lzw1008 commited on
Commit
9fed8fe
1 Parent(s): 79396c0

Update README.md

Browse files
Files changed (1) hide show
  1. README.md +2 -2
README.md CHANGED
@@ -74,7 +74,7 @@ use the GPU if it's available.
74
 
75
  Human:
76
  Task: Categorize the text into an ordinal class that best characterizes the writer's mental state, considering various degrees of positive and negative sentiment intensity. 3: very positive mental state can be inferred. 2: moderately positive mental state can be inferred. 1: slightly positive mental state can be inferred. 0: neutral or mixed mental state can be inferred. -1: slightly negative mental state can be inferred. -2: moderately negative mental state can be inferred. -3: very negative mental state can be inferred
77
- Tweet: Beyoncé resentment gets me in my feelings every time. 😩
78
  Intensity Class:
79
 
80
  Assistant:
@@ -85,7 +85,7 @@ use the GPU if it's available.
85
  Human:
86
  Task: Categorize the text's emotional tone as either 'neutral or no emotion' or identify the presence of one or more of the given emotions (anger, anticipation, disgust, fear, joy, love, optimism, pessimism, sadness, surprise, trust).
87
  Text: Whatever you decide to do make sure it makes you #happy.
88
- This tweet contains emotions:
89
 
90
  Assistant:
91
  >>joy, love, optimism
 
74
 
75
  Human:
76
  Task: Categorize the text into an ordinal class that best characterizes the writer's mental state, considering various degrees of positive and negative sentiment intensity. 3: very positive mental state can be inferred. 2: moderately positive mental state can be inferred. 1: slightly positive mental state can be inferred. 0: neutral or mixed mental state can be inferred. -1: slightly negative mental state can be inferred. -2: moderately negative mental state can be inferred. -3: very negative mental state can be inferred
77
+ Text: Beyoncé resentment gets me in my feelings every time. 😩
78
  Intensity Class:
79
 
80
  Assistant:
 
85
  Human:
86
  Task: Categorize the text's emotional tone as either 'neutral or no emotion' or identify the presence of one or more of the given emotions (anger, anticipation, disgust, fear, joy, love, optimism, pessimism, sadness, surprise, trust).
87
  Text: Whatever you decide to do make sure it makes you #happy.
88
+ This text contains emotions:
89
 
90
  Assistant:
91
  >>joy, love, optimism