What are the pitfalls to avoid when trying to improve the readability of a graph?
- Avoiding color altogether
- Making the graph too simple
- Overloading the graph with too much information
- Using uncommon graph types
While improving readability, a common pitfall is overloading the graph with too much information. Too many data points, variables, or details can confuse the audience and obscure the main message. It's crucial to strike a balance, providing enough information to convey the message accurately, but not so much that it overwhelms the audience.
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