What do you mean by "do some text mining"? Are you just looking to store the text? Or, are you looking for a solution?
Many databases offer the capability to store text and do fast retrievals on them.
However, text mining typically covers a broader range of themes. Here are some examples:
- Finding documents with similar themes.
- Exposing sentiment in the documents.
- Answering questions posed in natural language.
- Summarizing documents.
- Filling in data structures with information from documents.
- Using information from documents for predictive modeling purposes.
- Assigning codes to documents.
For such analyses, you would normally use text mining tools (you can look for these on www.kddnuggets.com, for instance). The tool then affects how the text is stored.
The last chapter of "Data Mining Techniques for Marketing, Sales, and Customer Support" is about text mining and has a very good case study on text mining applied to customer service records.
[In response to comment]
Is this an academic project or "real world"? Is the text monolingual? If so, is it English? You definitely need to do some research. Text analysis/mining has been an area of rather intense study since, at least, the time when Alan Turing proposed the Turing test in the 1930s.
As an example, I can readily think of four very different options for storing text for analysis. The first is "as is", which is most useful if you have lots of processors and memory. The second would be "grammatically", with text tagged with grammar and meanings, which is most effective if you have a team with lots of PhDs. Third is as an inverted index, which is the basic form for searching and some proximity matching. The fourth is by projecting onto an orthogonal space, using singular value decomposition (most useful if you want to use the text as input to other statistical techniques).