次の構造に基づくテキストファイルに基づいてPandas DataFrameを作成する必要があります。
Alabama[edit]
Auburn (Auburn University)[1]
Florence (University of North Alabama)
Jacksonville (Jacksonville State University)[2]
Livingston (University of West Alabama)[2]
Montevallo (University of Montevallo)[2]
Troy (Troy University)[2]
Tuscaloosa (University of Alabama, Stillman College, Shelton State)[3][4]
Tuskegee (Tuskegee University)[5]
Alaska[edit]
Fairbanks (University of Alaska Fairbanks)[2]
Arizona[edit]
Flagstaff (Northern Arizona University)[6]
Tempe (Arizona State University)
Tucson (University of Arizona)
Arkansas[edit]
「[edit]」の行は州で、[number]行は地域です。以下を分割して、各地域名の都道府県名を繰り返す必要があります。
Index State Region Name
0 Alabama Aurburn...
1 Alabama Florence...
2 Alabama Jacksonville...
...
9 Alaska Fairbanks...
10 Alaska Arizona...
11 Alaska Flagstaff...
Pandas DataFrame
「[編集]」と「[番号]」または「(文字)」に基づいてテキストファイルをそれぞれの列に分割し、各地域名に都道府県名を繰り返す方法がわかりません。次のことを達成するための開始点を誰かに教えてください。
最初に read_csv
パラメータname
を使用して作成DataFrame
を列Region Name
で作成します。セパレータは値に含まれない値です(;
など):
df = pd.read_csv('filename.txt', sep=";", names=['Region Name'])
次に insert
新しい列State
with extract
テキストの行[edit]
および replace
(
から列Region Name
までのすべての値。
df.insert(0, 'State', df['Region Name'].str.extract('(.*)\[edit\]', expand=False).ffill())
df['Region Name'] = df['Region Name'].str.replace(r' \(.+$', '')
最後に、テキスト[edit]
by boolean indexing
で行を削除し、マスクは str.contains
で作成されます。
df = df[~df['Region Name'].str.contains('\[edit\]')].reset_index(drop=True)
print (df)
State Region Name
0 Alabama Auburn
1 Alabama Florence
2 Alabama Jacksonville
3 Alabama Livingston
4 Alabama Montevallo
5 Alabama Troy
6 Alabama Tuscaloosa
7 Alabama Tuskegee
8 Alaska Fairbanks
9 Arizona Flagstaff
10 Arizona Tempe
11 Arizona Tucson
すべての値のソリューションが必要な場合は簡単です:
df = pd.read_csv('filename.txt', sep=";", names=['Region Name'])
df.insert(0, 'State', df['Region Name'].str.extract('(.*)\[edit\]', expand=False).ffill())
df = df[~df['Region Name'].str.contains('\[edit\]')].reset_index(drop=True)
print (df)
State Region Name
0 Alabama Auburn (Auburn University)[1]
1 Alabama Florence (University of North Alabama)
2 Alabama Jacksonville (Jacksonville State University)[2]
3 Alabama Livingston (University of West Alabama)[2]
4 Alabama Montevallo (University of Montevallo)[2]
5 Alabama Troy (Troy University)[2]
6 Alabama Tuscaloosa (University of Alabama, Stillman Co...
7 Alabama Tuskegee (Tuskegee University)[5]
8 Alaska Fairbanks (University of Alaska Fairbanks)[2]
9 Arizona Flagstaff (Northern Arizona University)[6]
10 Arizona Tempe (Arizona State University)
11 Arizona Tucson (University of Arizona)
最初にファイルをタプルに解析できます:
import pandas as pd
from collections import namedtuple
Item = namedtuple('Item', 'state area')
items = []
with open('unis.txt') as f:
for line in f:
l = line.rstrip('\n')
if l.endswith('[edit]'):
state = l.rstrip('[edit]')
else:
i = l.index(' (')
area = l[:i]
items.append(Item(state, area))
df = pd.DataFrame.from_records(items, columns=['State', 'Area'])
print df
出力:
State Area
0 Alabama Auburn
1 Alabama Florence
2 Alabama Jacksonville
3 Alabama Livingston
4 Alabama Montevallo
5 Alabama Troy
6 Alabama Tuscaloosa
7 Alabama Tuskegee
8 Alaska Fairbanks
9 Arizona Flagstaff
10 Arizona Tempe
11 Arizona Tucson
次のDFがあると仮定します。
In [73]: df
Out[73]:
text
0 Alabama[edit]
1 Auburn (Auburn University)[1]
2 Florence (University of North Alabama)
3 Jacksonville (Jacksonville State University)[2]
4 Livingston (University of West Alabama)[2]
5 Montevallo (University of Montevallo)[2]
6 Troy (Troy University)[2]
7 Tuscaloosa (University of Alabama, Stillman Co...
8 Tuskegee (Tuskegee University)[5]
9 Alaska[edit]
10 Fairbanks (University of Alaska Fairbanks)[2]
11 Arizona[edit]
12 Flagstaff (Northern Arizona University)[6]
13 Tempe (Arizona State University)
14 Tucson (University of Arizona)
15 Arkansas[edit]
あなたは Series.str.extract() メソッドを使うことができます:
In [117]: df['State'] = df.loc[df.text.str.contains('[edit]', regex=False), 'text'].str.extract(r'(.*?)\[edit\]', expand=False)
In [118]: df['Region Name'] = df.loc[df.State.isnull(), 'text'].str.extract(r'(.*?)\s*[\(\[]+.*[\n]*', expand=False)
In [120]: df.State = df.State.ffill()
In [121]: df
Out[121]:
text State Region Name
0 Alabama[edit] Alabama NaN
1 Auburn (Auburn University)[1] Alabama Auburn
2 Florence (University of North Alabama) Alabama Florence
3 Jacksonville (Jacksonville State University)[2] Alabama Jacksonville
4 Livingston (University of West Alabama)[2] Alabama Livingston
5 Montevallo (University of Montevallo)[2] Alabama Montevallo
6 Troy (Troy University)[2] Alabama Troy
7 Tuscaloosa (University of Alabama, Stillman Co... Alabama Tuscaloosa
8 Tuskegee (Tuskegee University)[5] Alabama Tuskegee
9 Alaska[edit] Alaska NaN
10 Fairbanks (University of Alaska Fairbanks)[2] Alaska Fairbanks
11 Arizona[edit] Arizona NaN
12 Flagstaff (Northern Arizona University)[6] Arizona Flagstaff
13 Tempe (Arizona State University) Arizona Tempe
14 Tucson (University of Arizona) Arizona Tucson
15 Arkansas[edit] Arkansas NaN
In [122]: df = df.dropna()
In [123]: df
Out[123]:
text State Region Name
1 Auburn (Auburn University)[1] Alabama Auburn
2 Florence (University of North Alabama) Alabama Florence
3 Jacksonville (Jacksonville State University)[2] Alabama Jacksonville
4 Livingston (University of West Alabama)[2] Alabama Livingston
5 Montevallo (University of Montevallo)[2] Alabama Montevallo
6 Troy (Troy University)[2] Alabama Troy
7 Tuscaloosa (University of Alabama, Stillman Co... Alabama Tuscaloosa
8 Tuskegee (Tuskegee University)[5] Alabama Tuskegee
10 Fairbanks (University of Alaska Fairbanks)[2] Alaska Fairbanks
12 Flagstaff (Northern Arizona University)[6] Arizona Flagstaff
13 Tempe (Arizona State University) Arizona Tempe
14 Tucson (University of Arizona) Arizona Tucson
TL; DRs.groupby(s.str.extract('(?P<State>.*?)\[edit\]', expand=False).ffill()).apply(pd.Series.tail, n=-1).reset_index(name='Region_Name').iloc[:, [0, 2]]
regex = '(?P<State>.*?)\[edit\]' # pattern to match
print(s.groupby(
# will get nulls where we don't have "[edit]"
# forward fill fills in the most recent line
# where we did have an "[edit]"
s.str.extract(regex, expand=False).ffill()
).apply(
# I still have all the original values
# If I group by the forward filled rows
# I'll want to drop the first one within each group
pd.Series.tail, n=-1
).reset_index(
# munge the dataframe to get columns sorted
name='Region_Name'
)[['State', 'Region_Name']])
State Region_Name
0 Alabama Auburn (Auburn University)[1]
1 Alabama Florence (University of North Alabama)
2 Alabama Jacksonville (Jacksonville State University)[2]
3 Alabama Livingston (University of West Alabama)[2]
4 Alabama Montevallo (University of Montevallo)[2]
5 Alabama Troy (Troy University)[2]
6 Alabama Tuscaloosa (University of Alabama, Stillman Co...
7 Alabama Tuskegee (Tuskegee University)[5]
8 Alaska Fairbanks (University of Alaska Fairbanks)[2]
9 Arizona Flagstaff (Northern Arizona University)[6]
10 Arizona Tempe (Arizona State University)
11 Arizona Tucson (University of Arizona)
セットアップ
txt = """Alabama[edit]
Auburn (Auburn University)[1]
Florence (University of North Alabama)
Jacksonville (Jacksonville State University)[2]
Livingston (University of West Alabama)[2]
Montevallo (University of Montevallo)[2]
Troy (Troy University)[2]
Tuscaloosa (University of Alabama, Stillman College, Shelton State)[3][4]
Tuskegee (Tuskegee University)[5]
Alaska[edit]
Fairbanks (University of Alaska Fairbanks)[2]
Arizona[edit]
Flagstaff (Northern Arizona University)[6]
Tempe (Arizona State University)
Tucson (University of Arizona)
Arkansas[edit]"""
s = pd.read_csv(StringIO(txt), sep='|', header=None, squeeze=True)
データフレームに入れる前に、ファイルに追加の操作を実行する必要があるでしょう。
開始点は、ファイルを行に分割し、各行で文字列[edit]
を検索し、文字列名が存在する場合、辞書のキーとして文字列名を置くことです...
Pandasには、この形式のファイルを処理する組み込みメソッドがあるとは思いません。