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Data-Science-For-Beginners/translations/ne/1-Introduction/04-stats-and-probability/assignment.ipynb

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"## सम्भाव्यता र तथ्यांकको परिचय \n",
"## असाइनमेन्ट \n",
"\n",
"यस असाइनमेन्टमा, हामी मधुमेहका बिरामीहरूको डेटासेट प्रयोग गर्नेछौं जुन [यहाँबाट लिइएको हो](https://www4.stat.ncsu.edu/~boos/var.select/diabetes.html)। \n"
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"import pandas as pd\n",
"import numpy as np\n",
"\n",
"df = pd.read_csv(\"../../data/diabetes.tsv\",sep='\\t')\n",
"df.head()"
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" AGE SEX BMI BP S1 S2 S3 S4 S5 S6 Y\n",
"0 59 2 32.1 101.0 157 93.2 38.0 4.0 4.8598 87 151\n",
"1 48 1 21.6 87.0 183 103.2 70.0 3.0 3.8918 69 75\n",
"2 72 2 30.5 93.0 156 93.6 41.0 4.0 4.6728 85 141\n",
"3 24 1 25.3 84.0 198 131.4 40.0 5.0 4.8903 89 206\n",
"4 50 1 23.0 101.0 192 125.4 52.0 4.0 4.2905 80 135"
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" <td>93.6</td>\n",
" <td>41.0</td>\n",
" <td>4.0</td>\n",
" <td>4.6728</td>\n",
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"यस डेटासेटमा स्तम्भहरू निम्न प्रकारका छन्:\n",
"* उमेर र लिङ्ग स्पष्ट छन्\n",
"* BMI भनेको शरीरको मास सूचकांक हो\n",
"* BP भनेको औसत रक्तचाप हो\n",
"* S1 देखि S6 विभिन्न रक्त मापनहरू हुन्\n",
"* Y भनेको एक वर्षको अवधिमा रोगको प्रगतिको गुणात्मक मापन हो\n",
"\n",
"आउनुहोस्, सम्भाव्यता र तथ्याङ्कका विधिहरू प्रयोग गरेर यस डेटासेटको अध्ययन गरौं।\n",
"\n",
"### कार्य १: सबै मानहरूको औसत मान र विचलन गणना गर्नुहोस्\n"
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"### कार्य २: लिङ्गको आधारमा BMI, BP र Y का लागि बक्सप्लटहरू बनाउनुहोस्\n"
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"### कार्य ४: विभिन्न भेरिएबलहरू र रोगको प्रगति (Y) बीचको सम्बन्ध परीक्षण गर्नुहोस्\n",
"\n",
"> **संकेत** सम्बन्ध म्याट्रिक्सले कुन मानहरू परनिर्भर छन् भन्ने बारेमा सबैभन्दा उपयोगी जानकारी दिन्छ।\n"
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"\n---\n\n**अस्वीकरण**: \nयो दस्तावेज़ AI अनुवाद सेवा [Co-op Translator](https://github.com/Azure/co-op-translator) प्रयोग गरी अनुवाद गरिएको हो। हामी यथासम्भव सटीकता सुनिश्चित गर्न प्रयास गर्छौं, तर कृपया ध्यान दिनुहोस् कि स्वचालित अनुवादहरूमा त्रुटिहरू वा अशुद्धताहरू हुन सक्छन्। यसको मूल भाषामा रहेको मूल दस्तावेज़लाई आधिकारिक स्रोत मानिनुपर्छ। महत्त्वपूर्ण जानकारीका लागि, व्यावसायिक मानव अनुवाद सिफारिस गरिन्छ। यस अनुवादको प्रयोगबाट उत्पन्न हुने कुनै पनि गलतफहमी वा गलत व्याख्याका लागि हामी जिम्मेवार हुने छैनौं।\n"
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