Thanks to this answer (I've changed the code a little bit to make it better). you can use this code for solving your problem.

we have all our minor set of words in `restricted_word_set`

(it can be either list or set) and `w2v`

is our model, so here is the function:

```
import numpy as np
def restrict_w2v(w2v, restricted_word_set):
new_vectors = []
new_vocab = {}
new_index2entity = []
new_vectors_norm = []
for i in range(len(w2v.vocab)):
word = w2v.index2entity[i]
vec = w2v.vectors[i]
vocab = w2v.vocab[word]
vec_norm = w2v.vectors_norm[i]
if word in restricted_word_set:
vocab.index = len(new_index2entity)
new_index2entity.append(word)
new_vocab[word] = vocab
new_vectors.append(vec)
new_vectors_norm.append(vec_norm)
w2v.vocab = new_vocab
w2v.vectors = np.array(new_vectors)
w2v.index2entity = np.array(new_index2entity)
w2v.index2word = np.array(new_index2entity)
w2v.vectors_norm = np.array(new_vectors_norm)
```

**WARNING:** when you first create the model the `vectors_norm == None`

so
you will get an error if you use this function there. `vectors_norm`

will get a value of the type `numpy.ndarray`

after the first use. so
before using the function try something like `most_similar("cat")`

so
that `vectors_norm`

not be equal to `None`

.

It rewrites all of the variables which are related to the words based on the Word2VecKeyedVectors.

Usage:

```
w2v = KeyedVectors.load_word2vec_format("GoogleNews-vectors-negative300.bin.gz", binary=True)
w2v.most_similar("beer")
```

[('beers', 0.8409687876701355),

('lager', 0.7733745574951172),

('Beer', 0.71753990650177),

('drinks', 0.668931245803833),

('lagers', 0.6570086479187012),

('Yuengling_Lager', 0.655455470085144),

('microbrew', 0.6534324884414673),

('Brooklyn_Lager', 0.6501551866531372),

('suds', 0.6497018337249756),

('brewed_beer', 0.6490240097045898)]

```
restricted_word_set = {"beer", "wine", "computer", "python", "bash", "lagers"}
restrict_w2v(w2v, restricted_word_set)
w2v.most_similar("beer")
```

[('lagers', 0.6570085287094116),

('wine', 0.6217695474624634),

('bash', 0.20583480596542358),

('computer', 0.06677375733852386),

('python', 0.005948573350906372)]

it can be used for removing some words either.