Suppose that X and Y are independent Poisson distributed values with means 3θ and θ, respectively. Consider the combined estimator of θ ˜θ = k1X + k2Y where k1 and k2 are arbitrary constants. (a) Find the condition on k1 and k2 such that ˜θ is an unbiased estimator of θ. (b) For what values of k1 and k2 will the combined estimator ˜θ = k1X + k2Y be an unbiased estimator with smallest variance amongst all such linear combinations? (c) Given observations x and y find the maximum likelihood estimate of θ. I've got part (a) which is k1+k2=1 and (b) which is k1=3/4 and k2=1/4. I just cant get part c..
2026-04-02 10:49:35.1775126975
Finding the maximum likelihood estimate of θ.
313 Views Asked by Bumbble Comm https://math.techqa.club/user/bumbble-comm/detail At
1
There are 1 best solutions below
Related Questions in STATISTICS
- Given is $2$ dimensional random variable $(X,Y)$ with table. Determine the correlation between $X$ and $Y$
- Statistics based on empirical distribution
- Given $U,V \sim R(0,1)$. Determine covariance between $X = UV$ and $V$
- Fisher information of sufficient statistic
- Solving Equation with Euler's Number
- derive the expectation of exponential function $e^{-\left\Vert \mathbf{x} - V\mathbf{x}+\mathbf{a}\right\Vert^2}$ or its upper bound
- Determine the marginal distributions of $(T_1, T_2)$
- KL divergence between two multivariate Bernoulli distribution
- Given random variables $(T_1,T_2)$. Show that $T_1$ and $T_2$ are independent and exponentially distributed if..
- Probability of tossing marbles,covariance
Related Questions in STATISTICAL-INFERENCE
- co-variance matrix of discrete multivariate random variable
- Question on completeness of sufficient statistic.
- Probability of tossing marbles,covariance
- Estimate the square root of the success probability of a Binomial Distribution.
- A consistent estimator for theta is?
- Using averages to measure the dispersion of data
- Confidence when inferring p in a binomial distribution
- A problem on Maximum likelihood estimator of $\theta$
- Derive unbiased estimator for $\theta$ when $X_i\sim f(x\mid\theta)=\frac{2x}{\theta^2}\mathbb{1}_{(0,\theta)}(x)$
- Show that $\max(X_1,\ldots,X_n)$ is a sufficient statistic.
Trending Questions
- Induction on the number of equations
- How to convince a math teacher of this simple and obvious fact?
- Find $E[XY|Y+Z=1 ]$
- Refuting the Anti-Cantor Cranks
- What are imaginary numbers?
- Determine the adjoint of $\tilde Q(x)$ for $\tilde Q(x)u:=(Qu)(x)$ where $Q:U→L^2(Ω,ℝ^d$ is a Hilbert-Schmidt operator and $U$ is a Hilbert space
- Why does this innovative method of subtraction from a third grader always work?
- How do we know that the number $1$ is not equal to the number $-1$?
- What are the Implications of having VΩ as a model for a theory?
- Defining a Galois Field based on primitive element versus polynomial?
- Can't find the relationship between two columns of numbers. Please Help
- Is computer science a branch of mathematics?
- Is there a bijection of $\mathbb{R}^n$ with itself such that the forward map is connected but the inverse is not?
- Identification of a quadrilateral as a trapezoid, rectangle, or square
- Generator of inertia group in function field extension
Popular # Hahtags
second-order-logic
numerical-methods
puzzle
logic
probability
number-theory
winding-number
real-analysis
integration
calculus
complex-analysis
sequences-and-series
proof-writing
set-theory
functions
homotopy-theory
elementary-number-theory
ordinary-differential-equations
circles
derivatives
game-theory
definite-integrals
elementary-set-theory
limits
multivariable-calculus
geometry
algebraic-number-theory
proof-verification
partial-derivative
algebra-precalculus
Popular Questions
- What is the integral of 1/x?
- How many squares actually ARE in this picture? Is this a trick question with no right answer?
- Is a matrix multiplied with its transpose something special?
- What is the difference between independent and mutually exclusive events?
- Visually stunning math concepts which are easy to explain
- taylor series of $\ln(1+x)$?
- How to tell if a set of vectors spans a space?
- Calculus question taking derivative to find horizontal tangent line
- How to determine if a function is one-to-one?
- Determine if vectors are linearly independent
- What does it mean to have a determinant equal to zero?
- Is this Batman equation for real?
- How to find perpendicular vector to another vector?
- How to find mean and median from histogram
- How many sides does a circle have?
The idea is to write out a likelihood function and find the $\theta$ in the parameter space that maximizes this likelihood given the observations. The likelihood is proportional to the joint density: $$\mathcal L(\theta \mid x,y) \propto f_{X,Y}(x,y \mid \theta) \overset{\text{ind}}{=} e^{-3\theta} \frac{(3\theta)^x}{x!} e^{-\theta} \frac{\theta^y}{y!}, \quad \theta > 0, \quad x, y \in \{0, 1, 2, \ldots \}.$$ Thus, as a function of $\theta$, the likelihood is proportional to $$\mathcal L(\theta \mid x,y) \propto e^{-4\theta} \theta^{x+y}.$$ Note we have discarded any factors that are not functions of $\theta$. The log-likelihood is then $$\ell(\theta \mid x,y) = -4\theta + (x+y) \log \theta,$$ and its derivative is $$\frac{\partial \ell}{\partial \theta} = -4 + \frac{x+y}{\theta}.$$ Thus $\ell$ is maximized at a critical point $\hat\theta$ satisfying $\partial \ell/\partial \theta = 0$, or $$\hat \theta = \frac{x+y}{4},$$ and we can check that this is indeed a maximum.
This result should call into question your calculation for part (a): note that the expectation of $X$ is $\operatorname{E}[X] = 3\theta$, and the expectation of $Y$ is $\operatorname{E}[Y] = \theta$, thus the expectation of a linear combination of the two is $$\operatorname{E}[k_1 X + k_2 Y] = k_1 \operatorname{E}[X] + k_2 \operatorname{E}[Y] = k_1 (3\theta) + k_2 \theta = (3k_1 + k_2)\theta,$$ and in order for this to equal $\theta$, you must have $3k_1 + k_2 = 1$, not $k_1 + k_2 = 1$. This would also suggest your calculation of the minimum variance unbiased estimator among this family of estimators is not correct.