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@@ -1268,9 +1268,9 @@ def predict_data_simple(df_input, group_route_str, output_dir, predict_dir=".",
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# df_match_chk = df_match_chk.loc[dur_vals.notna()].copy()
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# df_match_chk = df_match_chk.loc[dur_vals.notna()].copy()
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# df_match_chk = df_match_chk.loc[(dur_vals.loc[dur_vals.notna()] - float(dur_base)).abs() <= 36].copy()
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# df_match_chk = df_match_chk.loc[(dur_vals.loc[dur_vals.notna()] - float(dur_base)).abs() <= 36].copy()
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- # drop_hud_vals = pd.to_numeric(df_match_chk['drop_hours_until_departure'], errors='coerce')
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- # df_match_chk = df_match_chk.loc[drop_hud_vals.notna()].copy()
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- # df_match_chk = df_match_chk.loc[(drop_hud_vals.loc[drop_hud_vals.notna()] - float(hud_base)).abs() <= 24].copy()
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+ drop_hud_vals = pd.to_numeric(df_match_chk['drop_hours_until_departure'], errors='coerce')
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+ df_match_chk = df_match_chk.loc[drop_hud_vals.notna()].copy()
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+ df_match_chk = df_match_chk.loc[(float(hud_base) - drop_hud_vals.loc[drop_hud_vals.notna()]) >= -24].copy()
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# seats_vals = pd.to_numeric(df_match_chk['high_price_seats_remaining_change_amount'], errors='coerce')
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# seats_vals = pd.to_numeric(df_match_chk['high_price_seats_remaining_change_amount'], errors='coerce')
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# df_match_chk = df_match_chk.loc[seats_vals.notna()].copy()
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# df_match_chk = df_match_chk.loc[seats_vals.notna()].copy()
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@@ -1371,9 +1371,9 @@ def predict_data_simple(df_input, group_route_str, output_dir, predict_dir=".",
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# df_match_chk_1 = df_match_chk_1.loc[dur_vals_1.notna()].copy()
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# df_match_chk_1 = df_match_chk_1.loc[dur_vals_1.notna()].copy()
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# df_match_chk_1 = df_match_chk_1.loc[(dur_vals_1.loc[dur_vals_1.notna()] - float(dur_base_1)).abs() <= 24].copy()
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# df_match_chk_1 = df_match_chk_1.loc[(dur_vals_1.loc[dur_vals_1.notna()] - float(dur_base_1)).abs() <= 24].copy()
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- # rise_hud_vals_1 = pd.to_numeric(df_match_chk_1['rise_hours_until_departure'], errors='coerce')
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- # df_match_chk_1 = df_match_chk_1.loc[rise_hud_vals_1.notna()].copy()
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- # df_match_chk_1 = df_match_chk_1.loc[(rise_hud_vals_1.loc[rise_hud_vals_1.notna()] - float(hud_base_1)).abs() <= 24].copy()
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+ rise_hud_vals_1 = pd.to_numeric(df_match_chk_1['rise_hours_until_departure'], errors='coerce')
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+ df_match_chk_1 = df_match_chk_1.loc[rise_hud_vals_1.notna()].copy()
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+ df_match_chk_1 = df_match_chk_1.loc[(float(hud_base_1) - rise_hud_vals_1.loc[rise_hud_vals_1.notna()]) >= -24].copy()
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# seats_vals_1 = pd.to_numeric(df_match_chk_1['rise_seats_remaining_change_amount'], errors='coerce')
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# seats_vals_1 = pd.to_numeric(df_match_chk_1['rise_seats_remaining_change_amount'], errors='coerce')
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# df_match_chk_1 = df_match_chk_1.loc[seats_vals_1.notna()].copy()
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# df_match_chk_1 = df_match_chk_1.loc[seats_vals_1.notna()].copy()
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@@ -1404,7 +1404,7 @@ def predict_data_simple(df_input, group_route_str, output_dir, predict_dir=".",
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else:
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else:
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drop_prob = round(length_drop / (length_rise + length_drop), 2)
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drop_prob = round(length_drop / (length_rise + length_drop), 2)
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# 依旧保持之前的降价判定,概率修改
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# 依旧保持之前的降价判定,概率修改
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- if drop_prob > 0.6:
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+ if drop_prob >= 0.7:
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df_min_hours.loc[idx, 'simple_will_price_drop'] = 1
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df_min_hours.loc[idx, 'simple_will_price_drop'] = 1
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# df_min_hours.loc[idx, 'simple_drop_in_hours_dist'] = 'd1'
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# df_min_hours.loc[idx, 'simple_drop_in_hours_dist'] = 'd1'
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df_min_hours.loc[idx, 'flag_dist'] = 'd1'
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df_min_hours.loc[idx, 'flag_dist'] = 'd1'
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