Pandas - keep track of value after applying linear regression on other values - pandas

I am trying to apply linear regression to a series of variables in my pandas dataframe, excepting player_id, which is only a way to track the player being predicted.
print (df.info())
player_id 1601 non-null int64
X1 1601 non-null float64
X2 1601 non-null float64
X3 1601 non-null float64
X4 1601 non-null float64
X5 1601 non-null float64
X6 1601 non-null float64
X7 1601 non-null float64
X8 1601 non-null float64
Y 1601 non-null float64
this is how I try to declare my variables:
df = df[['X1', 'X2', 'X3', 'X4', 'X5', 'X6', 'X7', 'X8', 'Y']]
X = df.drop(axis=1, columns=['Y'])
# normalize data
X = X.astype('float32') / 255.
# independent variable
y = df['Y']
# normalize data
y = y.astype('float32') / 255.
model = LinearRegression()
model.fit(X, y)
y_hat = model.predict(X)
The question is: once I have my array of predicted values, how do I track them back to each player_id, in order to know to which player the predicted value refers to?
Example:
To which player_id max(network.predict(X)) refers to?

This works:
for i, value in enumerate(list(y_hat.flatten())):
print (df.iloc[i]['player_id'])
df['prediction'].iloc[i] = value.astype('float32')

it will return list of values in same order as the X you supplied. So for ith row in X, ith value of y_hat is the prediction.

Related

PANDAS grouby - I'm having an issue [duplicate]

I created a DataFrame from a list of lists:
table = [
['a', '1.2', '4.2' ],
['b', '70', '0.03'],
['x', '5', '0' ],
]
df = pd.DataFrame(table)
How do I convert the columns to specific types? In this case, I want to convert columns 2 and 3 into floats.
Is there a way to specify the types while converting the list to DataFrame? Or is it better to create the DataFrame first and then loop through the columns to change the dtype for each column? Ideally I would like to do this in a dynamic way because there can be hundreds of columns, and I don't want to specify exactly which columns are of which type. All I can guarantee is that each column contains values of the same type.
You have four main options for converting types in pandas:
to_numeric() - provides functionality to safely convert non-numeric types (e.g. strings) to a suitable numeric type. (See also to_datetime() and to_timedelta().)
astype() - convert (almost) any type to (almost) any other type (even if it's not necessarily sensible to do so). Also allows you to convert to categorial types (very useful).
infer_objects() - a utility method to convert object columns holding Python objects to a pandas type if possible.
convert_dtypes() - convert DataFrame columns to the "best possible" dtype that supports pd.NA (pandas' object to indicate a missing value).
Read on for more detailed explanations and usage of each of these methods.
1. to_numeric()
The best way to convert one or more columns of a DataFrame to numeric values is to use pandas.to_numeric().
This function will try to change non-numeric objects (such as strings) into integers or floating-point numbers as appropriate.
Basic usage
The input to to_numeric() is a Series or a single column of a DataFrame.
>>> s = pd.Series(["8", 6, "7.5", 3, "0.9"]) # mixed string and numeric values
>>> s
0 8
1 6
2 7.5
3 3
4 0.9
dtype: object
>>> pd.to_numeric(s) # convert everything to float values
0 8.0
1 6.0
2 7.5
3 3.0
4 0.9
dtype: float64
As you can see, a new Series is returned. Remember to assign this output to a variable or column name to continue using it:
# convert Series
my_series = pd.to_numeric(my_series)
# convert column "a" of a DataFrame
df["a"] = pd.to_numeric(df["a"])
You can also use it to convert multiple columns of a DataFrame via the apply() method:
# convert all columns of DataFrame
df = df.apply(pd.to_numeric) # convert all columns of DataFrame
# convert just columns "a" and "b"
df[["a", "b"]] = df[["a", "b"]].apply(pd.to_numeric)
As long as your values can all be converted, that's probably all you need.
Error handling
But what if some values can't be converted to a numeric type?
to_numeric() also takes an errors keyword argument that allows you to force non-numeric values to be NaN, or simply ignore columns containing these values.
Here's an example using a Series of strings s which has the object dtype:
>>> s = pd.Series(['1', '2', '4.7', 'pandas', '10'])
>>> s
0 1
1 2
2 4.7
3 pandas
4 10
dtype: object
The default behaviour is to raise if it can't convert a value. In this case, it can't cope with the string 'pandas':
>>> pd.to_numeric(s) # or pd.to_numeric(s, errors='raise')
ValueError: Unable to parse string
Rather than fail, we might want 'pandas' to be considered a missing/bad numeric value. We can coerce invalid values to NaN as follows using the errors keyword argument:
>>> pd.to_numeric(s, errors='coerce')
0 1.0
1 2.0
2 4.7
3 NaN
4 10.0
dtype: float64
The third option for errors is just to ignore the operation if an invalid value is encountered:
>>> pd.to_numeric(s, errors='ignore')
# the original Series is returned untouched
This last option is particularly useful for converting your entire DataFrame, but don't know which of our columns can be converted reliably to a numeric type. In that case, just write:
df.apply(pd.to_numeric, errors='ignore')
The function will be applied to each column of the DataFrame. Columns that can be converted to a numeric type will be converted, while columns that cannot (e.g. they contain non-digit strings or dates) will be left alone.
Downcasting
By default, conversion with to_numeric() will give you either an int64 or float64 dtype (or whatever integer width is native to your platform).
That's usually what you want, but what if you wanted to save some memory and use a more compact dtype, like float32, or int8?
to_numeric() gives you the option to downcast to either 'integer', 'signed', 'unsigned', 'float'. Here's an example for a simple series s of integer type:
>>> s = pd.Series([1, 2, -7])
>>> s
0 1
1 2
2 -7
dtype: int64
Downcasting to 'integer' uses the smallest possible integer that can hold the values:
>>> pd.to_numeric(s, downcast='integer')
0 1
1 2
2 -7
dtype: int8
Downcasting to 'float' similarly picks a smaller than normal floating type:
>>> pd.to_numeric(s, downcast='float')
0 1.0
1 2.0
2 -7.0
dtype: float32
2. astype()
The astype() method enables you to be explicit about the dtype you want your DataFrame or Series to have. It's very versatile in that you can try and go from one type to any other.
Basic usage
Just pick a type: you can use a NumPy dtype (e.g. np.int16), some Python types (e.g. bool), or pandas-specific types (like the categorical dtype).
Call the method on the object you want to convert and astype() will try and convert it for you:
# convert all DataFrame columns to the int64 dtype
df = df.astype(int)
# convert column "a" to int64 dtype and "b" to complex type
df = df.astype({"a": int, "b": complex})
# convert Series to float16 type
s = s.astype(np.float16)
# convert Series to Python strings
s = s.astype(str)
# convert Series to categorical type - see docs for more details
s = s.astype('category')
Notice I said "try" - if astype() does not know how to convert a value in the Series or DataFrame, it will raise an error. For example, if you have a NaN or inf value you'll get an error trying to convert it to an integer.
As of pandas 0.20.0, this error can be suppressed by passing errors='ignore'. Your original object will be returned untouched.
Be careful
astype() is powerful, but it will sometimes convert values "incorrectly". For example:
>>> s = pd.Series([1, 2, -7])
>>> s
0 1
1 2
2 -7
dtype: int64
These are small integers, so how about converting to an unsigned 8-bit type to save memory?
>>> s.astype(np.uint8)
0 1
1 2
2 249
dtype: uint8
The conversion worked, but the -7 was wrapped round to become 249 (i.e. 28 - 7)!
Trying to downcast using pd.to_numeric(s, downcast='unsigned') instead could help prevent this error.
3. infer_objects()
Version 0.21.0 of pandas introduced the method infer_objects() for converting columns of a DataFrame that have an object datatype to a more specific type (soft conversions).
For example, here's a DataFrame with two columns of object type. One holds actual integers and the other holds strings representing integers:
>>> df = pd.DataFrame({'a': [7, 1, 5], 'b': ['3','2','1']}, dtype='object')
>>> df.dtypes
a object
b object
dtype: object
Using infer_objects(), you can change the type of column 'a' to int64:
>>> df = df.infer_objects()
>>> df.dtypes
a int64
b object
dtype: object
Column 'b' has been left alone since its values were strings, not integers. If you wanted to force both columns to an integer type, you could use df.astype(int) instead.
4. convert_dtypes()
Version 1.0 and above includes a method convert_dtypes() to convert Series and DataFrame columns to the best possible dtype that supports the pd.NA missing value.
Here "best possible" means the type most suited to hold the values. For example, this a pandas integer type, if all of the values are integers (or missing values): an object column of Python integer objects are converted to Int64, a column of NumPy int32 values, will become the pandas dtype Int32.
With our object DataFrame df, we get the following result:
>>> df.convert_dtypes().dtypes
a Int64
b string
dtype: object
Since column 'a' held integer values, it was converted to the Int64 type (which is capable of holding missing values, unlike int64).
Column 'b' contained string objects, so was changed to pandas' string dtype.
By default, this method will infer the type from object values in each column. We can change this by passing infer_objects=False:
>>> df.convert_dtypes(infer_objects=False).dtypes
a object
b string
dtype: object
Now column 'a' remained an object column: pandas knows it can be described as an 'integer' column (internally it ran infer_dtype) but didn't infer exactly what dtype of integer it should have so did not convert it. Column 'b' was again converted to 'string' dtype as it was recognised as holding 'string' values.
Use this:
a = [['a', '1.2', '4.2'], ['b', '70', '0.03'], ['x', '5', '0']]
df = pd.DataFrame(a, columns=['one', 'two', 'three'])
df
Out[16]:
one two three
0 a 1.2 4.2
1 b 70 0.03
2 x 5 0
df.dtypes
Out[17]:
one object
two object
three object
df[['two', 'three']] = df[['two', 'three']].astype(float)
df.dtypes
Out[19]:
one object
two float64
three float64
This below code will change the datatype of a column.
df[['col.name1', 'col.name2'...]] = df[['col.name1', 'col.name2'..]].astype('data_type')
In place of the data type, you can give your datatype what you want, like, str, float, int, etc.
When I've only needed to specify specific columns, and I want to be explicit, I've used (per pandas.DataFrame.astype):
dataframe = dataframe.astype({'col_name_1':'int','col_name_2':'float64', etc. ...})
So, using the original question, but providing column names to it...
a = [['a', '1.2', '4.2'], ['b', '70', '0.03'], ['x', '5', '0']]
df = pd.DataFrame(a, columns=['col_name_1', 'col_name_2', 'col_name_3'])
df = df.astype({'col_name_2':'float64', 'col_name_3':'float64'})
pandas >= 1.0
Here's a chart that summarises some of the most important conversions in pandas.
Conversions to string are trivial .astype(str) and are not shown in the figure.
"Hard" versus "Soft" conversions
Note that "conversions" in this context could either refer to converting text data into their actual data type (hard conversion), or inferring more appropriate data types for data in object columns (soft conversion). To illustrate the difference, take a look at
df = pd.DataFrame({'a': ['1', '2', '3'], 'b': [4, 5, 6]}, dtype=object)
df.dtypes
a object
b object
dtype: object
# Actually converts string to numeric - hard conversion
df.apply(pd.to_numeric).dtypes
a int64
b int64
dtype: object
# Infers better data types for object data - soft conversion
df.infer_objects().dtypes
a object # no change
b int64
dtype: object
# Same as infer_objects, but converts to equivalent ExtensionType
df.convert_dtypes().dtypes
Here is a function that takes as its arguments a DataFrame and a list of columns and coerces all data in the columns to numbers.
# df is the DataFrame, and column_list is a list of columns as strings (e.g ["col1","col2","col3"])
# dependencies: pandas
def coerce_df_columns_to_numeric(df, column_list):
df[column_list] = df[column_list].apply(pd.to_numeric, errors='coerce')
So, for your example:
import pandas as pd
def coerce_df_columns_to_numeric(df, column_list):
df[column_list] = df[column_list].apply(pd.to_numeric, errors='coerce')
a = [['a', '1.2', '4.2'], ['b', '70', '0.03'], ['x', '5', '0']]
df = pd.DataFrame(a, columns=['col1','col2','col3'])
coerce_df_columns_to_numeric(df, ['col2','col3'])
df = df.astype({"columnname": str})
#e.g - for changing the column type to string
#df is your dataframe
Create two dataframes, each with different data types for their columns, and then appending them together:
d1 = pd.DataFrame(columns=[ 'float_column' ], dtype=float)
d1 = d1.append(pd.DataFrame(columns=[ 'string_column' ], dtype=str))
Results
In[8}: d1.dtypes
Out[8]:
float_column float64
string_column object
dtype: object
After the dataframe is created, you can populate it with floating point variables in the 1st column, and strings (or any data type you desire) in the 2nd column.
df.info() gives us initial datatype of temp which is float64
# Column Non-Null Count Dtype
--- ------ -------------- -----
0 date 132 non-null object
1 temp 132 non-null float64
Now, use this code to change the datatype to int64:
df['temp'] = df['temp'].astype('int64')
if you do df.info() again, you will see:
# Column Non-Null Count Dtype
--- ------ -------------- -----
0 date 132 non-null object
1 temp 132 non-null int64
This shows you have successfully changed the datatype of column temp. Happy coding!
Starting pandas 1.0.0, we have pandas.DataFrame.convert_dtypes. You can even control what types to convert!
In [40]: df = pd.DataFrame(
...: {
...: "a": pd.Series([1, 2, 3], dtype=np.dtype("int32")),
...: "b": pd.Series(["x", "y", "z"], dtype=np.dtype("O")),
...: "c": pd.Series([True, False, np.nan], dtype=np.dtype("O")),
...: "d": pd.Series(["h", "i", np.nan], dtype=np.dtype("O")),
...: "e": pd.Series([10, np.nan, 20], dtype=np.dtype("float")),
...: "f": pd.Series([np.nan, 100.5, 200], dtype=np.dtype("float")),
...: }
...: )
In [41]: dff = df.copy()
In [42]: df
Out[42]:
a b c d e f
0 1 x True h 10.0 NaN
1 2 y False i NaN 100.5
2 3 z NaN NaN 20.0 200.0
In [43]: df.dtypes
Out[43]:
a int32
b object
c object
d object
e float64
f float64
dtype: object
In [44]: df = df.convert_dtypes()
In [45]: df.dtypes
Out[45]:
a Int32
b string
c boolean
d string
e Int64
f float64
dtype: object
In [46]: dff = dff.convert_dtypes(convert_boolean = False)
In [47]: dff.dtypes
Out[47]:
a Int32
b string
c object
d string
e Int64
f float64
dtype: object
In case you have various objects columns like this Dataframe of 74 Objects columns and 2 Int columns where each value have letters representing units:
import pandas as pd
import numpy as np
dataurl = 'https://raw.githubusercontent.com/RubenGavidia/Pandas_Portfolio.py/main/Wes_Mckinney.py/nutrition.csv'
nutrition = pd.read_csv(dataurl,index_col=[0])
nutrition.head(3)
Output:
name serving_size calories total_fat saturated_fat cholesterol sodium choline folate folic_acid ... fat saturated_fatty_acids monounsaturated_fatty_acids polyunsaturated_fatty_acids fatty_acids_total_trans alcohol ash caffeine theobromine water
0 Cornstarch 100 g 381 0.1g NaN 0 9.00 mg 0.4 mg 0.00 mcg 0.00 mcg ... 0.05 g 0.009 g 0.016 g 0.025 g 0.00 mg 0.0 g 0.09 g 0.00 mg 0.00 mg 8.32 g
1 Nuts, pecans 100 g 691 72g 6.2g 0 0.00 mg 40.5 mg 22.00 mcg 0.00 mcg ... 71.97 g 6.180 g 40.801 g 21.614 g 0.00 mg 0.0 g 1.49 g 0.00 mg 0.00 mg 3.52 g
2 Eggplant, raw 100 g 25 0.2g NaN 0 2.00 mg 6.9 mg 22.00 mcg 0.00 mcg ... 0.18 g 0.034 g 0.016 g 0.076 g 0.00 mg 0.0 g 0.66 g 0.00 mg 0.00 mg 92.30 g
3 rows × 76 columns
nutrition.dtypes
name object
serving_size object
calories int64
total_fat object
saturated_fat object
...
alcohol object
ash object
caffeine object
theobromine object
water object
Length: 76, dtype: object
nutrition.dtypes.value_counts()
object 74
int64 2
dtype: int64
A good way to convert to numeric all columns is using regular expressions to replace the units for nothing and astype(float) for change the columns data type to float:
nutrition.index = pd.RangeIndex(start = 0, stop = 8789, step= 1)
nutrition.set_index('name',inplace = True)
nutrition.replace('[a-zA-Z]','', regex= True, inplace=True)
nutrition=nutrition.astype(float)
nutrition.head(3)
Output:
serving_size calories total_fat saturated_fat cholesterol sodium choline folate folic_acid niacin ... fat saturated_fatty_acids monounsaturated_fatty_acids polyunsaturated_fatty_acids fatty_acids_total_trans alcohol ash caffeine theobromine water
name
Cornstarch 100.0 381.0 0.1 NaN 0.0 9.0 0.4 0.0 0.0 0.000 ... 0.05 0.009 0.016 0.025 0.0 0.0 0.09 0.0 0.0 8.32
Nuts, pecans 100.0 691.0 72.0 6.2 0.0 0.0 40.5 22.0 0.0 1.167 ... 71.97 6.180 40.801 21.614 0.0 0.0 1.49 0.0 0.0 3.52
Eggplant, raw 100.0 25.0 0.2 NaN 0.0 2.0 6.9 22.0 0.0 0.649 ... 0.18 0.034 0.016 0.076 0.0 0.0 0.66 0.0 0.0 92.30
3 rows × 75 columns
nutrition.dtypes
serving_size float64
calories float64
total_fat float64
saturated_fat float64
cholesterol float64
...
alcohol float64
ash float64
caffeine float64
theobromine float64
water float64
Length: 75, dtype: object
nutrition.dtypes.value_counts()
float64 75
dtype: int64
Now the dataset is clean and you are able to do numeric operations with this Dataframe only with regex and astype().
If you want to collect the units and paste on the headers like cholesterol_mg you can use this code:
nutrition.index = pd.RangeIndex(start = 0, stop = 8789, step= 1)
nutrition.set_index('name',inplace = True)
nutrition.astype(str).replace('[^a-zA-Z]','', regex= True)
units = nutrition.astype(str).replace('[^a-zA-Z]','', regex= True)
units = units.mode()
units = units.replace('', np.nan).dropna(axis=1)
mapper = { k: k + "_" + units[k].at[0] for k in units}
nutrition.rename(columns=mapper, inplace=True)
nutrition.replace('[a-zA-Z]','', regex= True, inplace=True)
nutrition=nutrition.astype(float)
Is there a way to specify the types while converting to DataFrame?
Yes. The other answers convert the dtypes after creating the DataFrame, but we can specify the types at creation. Use either DataFrame.from_records or read_csv(dtype=...) depending on the input format.
The latter is sometimes necessary to avoid memory errors with big data.
1. DataFrame.from_records
Create the DataFrame from a structured array of the desired column types:
x = [['foo', '1.2', '70'], ['bar', '4.2', '5']]
df = pd.DataFrame.from_records(np.array(
[tuple(row) for row in x], # pass a list-of-tuples (x can be a list-of-lists or 2D array)
'object, float, int' # define the column types
))
Output:
>>> df.dtypes
# f0 object
# f1 float64
# f2 int64
# dtype: object
2. read_csv(dtype=...)
If you're reading the data from a file, use the dtype parameter of read_csv to set the column types at load time.
For example, here we read 30M rows with rating as 8-bit integers and genre as categorical:
lines = '''
foo,biography,5
bar,crime,4
baz,fantasy,3
qux,history,2
quux,horror,1
'''
columns = ['name', 'genre', 'rating']
csv = io.StringIO(lines * 6_000_000) # 30M lines
df = pd.read_csv(csv, names=columns, dtype={'rating': 'int8', 'genre': 'category'})
In this case, we halve the memory usage upon load:
>>> df.info(memory_usage='deep')
# memory usage: 1.8 GB
>>> pd.read_csv(io.StringIO(lines * 6_000_000)).info(memory_usage='deep')
# memory usage: 3.7 GB
This is one way to avoid memory errors with big data. It's not always possible to change the dtypes after loading since we might not have enough memory to load the default-typed data in the first place.
I thought I had the same problem, but actually I have a slight difference that makes the problem easier to solve. For others looking at this question, it's worth checking the format of your input list. In my case the numbers are initially floats, not strings as in the question:
a = [['a', 1.2, 4.2], ['b', 70, 0.03], ['x', 5, 0]]
But by processing the list too much before creating the dataframe, I lose the types and everything becomes a string.
Creating the data frame via a NumPy array:
df = pd.DataFrame(np.array(a))
df
Out[5]:
0 1 2
0 a 1.2 4.2
1 b 70 0.03
2 x 5 0
df[1].dtype
Out[7]: dtype('O')
gives the same data frame as in the question, where the entries in columns 1 and 2 are considered as strings. However doing
df = pd.DataFrame(a)
df
Out[10]:
0 1 2
0 a 1.2 4.20
1 b 70.0 0.03
2 x 5.0 0.00
df[1].dtype
Out[11]: dtype('float64')
does actually give a data frame with the columns in the correct format.
I had the same issue.
I could not find any solution that was satisfying. My solution was simply to convert those float into str and remove the '.0' this way.
In my case, I just apply it on the first column:
firstCol = list(df.columns)[0]
df[firstCol] = df[firstCol].fillna('').astype(str).apply(lambda x: x.replace('.0', ''))
If you want convert one column from string format I suggest use this code"
import pandas as pd
#My Test Data
data = {'Product': ['A','B', 'C','D'],
'Price': ['210','250', '320','280']}
data
#Create Data Frame from My data df = pd.DataFrame(data)
#Convert to number
df['Price'] = pd.to_numeric(df['Price'])
df
Total = sum(df['Price'])
Total
else if you going to convert a number of column values to number I suggest to you first filter your values and save in empty array and after that convert to number. I hope this code solve your problem.
Convert string representation of long numbers to integers
By default, astype(int) converts to int32, which wouldn't work (OverflowError) if a number is particularly long (such as phone number); try 'int64' (or even float) instead:
df['long_num'] = df['long_num'].astype('int64')
On a side note, if you get SettingWithCopyWarning, then make a copy of your frame and do whatever you were doing again. For example, if you were converting col1 and col2 to float dtype, then do:
df = df.copy()
df[['col1', 'col2']] = df[['col1', 'col2']].astype(float)
# or use assign
df = df.assign(**{k: df[k].astype(float) for k in ['col1', 'col2']})
Convert integers to timedelta
Also, the long string/integer maybe datetime or timedelta, in which case, use to_datetime or to_timedelta to convert to datetime/timedelta dtype:
df = pd.DataFrame({'long_int': ['1018880886000000000', '1590305014000000000', '1101470895000000000', '1586646272000000000', '1460958607000000000']})
df['datetime'] = pd.to_datetime(df['long_int'].astype('int64'))
# or
df['datetime'] = pd.to_datetime(df['long_int'].astype(float))
df['timedelta'] = pd.to_timedelta(df['long_int'].astype('int64'))
Convert timedelta to numbers
To perform the reverse operation (convert datetime/timedelta to numbers), view it as 'int64'. This could be useful if you were building a machine learning model that somehow needs to include time (or datetime) as a numeric value. Just make sure that if the original data are strings, then they must be converted to timedelta or datetime before any conversion to numbers.
df = pd.DataFrame({'Time diff': ['2 days 4:00:00', '3 days', '4 days', '5 days', '6 days']})
df['Time diff in nanoseconds'] = pd.to_timedelta(df['Time diff']).view('int64')
df['Time diff in seconds'] = pd.to_timedelta(df['Time diff']).view('int64') // 10**9
df['Time diff in hours'] = pd.to_timedelta(df['Time diff']).view('int64') // (3600*10**9)
Convert datetime to numbers
For datetime, the numeric view of a datetime is the time difference between that datetime and the UNIX epoch (1970-01-01).
df = pd.DataFrame({'Date': ['2002-04-15', '2020-05-24', '2004-11-26', '2020-04-11', '2016-04-18']})
df['Time_since_unix_epoch'] = pd.to_datetime(df['Date'], format='%Y-%m-%d').view('int64')
astype is faster than to_numeric
df = pd.DataFrame(np.random.default_rng().choice(1000, size=(10000, 50)).astype(str))
df = pd.concat([df, pd.DataFrame(np.random.rand(10000, 50).astype(str), columns=range(50, 100))], axis=1)
%timeit df.astype(dict.fromkeys(df.columns[:50], int) | dict.fromkeys(df.columns[50:], float))
# 488 ms ± 28 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
%timeit df.apply(pd.to_numeric)
# 686 ms ± 45.8 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

How to make Pandas Series with np.arrays into numerical value?

I am using the classical Titanic dataset. I used OneHotEncoder to encode surnames of people.
transformer = make_column_transformer((OneHotEncoder(sparse=False), ['Surname']), remainder = "drop")
encoded_surname = transformer.fit_transform(titanic)
titanic['Encoded_Surname'] = list(encoded_surname.astype(np.float64))
Here is what my data frame looks like:
This is what I get when I look for the .info():
Data columns (total 7 columns):
# Column Non-Null Count Dtype
--- ------ -------------- -----
0 Survived 891 non-null int64
1 Pclass 891 non-null int64
2 Sex 891 non-null int64
3 SibSp 891 non-null int64
4 Parch 891 non-null int64
5 Fare 891 non-null float64
6 Encoded_Surname 891 non-null object
dtypes: float64(1), int64(5), object(1)
Since the Encoded_Surname label is an object and not numeric like the rest, I cannot fit the data into the classifier model.
How do I turn the np.array I got from OneHotEncoder into numeric data?
IIUC, create a new dataframe for encoded_surname data and join it to your original dataset:
transformer = make_column_transformer((OneHotEncoder(sparse=False), ['Surname']), remainder = "drop")
encoded_surname = transformer.fit_transform(titanic)
titanic = titanic.join(pd.DataFrame(encoded_surname, dtype=int).add_prefix('Encoded_Surname'))
I would suggest you use pd.get_dummies instead of OneHotEncoder. If you really want to use the OneHotEncoder:
ohe_df = pd.DataFrame(encoded_surname, columns=transformer.get_feature_names())
#concat with original data
titanic = pd.concat([titanic, ohe_df], axis=1).drop(['Surname'], axis=1)
If you can use pd.get_dummies:
titanic = pd.get_dummies(titanic, prefix=['Surname'], columns=['Surname'], drop_first=True)

Pandas apply function to multiple columns, using value from another dataframe

I have a dataframe with some examples, and another dataframe representing a population. For each numeric column in the examples df, I want to calculate the Cumulative Distribution Function of those values with respect to the population df.
This relies on column-wise mean and std values from the population df - and I can't find a way properly refer to these mean and std values in my apply function.
Here is a simplified example of what I'm trying:
The examples:
df_test = pd.DataFrame([['Azriel', 45, 76], ['Moses', 23, 34]])
df_test.columns = (['Name', 'Age', 'Weight'])
Name Age Weight
0 Azriel 45 76
1 Moses 23 34
The population:
df_comp = pd.DataFrame([['Mary', 28, 66], ['Joseph', 32, 86], ['Paul', 54, 88]])
df_comp.columns = (['Name', 'Age', 'Weight'])
Name Age Weight
0 Mary 28 66
1 Joseph 32 86
2 Paul 54 88
I am trying to produce the calculation in df_dist:
df_dist = df_test.copy()
numeric_cols = df_comp.select_dtypes(include=[np.number]).columns
mu = df_comp[numeric_cols].mean()
sig = df_comp[numeric_cols].std()
df_dist[numeric_cols] = df_dist[numeric_cols].apply(lambda x: scipy.stats.norm.cdf(x, mu, sig))
The output of df_dist is:
Name Age Weight
0 Azriel 0.691462 0.996679
1 Moses 0.000001 0.000078
The expected output of df_dist (calculated manually):
Age Weight
Azriel 0.6914624613 0.371154197
Moses 0.1419883859 0.00007804441375
You can see, the value for Azriel's Age and Moses's Weight is correct, but the rest are wrong.
I think I am making a mistake trying to referring to mu and sig in the apply function, when I only want to refer to one of the values within mu and sig.
I hope that makes sense - can anyone see a solution?
If we look at mu and sig, we see they are series and have values for each numeric column:
>>> mu
Age 38.0
Weight 80.0
dtype: float64
>>> sigma
Age 14.000000
Weight 12.165525
dtype: float64
When you are applying CDF function per column, you are using the whole mu and sigma series instead of using the corresponding values specific to the column (so your suspicion is correct!).
Remedy is to use the column's name in apply and select from the mu and sigma accordingly:
df_dist[numeric_cols].apply(lambda x: scipy.stats.norm.cdf(x, mu[x.name], sig[x.name]))
x.name will be e.g. "Age" when Age column is applied upon, and so on.
This gives:
Name Age Weight
0 Azriel 0.691462 0.371154
1 Moses 0.141988 0.000078

Problem assigning integer value in dataframe with mixed dtypes

I have a dataframe with four columns, with dtypes set up like this (hat tip to ryanjdillon!)
dtypes = np.dtype([
('size', int),
('sum', float),
('mean', float),
('std', float),
])
data = np.empty(0, dtype=dtypes)
df = pd.DataFrame(data)
At this stage, df.dtypes looks like this:
size int64
sum float64
mean float64
std float64
dtype: object
Great so far. But the first time I assign an int value to the 'size' column, e.g.
df.loc['foo', 'size'] = 1
it flips the dtype of the column to float64, and the value is cast, to 1.0 in this case.
size float64
sum float64
mean float64
std float64
dtype: object
Wazzup here?

Pandas: Update() dataframe issue

I am using pandas 0.18 on Suse Enterprise Linux 11 w/ python 2.7.9. I have two tables, A and B.
A contains the following column and types:
>>> print a.dtypes
cid object
bid int64
li object
lit int64
x1 float64
y1 float64
x2 float64
y2 float64
hit_num object
B contains the following column and types:
>>> print b.dtypes
cid object
li object
x1 float64
y1 float64
x2 float64
y2 float64
hit_num object
Now here is a sample dataset for A:
cid,bid,li,lit,x1,y1,x2,y2,hit_num
id1,0,m0,1,6775.5711,6102.5771,6775.6051,6102.7731,
id1,0,m0,2,6775.5311,6103.0631,6775.5531,6103.2051,
id1,0,m0,3,6775.6231,6103.0631,6775.6451,6103.2051,
id1,0,m0,4,6775.1631,6103.6571,6775.1971,6103.7451,
Now here is a sample dataset for B:
cid,li,x1,y1,x2,y2,hit_num
id1,m0,6775.1631,6103.6571,6775.1971,6103.7451,hello
id1,m0,6775.6231,6103.0631,6775.6451,6103.2051,world
id1,m0,6775.5311,6103.0631,6775.5531,6103.2051,gotta
id1,m0,6775.5711,6102.5771,6775.6051,6102.7731,go
I do A.update(B). So I'm expecting B[hit_num] to update A[hit_num] by aligning on columns cid,lid,x1,y1,x2,y2.
So I expect something like this (unless my understanding of update() is wrong?):
cid,bid,li,lit,x1,y1,x2,y2,hit_num
id1,0,m0,1,6775.5711,6102.5771,6775.6051,6102.7731,0.018,0.02,0.0269,go
id1,0,m0,2,6775.5311,6103.0631,6775.5531,6103.2051,0.018,0.02,0.0269,gotta
id1,0,m0,3,6775.6231,6103.0631,6775.6451,6103.2051,0.018,0.02,0.0269,world
id1,0,m0,4,6775.1631,6103.6571,6775.1971,6103.7451,0.018,0.02,0.0269,hello
However, what I end up getting the below. The 'lit' columns (highlighted in bold) seems to be messed up, and there is a duplicated entry of '1'. This is not present in A. I am wondering why this is happening. I created a small example and tried to reproduce the issue, but was unsuccessful. I get expected results there.
However, in a larger table that I'm running my regression on, I'm seeing this behavior. I've printed table A, table B and A.update(B), and I see the below. I'm not calling any other dataframe operations in between. I.e., pseudocode:
print v['les_tables']['foo']
print overlay_tables['foo']
v['les_tables']['foo'].update(overlay_tables['foo'])
print v['les_tables']['foo']
I am not totally sure how update works, but I would think it is using some type of equality operator to match columns? If so, would x1,y1,x2,y2 being float64 be causing any issue? Any ideas what I'm doing wrong?
I've confirmed the columns to align on are the same name/type in both A/B (see A.dtypes/B.dtypes above).
cid,bid,li,lit,x1,y1,x2,y2,hit_num
id1,0,m0,1,6775.5711,6102.5771,6775.6051,6102.7731,0.018,0.02,0.0269,go
id1,0,m0,3,6775.5311,6103.0631,6775.5531,6103.2051,0.018,0.02,0.0269,gotta
id1,0,m0,2,6775.6231,6103.0631,6775.6451,6103.2051,0.018,0.02,0.0269,world
id1,0,m0,1,6775.1631,6103.6571,6775.1971,6103.7451,0.018,0.02,0.0269,hello
try this:
In [73]: df = (A.set_index(['cid','li','x1','y1','x2','y2'])
....: .drop(['hit_num'], axis=1)
....: .join(B.set_index(['cid','li','x1','y1','x2','y2']))
....: .reset_index()
....: )
In [74]: df
Out[74]:
cid li x1 y1 x2 y2 bid lit hit_num
0 id1 m0 6775.5711 6102.5771 6775.6051 6102.7731 0 1 go
1 id1 m0 6775.5311 6103.0631 6775.5531 6103.2051 0 2 gotta
2 id1 m0 6775.6231 6103.0631 6775.6451 6103.2051 0 3 world
3 id1 m0 6775.1631 6103.6571 6775.1971 6103.7451 0 4 hello