Tengo un Dataframe y me gustaria hacer otra columna que que Combinen las columnas cuyo nombre comienza con la misma value
en Answer
y QID
.
Es por decir, teniendo el siguiente Dataframe
QID Category Text QType Question: Answer0 Answer1 Country
0 16 Automotive Access to car Single Do you have access to a car? I own a car/cars I own a car/cars UK
1 16 Automotive Access to car Single Do you have access to a car? I lease/ have a company car I lease/have a company car UK
2 16 Automotive Access to car Single Do you have access to a car? I have access to a car/cars I have access to a car/cars UK
3 16 Automotive Access to car Single Do you have access to a car? No, I don’t have access to a car/cars No, I don't have access to a car UK
4 16 Automotive Access to car Single Do you have access to a car? Prefer not to say Prefer not to say UK
Necesito Obtener como Resultado:
QID Category Text QType Question: Answer0 Answer1 Answer2 Answer3 Country Answers
0 16 Automotive Access to car Single Do you have access to a car? I own a car/cars I lease/ have a company car I have access to a car/cars No, I don’t have access to a car/cars UK ['I own a car/cars', 'I lease/ have a company car' ,'I have access to a car/cars', 'No, I don’t have access to a car/cars', 'Prefer not to say Prefer not to say']
Hasta ahora tengo lo siguiente:
# lazy - want first of all attributes except QID and Answer columns
agg = {col:"first" for col in list(df.columns) if col!="QID" and "Answer" not in col}
# get a list of all answers in Answer0 for a QID
agg = {**agg, **{"Answer0":lambda s: list(s)}}
# helper function for row call. not needed but makes more readable
def ans(r, i):
return "" if i>=len(r["AnswerT"]) else r["AnswerT"][i]
# split list from aggregation back out into columns using assign
# rename Answer0 to AnserT from aggregation so that it can be referred to.
# AnswerT drop it when don't want it any more
dfgrouped = df.groupby("QID").agg(agg).reset_index().rename(columns={"Answer0":"AnswerT"}).assign(
Answer0=lambda dfa: dfa.apply(lambda r: ans(r, 0), axis=1),
Answer1=lambda dfa: dfa.apply(lambda r: ans(r, 1), axis=1),
Answer2=lambda dfa: dfa.apply(lambda r: ans(r, 2), axis=1),
Answer3=lambda dfa: dfa.apply(lambda r: ans(r, 3), axis=1),
Answer4=lambda dfa: dfa.apply(lambda r: ans(r, 4), axis=1),
Answer5=lambda dfa: dfa.apply(lambda r: ans(r, 5), axis=1),
Answer6=lambda dfa: dfa.apply(lambda r: ans(r, 6), axis=1),
).drop("AnswerT", axis=1)
print(dfgrouped.to_string(index=False))
Funciona bien pero hay veces que tengo más de seis respuestas. ¿Cómo lo haces dinámico en términos del número de respuestas dadas a un par de (QID
, Question
:)?