menikev commited on
Commit
928cd59
1 Parent(s): ec3138d

Update app.py

Browse files
Files changed (1) hide show
  1. app.py +26 -13
app.py CHANGED
@@ -36,7 +36,7 @@ df = load_and_clean_data()
36
 
37
 
38
  # Page navigation setup
39
- page_names = ["Overview", "Sentiment Analysis", "Discrimination Analysis", "Channel Analysis"]
40
  page = st.sidebar.selectbox("Choose a page", page_names)
41
 
42
  # Sidebar Filters
@@ -63,7 +63,7 @@ color_palette = px.colors.sequential.Viridis
63
  # Visualisation for Domain Distribution
64
  def create_pie_chart(df, column, title):
65
  fig = px.pie(df, names=column, title=title, hole=0.35)
66
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), legend=dict(x=0.1, y=1), font=dict(size=10))
67
  fig.update_traces(marker=dict(colors=color_palette))
68
  return fig
69
 
@@ -71,7 +71,7 @@ def create_pie_chart(df, column, title):
71
  def create_gender_ethnicity_distribution_chart(df):
72
  df['GenderOrEthnicity'] = df['Domain'].apply(lambda x: "Gender: Women & LGBTQIA+" if x in ["Women", "LGBTQIA+"] else "Ethnicity")
73
  fig = px.pie(df, names='GenderOrEthnicity', title='Distribution of Gender versus Ethnicity', hole=0.35)
74
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), legend=dict(x=0.1, y=1), font=dict(size=10))
75
  return fig
76
 
77
  # Visualization for Sentiment Distribution Across Domains
@@ -79,7 +79,7 @@ def create_sentiment_distribution_chart(df):
79
  df['Discrimination'] = df['Discrimination'].replace({"Non Discriminative": "Non-Discriminative"}) # Assuming typo in the original script
80
  domain_counts = df.groupby(['Domain', 'Sentiment']).size().reset_index(name='counts')
81
  fig = px.bar(domain_counts, x='Domain', y='counts', color='Sentiment', title="Sentiment Distribution Across Domains", barmode='stack')
82
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), xaxis_title="Domain", yaxis_title="Counts", font=dict(size=10))
83
  return fig
84
 
85
  # Visualization for Correlation between Sentiment and Discrimination
@@ -96,7 +96,7 @@ def create_sentiment_discrimination_grouped_chart(df):
96
  # Proceeding to plot only if we have data to plot
97
  if not melted_df.empty:
98
  fig = px.bar(melted_df, x='Sentiment', y='Count', color='Discrimination', barmode='group', title="Sentiment vs. Discrimination")
99
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), xaxis_title="Sentiment", yaxis_title="Count", font=dict(size=10))
100
  return fig
101
  else:
102
  return "No data to display for the selected filters."
@@ -111,7 +111,7 @@ def create_top_negative_sentiment_domains_chart(df):
111
  colors = ['limegreen', 'crimson', 'darkcyan']
112
  fig = px.bar(domain_counts_subset, x='Count', y='Domain', title='Top Domains with Negative Sentiment', color='Domain',
113
  orientation='h', color_discrete_sequence=colors)
114
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), xaxis_title="Negative sentiment content Count", yaxis_title="Domain")
115
  return fig
116
 
117
  # Function for Key Phrases in Negative Sentiment Content Chart
@@ -122,15 +122,26 @@ def create_key_phrases_negative_sentiment_chart(df):
122
  ngram_freq = pd.DataFrame(sorted([(count_values[i], k) for k, i in cv.vocabulary_.items()], reverse=True))
123
  ngram_freq.columns = ['frequency', 'ngram']
124
  fig = px.bar(ngram_freq.head(10), x='frequency', y='ngram', orientation='h', title='Key phrases in Negative Sentiment Content')
125
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), xaxis_title="Frequency", yaxis_title="Trigram")
126
  return fig
127
 
 
 
 
 
 
 
 
 
 
 
 
128
  # Function for Prevalence of Discriminatory Content Chart
129
  def create_prevalence_discriminatory_content_chart(df):
130
  domain_counts = df.groupby(['Domain', 'Discrimination']).size().unstack(fill_value=0)
131
  fig = px.bar(domain_counts, x=domain_counts.index, y=['Discriminative', 'Non-Discriminative'], barmode='group',
132
  title='Prevalence of Discriminatory Content')
133
- fig.update_layout(margin=dict(l=20, r=20, t=40, b=20), xaxis_title="Domain", yaxis_title="Count")
134
  return fig
135
 
136
  # Function for Top Domains with Discriminatory Content Chart
@@ -141,27 +152,27 @@ def create_top_discriminatory_domains_chart(df):
141
  domain_counts_subset = domain_counts_subset.rename(columns={'Discriminative': 'Count'})
142
  fig = px.bar(domain_counts_subset, x='Count', y=domain_counts_subset.index, orientation='h',
143
  title='Top Domains with Discriminatory Content')
144
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), xaxis_title="Discriminatory Content Count", yaxis_title="Domain")
145
  return fig
146
 
147
  # Function for Channel-wise Sentiment Over Time Chart
148
  def create_sentiment_distribution_by_channel_chart(df):
149
  sentiment_by_channel = df.groupby(['Channel', 'Sentiment']).size().reset_index(name='counts')
150
  fig = px.bar(sentiment_by_channel, x='Channel', y='counts', color='Sentiment', title="Sentiment Distribution by Channel", barmode='group')
151
- fig.update_layout(margin=dict(l=10, r=10, t=20, b=10), xaxis_title="Channel", yaxis_title="Counts", font=dict(size=10))
152
  return fig
153
 
154
  # Function for Channel-wise Distribution of Discriminative Content Chart
155
  def create_channel_discrimination_chart(df):
156
  channel_discrimination = df.groupby(['Channel', 'Discrimination']).size().unstack(fill_value=0)
157
  fig = px.bar(channel_discrimination, x=channel_discrimination.index, y=['Discriminative', 'Non-Discriminative'], barmode='group')
158
- fig.update_layout(title='Channel-wise Distribution of Discriminative Content', margin=dict(l=10, r=10, t=20, b=10))
159
  return fig
160
 
161
  # Function for rendering dashboard
162
  def render_dashboard(page, df_filtered):
163
- if page == "Overview":
164
- st.title("Overview Dashboard")
165
  col1, col2 = st.columns(2)
166
  with col1:
167
  st.plotly_chart(create_pie_chart(df_filtered, 'Domain', 'Distribution of Domains'))
@@ -189,6 +200,8 @@ def render_dashboard(page, df_filtered):
189
  col3, col4 = st.columns(2)
190
  with col3:
191
  st.plotly_chart(create_key_phrases_negative_sentiment_chart(df_filtered))
 
 
192
 
193
  elif page == "Discrimination Analysis":
194
  st.title("Discrimination Analysis Dashboard")
 
36
 
37
 
38
  # Page navigation setup
39
+ page_names = [" GESI Overview", "Sentiment Analysis", "Discrimination Analysis", "Channel Analysis"]
40
  page = st.sidebar.selectbox("Choose a page", page_names)
41
 
42
  # Sidebar Filters
 
63
  # Visualisation for Domain Distribution
64
  def create_pie_chart(df, column, title):
65
  fig = px.pie(df, names=column, title=title, hole=0.35)
66
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), legend=dict(x=0.1, y=1), font=dict(size=7)
67
  fig.update_traces(marker=dict(colors=color_palette))
68
  return fig
69
 
 
71
  def create_gender_ethnicity_distribution_chart(df):
72
  df['GenderOrEthnicity'] = df['Domain'].apply(lambda x: "Gender: Women & LGBTQIA+" if x in ["Women", "LGBTQIA+"] else "Ethnicity")
73
  fig = px.pie(df, names='GenderOrEthnicity', title='Distribution of Gender versus Ethnicity', hole=0.35)
74
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), legend=dict(x=0.1, y=1), font=dict(size=7)
75
  return fig
76
 
77
  # Visualization for Sentiment Distribution Across Domains
 
79
  df['Discrimination'] = df['Discrimination'].replace({"Non Discriminative": "Non-Discriminative"}) # Assuming typo in the original script
80
  domain_counts = df.groupby(['Domain', 'Sentiment']).size().reset_index(name='counts')
81
  fig = px.bar(domain_counts, x='Domain', y='counts', color='Sentiment', title="Sentiment Distribution Across Domains", barmode='stack')
82
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), xaxis_title="Domain", yaxis_title="Counts", font=dict(size=7))
83
  return fig
84
 
85
  # Visualization for Correlation between Sentiment and Discrimination
 
96
  # Proceeding to plot only if we have data to plot
97
  if not melted_df.empty:
98
  fig = px.bar(melted_df, x='Sentiment', y='Count', color='Discrimination', barmode='group', title="Sentiment vs. Discrimination")
99
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), xaxis_title="Sentiment", yaxis_title="Count", font=dict(size=7))
100
  return fig
101
  else:
102
  return "No data to display for the selected filters."
 
111
  colors = ['limegreen', 'crimson', 'darkcyan']
112
  fig = px.bar(domain_counts_subset, x='Count', y='Domain', title='Top Domains with Negative Sentiment', color='Domain',
113
  orientation='h', color_discrete_sequence=colors)
114
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), xaxis_title="Negative sentiment content Count", yaxis_title="Domain", font=dict(size=7))
115
  return fig
116
 
117
  # Function for Key Phrases in Negative Sentiment Content Chart
 
122
  ngram_freq = pd.DataFrame(sorted([(count_values[i], k) for k, i in cv.vocabulary_.items()], reverse=True))
123
  ngram_freq.columns = ['frequency', 'ngram']
124
  fig = px.bar(ngram_freq.head(10), x='frequency', y='ngram', orientation='h', title='Key phrases in Negative Sentiment Content')
125
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), xaxis_title="Frequency", yaxis_title="Trigram", font=dict(size=7))
126
  return fig
127
 
128
+ # Function for Key Phrases in Positive Sentiment Content Chart
129
+ def create_key_phrases_positive_sentiment_chart(df):
130
+ cv = CountVectorizer(ngram_range=(3, 3), stop_words='english')
131
+ trigrams = cv.fit_transform(df['Content'][df['Sentiment'] == 'Positive'])
132
+ count_values = trigrams.toarray().sum(axis=0)
133
+ ngram_freq = pd.DataFrame(sorted([(count_values[i], k) for k, i in cv.vocabulary_.items()], reverse=True))
134
+ ngram_freq.columns = ['frequency', 'ngram']
135
+ fig = px.bar(ngram_freq.head(10), x='frequency', y='ngram', orientation='h', title='Key phrases in Positive Sentiment Content')
136
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), xaxis_title="Frequency", yaxis_title="Trigram", font=dict(size=7))
137
+ return fig
138
+
139
  # Function for Prevalence of Discriminatory Content Chart
140
  def create_prevalence_discriminatory_content_chart(df):
141
  domain_counts = df.groupby(['Domain', 'Discrimination']).size().unstack(fill_value=0)
142
  fig = px.bar(domain_counts, x=domain_counts.index, y=['Discriminative', 'Non-Discriminative'], barmode='group',
143
  title='Prevalence of Discriminatory Content')
144
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), xaxis_title="Domain", yaxis_title="Count", font=dict(size=7))
145
  return fig
146
 
147
  # Function for Top Domains with Discriminatory Content Chart
 
152
  domain_counts_subset = domain_counts_subset.rename(columns={'Discriminative': 'Count'})
153
  fig = px.bar(domain_counts_subset, x='Count', y=domain_counts_subset.index, orientation='h',
154
  title='Top Domains with Discriminatory Content')
155
+ fig.update_layout(margin=dict((l=6, r=6, t=12, b=6), xaxis_title="Discriminatory Content Count", yaxis_title="Domain", font=dict(size=7))
156
  return fig
157
 
158
  # Function for Channel-wise Sentiment Over Time Chart
159
  def create_sentiment_distribution_by_channel_chart(df):
160
  sentiment_by_channel = df.groupby(['Channel', 'Sentiment']).size().reset_index(name='counts')
161
  fig = px.bar(sentiment_by_channel, x='Channel', y='counts', color='Sentiment', title="Sentiment Distribution by Channel", barmode='group')
162
+ fig.update_layout(margin=dict(l=6, r=6, t=12, b=6), xaxis_title="Channel", yaxis_title="Counts", font=dict(size=7))
163
  return fig
164
 
165
  # Function for Channel-wise Distribution of Discriminative Content Chart
166
  def create_channel_discrimination_chart(df):
167
  channel_discrimination = df.groupby(['Channel', 'Discrimination']).size().unstack(fill_value=0)
168
  fig = px.bar(channel_discrimination, x=channel_discrimination.index, y=['Discriminative', 'Non-Discriminative'], barmode='group')
169
+ fig.update_layout(title='Channel-wise Distribution of Discriminative Content', margin=dict(l=6, r=6, t=12, b=6), font=dict(size=7))
170
  return fig
171
 
172
  # Function for rendering dashboard
173
  def render_dashboard(page, df_filtered):
174
+ if page == " GESI Overview":
175
+ st.title(" GESI Overview Dashboard")
176
  col1, col2 = st.columns(2)
177
  with col1:
178
  st.plotly_chart(create_pie_chart(df_filtered, 'Domain', 'Distribution of Domains'))
 
200
  col3, col4 = st.columns(2)
201
  with col3:
202
  st.plotly_chart(create_key_phrases_negative_sentiment_chart(df_filtered))
203
+ with col4:
204
+ st.plotly_chart(create_key_phrases_positive_sentiment_chart(df_filtered)
205
 
206
  elif page == "Discrimination Analysis":
207
  st.title("Discrimination Analysis Dashboard")