Description: A joint probability graph is a graphical representation that illustrates the dependency relationships among multiple random variables. In this type of graph, each node represents a variable, while the edges indicate the joint probabilities that exist between them. This approach allows for visualizing how variables interact and influence each other, facilitating the analysis of complex systems where interactions are key. Joint probability graphs are fundamental in the fields of statistics and probability theory, as they provide an intuitive way to understand the dependency structure among variables. Additionally, they are used in statistical inference models, where the goal is to estimate the probability of certain events based on the information from other variables. The ability to represent complex relationships graphically makes these graphs valuable tools in various disciplines, including artificial intelligence, biology, economics, and engineering, where understanding the interactions among variables is crucial for informed decision-making.