Exploring Random Graphs: Probability Model and Connected Components Analysis"

In summary, the conversation discusses random graphs and their properties, specifically the number of connected components and how it relates to the size of the vertex set and the probability of an edge being present. The Erdős–Rényi model is mentioned as a way to generate random graphs, and it is noted that the threshold probability for connectedness is very small for large graphs.
  • #1
repoman1
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Having a hard time with this problem. Can anyone guide me in the correct direction?

Random graphs are a fascinating subject of applied and theoretical research. These can be generated with a fixed vertex set V and edges added to the edge set E based on some probability model, such as a coin flip. Speculate on how many connected components a random graph might have if the likelihood of an edge (v1,v2) being in the set E is 50%. Do you think the number of components would depend on the size of the vertex set V? Explain why or why not.
 
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  • #2
I assume the likelihood of an edge $(v_1,v_2)$ is the same for all pairs of vertices $(v_1,v_2)$, and the presence of an edge is independent of other edges. Suppose a random graph with these properties has two connected components with $m$ and $n$ vertices, respectively. There are $mn$ edges that are missing between these two components, and the probability of that is $2^{-mn}$, which is exceedingly small for large $m$, $n$.

For more details, consult Wikipedia about Erdős–Rényi model of random graph generation. It turns out that if $p<\frac{(1-\varepsilon)\ln n}{n}$ for some $\varepsilon>0$, then a random graph with $n$ vertices where the probability of an edge is $p$ will almost surely be disconnected, and if $p>\frac{(1+\varepsilon)\ln n}{n}$, then a random graph with $n$ vertices will almost surely be connected. Since $\frac{\ln n}{n}\to0$ as $n\to\infty$, the threshold probability for connectedness is very small for large graphs, certainly smaller than 0.5.
 

FAQ: Exploring Random Graphs: Probability Model and Connected Components Analysis"

What is discrete math graph?

Discrete math graph is a mathematical concept that deals with discrete objects and their relationships. It involves representing a set of objects or values as vertices, and their connections or relationships as edges in a graph.

How is discrete math graph used in real life?

Discrete math graph is used in various fields such as computer science, economics, and social sciences to model and analyze relationships between discrete objects. It can be used to solve problems related to network optimization, scheduling, and decision making.

What are the main components of a discrete math graph?

The main components of a discrete math graph are vertices, edges, and weights (optional). Vertices represent the discrete objects, edges represent the relationships or connections between them, and weights represent the value or cost associated with each edge.

What are the different types of discrete math graphs?

Some of the commonly used types of discrete math graphs are directed graphs, undirected graphs, weighted graphs, and complete graphs. Each type has its unique characteristics and applications.

How can I use discrete math graph to solve a problem?

To solve a problem using discrete math graph, you first need to identify the given set of objects and their relationships. Then, you can represent them in a graph and use algorithms, such as Dijkstra's algorithm or Kruskal's algorithm, to find the optimal solution. It is important to understand the problem and choose the appropriate type of graph and algorithm for an efficient solution.

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