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Lernen Challenge 2: Bayes' Theorem | Statistics
Data Science Interview Challenge
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Kursinhalt

Data Science Interview Challenge

Data Science Interview Challenge

1. Python
2. NumPy
3. Pandas
4. Matplotlib
5. Seaborn
6. Statistics
7. Scikit-learn

book
Challenge 2: Bayes' Theorem

In the world of probability and statistics, Bayesian thinking offers a framework for understanding the probability of an event based on prior knowledge. It contrasts with the frequentist approach, which determines probabilities based on the long-run frequencies of events. Bayes' theorem is a fundamental tool within this Bayesian framework, connecting prior probabilities and observed data.

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Imagine you are a data scientist working for a medical diagnostics company. Your company has developed a new test for a rare disease. The prevalence of this disease in the general population is 1%. The test has a 99% true positive rate (sensitivity) and a 98% true negative rate (specificity).

Your task is to compute the probability that a person who tests positive actually has the disease.

Given:

  • P(Disease) = Probability of having the disease = 0.01
  • P(Positive|Disease) = Probability of testing positive given that you have the disease = 0.99
  • P(Negative|No\ Disease) = Probability of testing negative given that you don't have the disease = 0.98

Using Bayes' theorem:

P(Disease|Positive) = P(Positive|Disease) * P(Disease) / P(Positive)

Where P(Positive) can be found using the law of total probability:

P(Positive) = P(Positive|Disease) * P(Disease) + P(Positive|No Disease) * P(No Disease)

Compute P(Disease|Positive), the probability that a person who tests positive actually has the disease.

Lösung

Switch to desktopWechseln Sie zum Desktop, um in der realen Welt zu übenFahren Sie dort fort, wo Sie sind, indem Sie eine der folgenden Optionen verwenden
War alles klar?

Wie können wir es verbessern?

Danke für Ihr Feedback!

Abschnitt 6. Kapitel 2
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book
Challenge 2: Bayes' Theorem

In the world of probability and statistics, Bayesian thinking offers a framework for understanding the probability of an event based on prior knowledge. It contrasts with the frequentist approach, which determines probabilities based on the long-run frequencies of events. Bayes' theorem is a fundamental tool within this Bayesian framework, connecting prior probabilities and observed data.

Aufgabe

Swipe to start coding

Imagine you are a data scientist working for a medical diagnostics company. Your company has developed a new test for a rare disease. The prevalence of this disease in the general population is 1%. The test has a 99% true positive rate (sensitivity) and a 98% true negative rate (specificity).

Your task is to compute the probability that a person who tests positive actually has the disease.

Given:

  • P(Disease) = Probability of having the disease = 0.01
  • P(Positive|Disease) = Probability of testing positive given that you have the disease = 0.99
  • P(Negative|No\ Disease) = Probability of testing negative given that you don't have the disease = 0.98

Using Bayes' theorem:

P(Disease|Positive) = P(Positive|Disease) * P(Disease) / P(Positive)

Where P(Positive) can be found using the law of total probability:

P(Positive) = P(Positive|Disease) * P(Disease) + P(Positive|No Disease) * P(No Disease)

Compute P(Disease|Positive), the probability that a person who tests positive actually has the disease.

Lösung

Switch to desktopWechseln Sie zum Desktop, um in der realen Welt zu übenFahren Sie dort fort, wo Sie sind, indem Sie eine der folgenden Optionen verwenden
War alles klar?

Wie können wir es verbessern?

Danke für Ihr Feedback!

Abschnitt 6. Kapitel 2
Switch to desktopWechseln Sie zum Desktop, um in der realen Welt zu übenFahren Sie dort fort, wo Sie sind, indem Sie eine der folgenden Optionen verwenden
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