Build a semantic word analysis of the ENRON dataset with PYTHON
Build a semantic word analysis of the ENRON dataset with PYTHON
Data basis to be used for the analysis: https://www.kaggle.com/wcukierski/enron-email-dataset
Step 1: build a python notebook on the basis of the work done by https://www.kaggle.com/zichen/explore-enron and try to reproduce their results
Step 2: The most important step: Generate a python code for listing which user uses which emoticons how often
Step 3: Please deliver the python code with comments
List of positive and negative emoticons.
Emoticon Meaning Sentiment Class
😀 Laughing Positive
🙂 smile Positive
o:)- innocent Positive
😎 cool Positive
:$ Happy blush Positive
🙁 defeated Negative
🙁 Crying Negative
😮 shocked Negative
>( Grumpy Negative
(@) Angry red Negative
X| Dead Negative
Attached: Relevant Papers for this work to be cited whenever possible (1. Buildingemotionaldictionaryforsentimentanalysisofonlinenews, 2. pone.0171649), and additional papers if fragments of their methods are used.
You can place an order similar to this with us. You are assured of an authentic custom paper delivered within the given deadline besides our 24/7 customer support all through.
Latest completed orders:
# | topic title | discipline | academic level | pages | delivered |
---|---|---|---|---|---|
6
|
Writer's choice
|
Business
|
University
|
2
|
1 hour 32 min
|
7
|
Wise Approach to
|
Philosophy
|
College
|
2
|
2 hours 19 min
|
8
|
1980's and 1990
|
History
|
College
|
3
|
2 hours 20 min
|
9
|
pick the best topic
|
Finance
|
School
|
2
|
2 hours 27 min
|
10
|
finance for leisure
|
Finance
|
University
|
12
|
2 hours 36 min
|