Menghubungkan DataFrame

Membersihkan Data di Python

Adel Nehme

VP of AI Curriculum, DataCamp

Pencocokan rekaman

Membersihkan Data di Python

Pencocokan rekaman

Membersihkan Data di Python

DataFrame kita

census_A

             given_name  surname date_of_birth         suburb state  address_1
rec_id                                                                
rec-1070-org   michaela  neumann      19151111  winston hills   nsw  stanley street 
rec-1016-org   courtney  painter      19161214      richlands   vic  pinkerton circuit 
...

census_B

               given_name  surname date_of_birth             suburb state  address_1
rec_id                                                                      
rec-561-dup-0       elton      NaN      19651013         windermere   vic  light setreet 
rec-2642-dup-0   mitchell    maxon      19390212         north ryde   nsw  edkins street 
...
Membersihkan Data di Python

Yang sudah kita lakukan

# Impor recordlinkage dan buat semua pasangan
import recordlinkage
indexer = recordlinkage.Index()
indexer.block('state')
full_pairs = indexer.index(census_A, census_B)

# Langkah perbandingan compare_cl = recordlinkage.Compare() compare_cl.exact('date_of_birth', 'date_of_birth', label='date_of_birth') compare_cl.exact('state', 'state', label='state') compare_cl.string('surname', 'surname', threshold=0.85, label='surname') compare_cl.string('address_1', 'address_1', threshold=0.85, label='address_1')
potential_matches = compare_cl.compute(full_pairs, census_A, census_B)
Membersihkan Data di Python

Apa yang kita lakukan sekarang

Membersihkan Data di Python

Calon kecocokan kita

potential_matches

Membersihkan Data di Python

Calon kecocokan kita

potential_matches

Membersihkan Data di Python

Calon kecocokan kita

potential_matches

Membersihkan Data di Python

Calon kecocokan kita

potential_matches

Membersihkan Data di Python

Kecocokan yang mungkin

matches = potential_matches[potential_matches.sum(axis = 1) >= 3]
print(matches)

Membersihkan Data di Python

Kecocokan yang mungkin

matches = potential_matches[potential_matches.sum(axis = 1) >= 3]
print(matches)

Membersihkan Data di Python

Ambil indeksnya

matches.index
MultiIndex(levels=[['rec-1007-org', 'rec-1016-org', 'rec-1054-org', 'rec-1066-org', 
'rec-1070-org', 'rec-1075-org', 'rec-1080-org', 'rec-110-org', ...
# Ambil indeks dari hanya census_B
duplicate_rows = matches.index.get_level_values(1)
print(census_B_index)
Index(['rec-2404-dup-0', 'rec-4178-dup-0', 'rec-1054-dup-0', 'rec-4663-dup-0',
       'rec-485-dup-0', 'rec-2950-dup-0', 'rec-1234-dup-0', ... , 'rec-299-dup-0'])
Membersihkan Data di Python

Menghubungkan DataFrame

# Menemukan duplikat di census_B
census_B_duplicates = census_B[census_B.index.isin(duplicate_rows)]

# Menemukan baris baru di census_B census_B_new = census_B[~census_B.index.isin(duplicate_rows)]
# Hubungkan DataFrame!
full_census = pd.concat([census_A, census_B_new])
Membersihkan Data di Python
# Impor recordlinkage dan buat pasangan serta bandingkan kolom
...
# Hasilkan calon kecocokan
potential_matches = compare_cl.compute(full_pairs, census_A, census_B)

# Ambil kecocokan dengan 3+ kolom yang cocok matches = potential_matches[potential_matches.sum(axis = 1) >= 3]
# Ambil indeks untuk baris census_B yang cocok saja duplicate_rows = matches.index.get_level_values(1)
# Menemukan baris baru di census_B census_B_new = census_B[~census_B.index.isin(duplicate_rows)]
# Hubungkan DataFrame! full_census = pd.concat([census_A, census_B_new])
Membersihkan Data di Python

Ayo berlatih!

Membersihkan Data di Python

Preparing Video For Download...