Dharitrikumari Rathod
Comparison of 2020 Presidential debates and 2016 presidential debates
| Research questions: | Method |
|---|---|
| 1. What were the most prominent words said by each candidate during the different stages of debate during the 2020 and 2016 presidential debates? | Word cloud Bigram |
| 2. Which candidate was most talkative during the debate? | Statistics |
| 3. How many times did they get interrupted by others? | Heatmap |
| 4. What were the positive and negative sentiments of the 2020 debate? | Sentiment analysis |
| 5. Which topics were discussed during the 2020 Presidential debates? | TF-IDF, Cosine similarity |
| 6. How does the similarity of the candidate’s speech compare to the other candidate on the same topic? | TF-IDF, LDA model |
| 7. How does the similarity between President Trump's speech during 2020 and 2016? | TF-IDF, LDA model |
Biden 2020
Trump 2020
Most Prominant topics: 2020
Bigram: Joe Biden
| Topics |
|---|
| Green infrastructure |
| Social security |
| Mail in ballot |
| Health insurance/ Affordable care act |
| First responders |
| Tax plans |
| Extracted Topics |
|---|
| New york |
| Individual mandate |
| Law enforcement |
| Stock market |
| Justice reform |
| Economy |
| Small businesses |
| Oil industry |
| Forest Management |
| Obamacare/Health Insuran |
Debate_1
Debate_2
Crosstalk/Heat moment
Sentiment Analysis:
1st_debate
Overall 2020
2nd_debate
TF-IDF 1st debate
Biden
Trump
TF-IDF 2nd debate
TF-IDF Topics
Built the TF-IDF Model to check if the given topic was discussed in the 2020 election or not. Also, compared the topic using cosine similarity at each stage of the Presidential election 2020.
Extracted Topics TFIDF
Bag of words
TF-IDF
| BoW | TF-IDF |
|---|---|
| Second, insurance, healthcare, obamacare | Industry, child, website, reform, school, business |
| Industry, business, website, plague, enormous, nuclear, opportunity, | Talk, totally, month, well, police, discredit |
| Family, Clean, filthy, emission, police, scientist, pollutant, environmental, carbon | Family, immigration, political, protest, tremendous, democratic |
| Ballot, election, inaugural, racist, chance | People, million, evidence, healthcare, opposite, condition, fantastic, nuclear |
| Create, building, question, economic, energy, company | Election, chance, separate |
| Excuse, energy, subsidy, dangerous, federal, border, highway, ecnomically | Ballot, number, answer |
| Statement, plant, pollute, chemical, refinery, superpredator | Crosstalk, economy, segment, disaster, vaccine |
| Crosstalk, Hispanic, environment, global warming, gasoline, unemployment | Second, dollar, radical, deserve |
| Dollar, fracke, billion, emission, climate, market | Support, energy, federal, |
HEART DISEASE PREDICTION
Goal: For the Heart Disease Dataset, we want to classify the presence of heart disease using the best combinations of the dataset files (Cleveland, Hungarian, Switzerland, VA) based on the most relevant patient attributes.
Procedure:
Clustering on Warehouse data
EV project:
EV Owners incentivized to install a solar system:
Solar home ~236.4 V
Non Solar home ~242.7 V
Rebates, Tax credits
Midnight - 7 am
Thank you !