You haven't explained the nature of the calculations you're needing to do on the table/matrix, so I'm having to make assumptions there, but if I read your question correctly, this may be a poster-child case for the use of a relational database -- even if you don't have any actual relations in your database. If you can't use a full server, use SQL Server Compact Edition as an embedded database, which would allow you to control the .SDF file programmatically if you chose.
After a second consideration, I withdraw my suggestion for a database. This is entirely because of the number of columns in the table, any relational database you use will have hard limits on this, and I don't see a way around it that isn't amazingly complicated.
Based on your edit, I would say that there are three things you are interested in:
- A way to analyze the presence of words in documents. This is the bulk of your sample data file, primarily being boolean values indicating the presence or lack of a word in a document.
- The words themselves. This is primarily contained in the first row of your sample data file.
- A means of identifying documents and their classification. This is the first and last column of your data file.
After thinking about it for a little bit, this is how I would model your data:
With the case of word presence, I feel it's best to avoid a complex object model. You're wanting to do pure calculation in both directions (by column and by row), and the most flexible and potentially performant structure for that in my opinion is a simple two-dimensional array of
bool fields, like so:
var wordMatrix = new bool[numDocuments,numWords];
The words themselves should be in an array or list of
strings that are index-linked to the second column of the word matrix -- the one defined by
numWords in the example above. If you ever needed to quickly search for a particular word, you could use a
Dictionary<string, int>, with the key as the word and the value as the index, to quickly find the index of a particular word.
The document identification would similarly be in an array or list of
ints index-linked to the first column. I'm assuming the document ids are integer values there. The classification would be a similar array or list, although I'd use a list of
enums representing each possible value of the classification. As with the word search, if you needed to search for documents by id, you could have a
Dictionary<int, int> act as your search index.
I've made several assumptions with this model, particularly that you want to do pure calculation on the word presence in all directions rather than "per document". If I'm wrong, a simpler approach might be to drop the two-dimensional array and model by document, i.e. a single C#
Document class, with a
DocumentClasification field as well as a simple array of booleans that are index-linked to the word list. You could then work with a list of these
Document objects along with a separate list of words.
Once you have a data model you like, saving it to disk is the easiest part. Just use C# serialization. You can save it via XML or binary, your choice. Binary would give you the smallest file size, naturally (I figure a little more than 200MB plus the size of a list of 30000 words). If you include the Dictionary lookup indexes, perhaps an additional 120kB.