Podrías simplemente usar el tipo [`Categorical`][1] para tus columnas. PAra segmentar por los intervalos deseados puedes usar [`pandas.cut`][2]:


    import io
    import numpy as np
    import pandas as pd
    
    
    data = io.StringIO("""     
       A       B       C       D       E
    3.75    3.50    4.00    4.75    3.00
    3.45    5.25    3.75    5.50    2.00
    3.25    4.00    3.75    4.00    5.50
    2.75    4.00    4.00    4.00    2.75
    """)
    
    
    df = pd.read_csv(data, sep="\s+")


>     >>> df
>           A     B     C     D     E
>     0  3.75  3.50  4.00  4.75  3.00
>     1  3.45  5.25  3.75  5.50  2.00
>     2  3.25  4.00  3.75  4.00  5.50
>     3  2.75  4.00  4.00  4.00  2.75

        
    df = pd.cut(df.stack(),
                (-np.inf, 2.99, 5, np.inf),
                labels=('neg', 'neut', 'pos')
                ).unstack()
> 
>     >>> df
>     
>           A     B     C     D     E
>     0  neut  neut  neut  neut  neut
>     1  neut   pos  neut   pos   neg
>     2  neut  neut  neut  neut   pos
>     3   neg  neut  neut  neut   neg

---
Edición
---

Si solo se quiere pasar a categóricas ciertas columnas del DataFrame basta con usar `loc` para seleccionar las deseadas y reasignarles el nuevo valor:

    import pandas as pd
    import io
    import numpy as np
    
    
    
    data = io.StringIO("""     
       A       B       C       D       E
    3.75    3.50    4.00    4.75    3.00 
    3.45    5.25    3.75    5.50    2.00    
    3.25    4.00    3.75    4.00    5.50
    2.75    4.00    4.00    4.00    2.75
    """)
    
    import pandas as pd
    
    
    df = pd.read_csv(data, sep="\s+")
        
    df.loc[:, ['A', 'C', 'D']] = pd.cut(df.loc[:, ['A', 'C', 'D']].stack(),
                                        (-np.inf, 2.99, 5, np.inf),
                                        labels=('neg', 'neut', 'pos')
                                        ).unstack()

>     >>> df
>      
>           A     B     C     D     E
>     0  neut  3.50  neut  neut  3.00
>     1  neut  5.25  neut   pos  2.00
>     2  neut  4.00  neut  neut  5.50
>     3   neg  4.00  neut  neut  2.75



  [1]: https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.CategoricalDtype.html#pandas.CategoricalDtype
  [2]: https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.cut.html