Systemy-rekomedacyjne-praca.../.ipynb_checkpoints/P4. Appendix - embeddings in high demensional spaces-checkpoint.ipynb
2020-06-05 16:01:34 +02:00

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"['dimensions: 1, cases when observation is the nearest: 0.0%',\n",
" 'dimensions: 2, cases when observation is the nearest: 0.0%',\n",
" 'dimensions: 3, cases when observation is the nearest: 0.0%',\n",
" 'dimensions: 10, cases when observation is the nearest: 7.000000000000001%',\n",
" 'dimensions: 20, cases when observation is the nearest: 57.99999999999999%',\n",
" 'dimensions: 30, cases when observation is the nearest: 92.0%',\n",
" 'dimensions: 40, cases when observation is the nearest: 99.0%',\n",
" 'dimensions: 50, cases when observation is the nearest: 100.0%',\n",
" 'dimensions: 60, cases when observation is the nearest: 100.0%',\n",
" 'dimensions: 70, cases when observation is the nearest: 100.0%',\n",
" 'dimensions: 80, cases when observation is the nearest: 100.0%',\n",
" 'dimensions: 90, cases when observation is the nearest: 100.0%']"
]
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"source": [
"import numpy as np\n",
"import pandas as pd\n",
"import random\n",
"from numpy.linalg import norm\n",
"\n",
"dimensions=[1,2,3]+[10*i for i in range(1,10)]\n",
"nb_vectors=10000\n",
"trials=100\n",
"k=1 # by setting k=1 we want to check how often the closest vector to the avarage of 2 random vectors is one of these 2 vectors\n",
"\n",
"result=[]\n",
"for dimension in dimensions:\n",
" vectors=np.random.normal(0,1,size=(nb_vectors, dimension))\n",
" successes=0\n",
" for i in range(trials):\n",
" i1,i2=random.sample(range(nb_vectors),2)\n",
" target=(vectors[i1]+vectors[i2])/2\n",
"\n",
" distances=pd.DataFrame(enumerate(np.dot(target, vectors.transpose())/norm(target)/norm(vectors.transpose(), axis=0)))\n",
" distances=distances.sort_values(by=[1], ascending=False)\n",
" if (i1 in (list(distances[0][:k]))) | (i2 in (list(distances[0][:k]))):\n",
" successes+=1\n",
" result.append(successes/trials)\n",
" \n",
"[f'dimensions: {i}, cases when observation is the nearest: {100*round(j,3)}%' for i,j in zip(dimensions, result)]"
]
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