'Only when it is dark enough can you see the stars': Kamala Harris provides message of hope in rousing concession speech
- Bias Rating
-18% Somewhat Liberal
- Reliability
50% ReliableFair
- Policy Leaning
-12% Somewhat Liberal
- Politician Portrayal
-10% Negative
Continue For Free
Create your free account to see the in-depth bias analytics and more.
Continue
Continue
By creating an account, you agree to our Terms and Privacy Policy, and subscribe to email updates. Already a member: Log inBias 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
46% Positive
- Liberal
- Conservative
Sentence | Sentiment | Bias |
---|---|---|
Unlock this feature by upgrading to the Pro plan. |
Reliability Score Analysis
Policy Leaning Analysis
Politician Portrayal Analysis
Bias Meter
Extremely
Liberal
Very
Liberal
Moderately
Liberal
Somewhat Liberal
Center
Somewhat Conservative
Moderately
Conservative
Very
Conservative
Extremely
Conservative
-100%
Liberal
100%
Conservative
Contributing sentiments towards policy:
66% : She went on to reveal that she had called the president-elect earlier in the day to congratulate him on his victory, pledging to Trump that she and Joe Biden would "engage in a peaceful transfer of power."61% : Not soured by the defeat, Harris' speech was one of motivation and optimism, as she urged those devastated by the election result to "not despair" and to remain engaged and vigilant as Trump enters his second term in the White House.
45% : The former Democratic presidential candidate, who will go down in history for the brevity and grace of her campaign, delivered a concession speech at Howard University, just one day after learning she had lost the election to Trump.
*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.