Discussion Overview
The discussion revolves around the calculation of conditional variance in the context of a continuous distribution, specifically focusing on the expression Var[Y|X=x]. Participants explore how to set up the problem and derive the necessary components, including conditional expectations.
Discussion Character
- Homework-related
- Mathematical reasoning
Main Points Raised
- One participant seeks guidance on how to find the conditional variance Var[Y|X=x] given a specific continuous distribution function f(x,y) = 2x for defined ranges.
- Another participant provides the formula for conditional variance, stating that VAR[Y|X=x] = E[Y^2|X=x] - (E[Y|X=x])^2, prompting further exploration of how to calculate these expectations.
- A participant questions how to derive the conditional expectation E[Y|X=x], suggesting the use of the integral E[Y|X=x]=∫ y*f(y|x)*dy, where f(y|x) is defined as f(x,y) / f(x).
- Another response elaborates on the integration process, explaining that one integrates over the y component to obtain an expectation in terms of a fixed x, describing the concept of 'slices' in the y-z axis corresponding to univariate distributions for each x value.
Areas of Agreement / Disagreement
Participants generally agree on the formulas for conditional variance and expectation but do not reach a consensus on the specific steps or methods to compute these values from the given distribution.
Contextual Notes
The discussion does not resolve the mathematical steps required to compute the conditional variance or expectation, leaving some assumptions and dependencies on definitions unaddressed.