I suggest considering these usage factors.
If you are processing the data within your own code, then you can use whatever data structures you wish. However, you may have issues developing your own implementation of a complex data structure, so consider using a pre-built one instead. Many come with whatever programming platform you may be using, while many more are documented in various books, articles, and discussions both printed and online. If you properly isolate your work from others, then you can safely do whatever you want.
On the other hand, if you need to share that data with others, then most careful consideration should be given. If you must share the data with an API, or via a storage mechanism (database, file, etc.), or via some transport (sockets, HTTP, etc.), then you should be thinking of others first and foremost. If you wish success and respect from your efforts, then you need to pay attention to standards and conventions and cost. Thankfully, practically any such use that you can imagine has been done before, so you can leverage others' efforts.
In a database, consider how others (and yourself) will be inserting, updating, deleting, and selecting the data. For example, using XML in a database makes all these steps unnecessarily hard and expensive compared to the alternatives. Pay attention to database normalization--learn it if you are not familiar already.
If you are dealing with text, pay attention to character encodings and make them explicit.
If there is an existing standard or convention for what you are doing, honor it. If there is a compelling reason to deviate, then accept the burden of justifying it, explaining it, and making it easy for others to accommodate your choices.
If you control both sides of a communication/transport medium, feel free to optimize. If you don't, err on the side of interoperability. Remember that a primary difference between the two scenarios is the level of self-description embedded with the data: interoperability has lots, optimization drops it based on shared assumptions. Text-rich data is more understandable, but binary is faster.
Think about your audience.