chicken has the genetic modification 1 ia equal to $P(V_1)$, right?
Respectively, the probability that the genetic modification 2 is present in a randomly selected chicken is $P(V_2)$, right?

:unsure:
 
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  • #2
mathmari said:
For (a) :
The genetic modification 1 is observed twice as often as genetic modification 22 : $P(V_1)=2\cdot P(V_2)$
In 70% of the cases none of the two genetic modifications occur : $P((V_1\cup V_2)^c)=0.70$
In total, the short-leggedness occurs in 21% of all cases : $P(K)=0.21$
If the genetic modification 1 occurs, the chicked are in 80% of the cases short-legged : $P(K\mid V_1)=0.80$
If the genetic modification 1 occurs, the chicked are in 40% of the cases short-legged: $P(K\mid V_2)=0.40$

Hey mathmari!

I'm missing: "These two modifications never occur at the same time." 🤔

mathmari said:
For (b) :
$P((V_1\cup V_2)^c)=0.70 \Rightarrow P(V_1^c\cap V_2^c)=0.70$
$P(K\mid V_1)=0.80 \Rightarrow \frac{P(K\cap V_1)}{P(V_1)}=0.80$
$P(K\mid V_2)=0.40 \Rightarrow \frac{P(K\cap V_2)}{P(V_2)}=0.40$
The probability that a randomly selected chicken has the genetic modification 1 ia equal to $P(V_1)$, right?
Respectively, the probability that the genetic modification 2 is present in a randomly selected chicken is $P(V_2)$, right?

Yes... but it looks as if we need one more piece of information... 🤔
 
  • #3
Klaas van Aarsen said:
I'm missing: "These two modifications never occur at the same time." 🤔

Ah yes! From that we get $P(V_1\cap V_2)=0$, or not? :unsure:
Klaas van Aarsen said:
Yes... but it looks as if we need one more piece of information... 🤔

How do we get the information that we need? :unsure:
 
  • #4
mathmari said:
Ah yes! From that we get $P(V_1\cap V_2)=0$, or not?

How do we get the information that we need?
Indeed. And since $V_1$ and $V_2$ are mutually exclusive, we can apply the sum rule on the probability of their union
That should give us the information we need. 🤔
 
  • #5
Klaas van Aarsen said:
Indeed. And since $V_1$ and $V_2$ are mutually exclusive, we can apply the sum rule on the probability of their union
That should give us the information we need. 🤔

We have that \begin{align*} P((V_1\cup V_2)^c)=0.70&\Rightarrow 1-P(V_1\cup V_2)=0.70\\ & \Rightarrow P(V_1\cup V_2)=0.30\\ & \Rightarrow P(V_1)+P(V_2)=0.30\\ & \Rightarrow 3P(V_2)=0.30\\ & \Rightarrow P(V_2)=0.10\end{align*} and so $P(V_1)=0.20$.

At (c) we want to calculate the probability $P(V_1\mid K) $. We calculate that using the formula $\frac{P(K\mid V_1)P(V_1)}{P(K)}$ where everything is now known.

Is everything correct so far? :unsure: At (d) do we want to calculate the probability $P(K\mid (V_1\cup V_2)^c)$?

:unsure:
 
  • #6
All correct. (Nod)
 
  • #7
Klaas van Aarsen said:
All correct. (Nod)

So at (d) we have $$P(K\mid (V_1\cup V_2)^c)=\frac{P(K\cap (V_1\cup V_2)^c)}{P((V_1\cup V_2)^c)}= \frac{P(K\cap (V_1\cup V_2)^c)}{0.70}$$But how can we calculate the numerator? It is equal to $P(K\cap (V_1\cup V_2)^c)=P(K\cap V_1^c\cap V_2^c)$. This means that teh chicken is short-legged but neither genetic modification 1 nor genetic modification occur, right? Is this equal to $0,70$ ? :unsure:
 
  • #8
mathmari said:
So at (d) we have $$P(K\mid (V_1\cup V_2)^c)=\frac{P(K\cap (V_1\cup V_2)^c)}{P((V_1\cup V_2)^c)}= \frac{P(K\cap (V_1\cup V_2)^c)}{0.70}$$But how can we calculate the numerator? It is equal to $P(K\cap (V_1\cup V_2)^c)=P(K\cap V_1^c\cap V_2^c)$. This means that teh chicken is short-legged but neither genetic modification 1 nor genetic modification occur, right? Is this equal to $0,70$ ?
We know that $P(K)=21\%$ and we also have $K=(K\cap V_1)\cup(K\cap V_2)\cup(K\cap (V_1\cup V_2)^c)$ with parts that are mutually exclusive. 🤔
 
  • #9
Klaas van Aarsen said:
We know that $P(K)=21\%$ and we also have $K=(K\cap V_1)\cup(K\cap V_2)\cup(K\cap (V_1\cup V_2)^c)$ with parts that are mutually exclusive. 🤔

Ah ok! And so we get \begin{align*}P(K)=P(K\cap V_1)+P(K\cap V_2)+P(K\cap (V_1\cup V_2)^c) & \Rightarrow 0.21=0.80\cdot 0.20+0.40\cdot 0.10+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow 0.21=0.16+0.04+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow 0.21=0.20+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow P(K\cap (V_1\cup V_2)^c)=0.01 \end{align*} Therefore we get $$
P(K\mid (V_1\cup V_2)^c)=\frac{P(K\cap (V_1\cup V_2)^c)}{P((V_1\cup V_2)^c)}= \frac{0.01}{0.70}\approx 0.014$$ Is everything correct? :unsure:
 
  • #10
mathmari said:
Ah ok! And so we get \begin{align*}P(K)=P(K\cap V_1)+P(K\cap V_2)+P(K\cap (V_1\cup V_2)^c) & \Rightarrow 0.21=0.80\cdot 0.20+0.40\cdot 0.10+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow 0.21=0.16+0.04+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow 0.21=0.20+P(K\cap (V_1\cup V_2)^c) \\ & \Rightarrow P(K\cap (V_1\cup V_2)^c)=0.01 \end{align*} Therefore we get $$
P(K\mid (V_1\cup V_2)^c)=\frac{P(K\cap (V_1\cup V_2)^c)}{P((V_1\cup V_2)^c)}= \frac{0.01}{0.70}\approx 0.014$$ Is everything correct?

You may want to add the intermediate step that $P(K\cap V_1)+\ldots=P(K\mid V_1)\cdot P(V_1)+\ldots=0.80\cdot 0.20+\ldots$.
Other than that, it looks correct to me. (Sun)
 
  • #11
Klaas van Aarsen said:
You may want to add the intermediate step that $P(K\cap V_1)+\ldots=P(K\mid V_1)\cdot P(V_1)+\ldots=0.80\cdot 0.20+\ldots$.
Other than that, it looks correct to me. (Sun)

Great! Thanks a lot for your help! 🤩
 

1. How is probability used in determining the number of chicken legs in a given population?

Probability is used to estimate the likelihood of a certain number of chicken legs in a population. By using mathematical formulas and statistical analysis, scientists can make predictions about the distribution of chicken legs in a given population.

2. What factors affect the probability of finding a certain number of chicken legs in a group of chickens?

The main factors that affect the probability of finding a certain number of chicken legs in a group of chickens include genetic variations, environmental conditions, and breeding practices. These factors can influence the number of legs a chicken has and can vary between different chicken breeds.

3. Can probability be used to determine the likelihood of a chicken having a certain number of legs?

Yes, probability can be used to determine the likelihood of a chicken having a certain number of legs. By analyzing data on the number of legs in a population, scientists can use probability to make predictions about the chances of a chicken having a certain number of legs.

4. How does sample size affect the accuracy of probability predictions for chicken legs?

The larger the sample size, the more accurate the probability predictions will be. This is because a larger sample size provides more data points for analysis, which can reduce the margin of error in the predictions.

5. Can probability be used to predict the number of chicken legs in a specific chicken?

No, probability cannot be used to predict the exact number of chicken legs in a specific chicken. While probability can make predictions about the likelihood of a certain number of legs in a group of chickens, it cannot accurately predict the number of legs in a single chicken as there are many variables at play.

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