I have an existing gensim Doc2Vec model, and I'm trying to do iterative updates to the training set, and by extension, the model.
I take the new documents, and perform preproecssing as normal:
stoplist = nltk.corpus.stopwords.words('english')
train_corpus= []
for i, document in enumerate(corpus_update['body'].values.tolist()):
train_corpus.append(gensim.models.doc2vec.TaggedDocument([word for word in gensim.utils.simple_preprocess(document) if word not in stoplist], [i]))
I then load the original model, update the vocabulary, and retrain:
#### Original model
## model = gensim.models.doc2vec.Doc2Vec(dm=0, size=300, hs=1, min_count=10, dbow_words= 1, negative=5, workers=cores)
model = Doc2Vec.load('pvdbow_model_6_06_12_17.doc2vec')
model.build_vocab(train_corpus, update=True)
model.train(train_corpus, total_examples=model.corpus_count, epochs=model.iter)
I then update the training set Pandas dataframe by appending the new data, and reset the index.
corpus = corpus.append(corpus_update)
corpus = corpus.reset_index(drop=True)
However, when I try to use infer_vector() with the updated model:
inferred_vector = model1.infer_vector(tokens)
sims = model.docvecs.most_similar([inferred_vector], topn=len(model.docvecs))
the result quality is poor, suggesting that the indices from the model and the training set dataframe no longer match.
When I compare it against the non-updated training set dataframe (again using the updated model) the results are fine - though, obviously I'm missing the new documents.
Is there anyway to have both updated, as I want to be able to make frequent updates to the model without a full retrain of the model?