I have a large text corpus of about ~7M characters that I am training an LSTM network on. However I am consistently seeing that after about the 5th epoch, instead of the generated sentences improving they become completely junk. I have pasted an example below:
Generating with seed: "n who is in possession of the biggest ro"
n who is in possession of the biggest ro to tato ton ant an to o
ona toon t o o taon an s to ao t tan t tout att tj ton an o t an $
I have tried with different temperatures as well. The example pasted above was the most conservative. Here's another generation:
Generating with seed: 'to sin, and most of the known world is n'
to sin, and most of the known world is na ararea t tarre a araa arae
tor tae a a aaa aaata ater tje aea arare ar araererrt tmaear araae
To debug, I ended up copy pasting the LSTM example from keras and trained it on my corpus. Again, around iteration 5, it begins to generate junk.
Any ideas on how to debug this or what this might be a sign off? It starts off with much more coherent predictions but suddenly falls off.