Saving in incremental order is definitely faster. But if your array currently has 1 billion elements, you have added 1 billion entries, and deleted 950 million entries, you might want to reuse space rather than increasing the size of your array yet again. However much memory you have, you'll run out someday. With a good hash table, you could save the same amount of data, comfortably, with a 100 million element array that you never need to resize.
Hash tables do require a good algorithm to develop hash codes. If their size changes dramatically, they can either waste space or cause repeated allocations of large arrays (which can seriously annoy garbage collectors). But they are fast, and checking for duplicates is a simple index operation. Small numbers of duplicates can be handled in small linked lists, which are pretty fast. It does help if you can guess a good initial size for your hash table.
I've always preferred "maps" or "dictionaries" based on binary trees. They're slower, but more flexible and don't use huge arrays; memory is allocated and freed in little, manageable bits. They can handle big swings in size/usage. You don't need a trustworthy hash code generator. But if you know your data, hash tables are usually better.