Nghĩa của từ random variable bằng Tiếng Việt


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Đặt câu có từ "random variable"

Dưới đây là những mẫu câu có chứa từ "random variable", trong bộ từ điển Từ điển Y Khoa Anh - Việt. Chúng ta có thể tham khảo những mẫu câu này để đặt câu trong tình huống cần đặt câu với từ random variable, hoặc tham khảo ngữ cảnh sử dụng từ random variable trong bộ từ điển Từ điển Y Khoa Anh - Việt

1. So suppose we have a random variable x And this random variable maps into the set 01.

2. The Covariance of a random variable with itself is really just the variance of that random variable

3. There are discreet values that this random variable can actually take on.

4. Furthermore, → − ∞ =, → + ∞ = Every function with these four properties is a CDF, i.e., for every such function, a random variable can be defined such that the function is the Cumulative distribution function of that random variable.

5. 10 This article's emphasis studies the random variable using the copula function to describe tail dependence.

6. A Bernoulli distribution is a discrete distribution with only two possible values for the random variable

7. Instead of measuring the fluctuation of a single random variable, the Covariance measures the fluctuation of …

8. Generally, the expected value of a Pareto-distributed random variable is a decreasing function of Alpha.

9. Well now, we can actually count the actual values that this random variable can take on.

10. A random variable can take on many, many, many, many, many many different values with different probabilities.

Và chúng ta đã biểu diễn được kết quả của quá trình ngẫu nhiên đó, và chúng ta có thể đinh lượng được nó 1 nếu ngửa, 0 nếu sấp

11. Scipy.stats.Bernoulli¶ scipy.stats.Bernoulli (* args, ** kwds) = <scipy.stats._discrete_distns.Bernoulli_gen object> [source] ¶ A Bernoulli discrete random variable

12. A Binomial random variable is the number of successes x in n repeated trials of a Binomial experiment

13. 26 That could be extended to all discrete random variable and vector with the infinited countable distribution series.

14. The algebraic value of a received binary symbol is itself a random variable, whose distribution obeys a particular constraint.

15. The probability distribution of a Binomial random variable is called a Binomial distribution (It is also known as a Bernoulli distribution).

16. Question: Suppose X~N(0.1,2), Use Anithetics To Estimate E[X3%], Generating 1000 Original Random Variable X And 1000 Antithetics Of The Original

17. The Convergence of sequences of random variables to some limit random variable is an important concept in probability theory, and its applications to statistics and stochastic processes.

18. The Bernoulli distribution is the discrete probability distribution of a random variable which takes a binary, boolean output: 1 with probability p, and 0 with probability (1-p)

19. In probability theory, Markov's inequality gives an upper bound for the probability that a non-negative function of a random variable is greater than or equal to some positive constant.

Trong lý thuyết xác suất, Bất đẳng thức Markov cho một chặn trên cho xác suất một hàm số không âm của một biến ngẫu nhiên nhận giá trị lớn hơn một hằng số dương.

20. Any binary random variable can be represented by its algebraic value,a real number whose sign indicates its most likely value and whose absolute value measures the probability of this value.

21. If we know there is a random variable X for which E[g(X.)] Converges to E[g(X)] for all g in a separating class, then X, Converges in law to X

22. Basic tail and concentration Bounds 2 In a variety of settings, it is of interest to obtain Bounds on the tails of a random 3 variable, or two-sided inequalities that guarantee that a random variable is close to its 4 mean or median

23. Binomial mean and standard deviation formulas Video transcript - [Voiceover] Let's define a random variable x as being equal to the number of heads, I'll just write capital H for short, the number of heads from flipping coin, from flipping a fair coin, we're gonna assume it's …

24. Bernoulli distribution is a discrete probability distribution, meaning it’s concerned with discrete random variables. A discrete random variable is one that has a finite or countable number of possible values—the number of heads you get when tossing three coins at once, or the number of students in a class.