
Letters to the Editor: Blame misogyny and racism? Or are voters just not into Democrats?
- Bias Rating
- Reliability
40% ReliableAverage
- Policy Leaning
28% Somewhat Right
- Politician Portrayal
-44% Negative
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Bias Score Analysis
The A.I. bias rating includes policy and politician portrayal leanings based on the author’s tone found in the article using machine learning. Bias scores are on a scale of -100% to 100% with higher negative scores being more liberal and higher positive scores being more conservative, and 0% being neutral.
Sentiments
7% Positive
- Liberal
- Conservative
Sentence | Sentiment | Bias |
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Reliability Score Analysis
Policy Leaning Analysis
Politician Portrayal Analysis
Bias Meter
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-100%
Liberal
100%
Conservative

Contributing sentiments towards policy:
79% : Skelton said Trump "won with ease."54% : To the editor: Let the endless articles about impending Armageddon begin. To begin, I'd like to remind everyone that we already had Trump as president, and we fared just fine.
40% : " The Democrats did not come out supporting a living wage or promising to quickly reduce carbon emissions.
36% : According to some statistical modelers, Trump is likely to end up with less than 50% of the popular vote.
35% : Her beating Trump by almost 2.9 million in the popular vote proved she was widely supported.
28% : Instead, the campaign was centered on the idea that Trump will destroy our democracy, so people must vote against him.
21% : So all this talk about people leaving the U.S. and the end of democracy (Trump won both the popular vote and the electoral college) is complete partisan nonsense.
*Our bias meter rating uses data science including sentiment analysis, machine learning and our proprietary algorithm for determining biases in news articles. Bias scores are on a scale of -100% to 100% with higher negative scores being more liberal and higher positive scores being more conservative, and 0% being neutral. The rating is an independent analysis and is not affiliated nor sponsored by the news source or any other organization.