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Then this ebony bird beguiling my sad fancy into smiling, \ By the grave and stern decorum of the countenance it wore, \\\"Though thy \ crest be shorn and shaven, thou,\\\" I said, \\\"art sure no craven, Ghastly \ grim and ancient Raven wandering from the Nightly shore-- Tell me what thy \ lordly name is on the Night's Plutonian shore!\\\" Quoth the Raven, \ \\\"Nevermore.\\\" Much I marvelled this ungainly fowl to hear discourse so \ plainly, Though its answer little meaning--little relevancy bore; For we \ cannot help agreeing that no living human being Ever yet was blessed with \ seeing bird above his chamber door-- Bird or beast upon the sculptured bust \ above his chamber door, With such name as \\\"Nevermore.\\\" But the Raven, \ sitting lonely on that placid bust, spoke only That one word, as if his soul \ in that one word he did outpour. Nothing further then he uttered--not a \ feather then he fluttered-- Till I scarcely more than muttered, \\\"Other \ friends have flown before-- On the morrow _he_ will leave me, as my hopes \ have flown before.\\\" Then the bird said, \\\"Nevermore.\\\" Startled at the \ stillness broken by reply so aptly spoken, \\\"Doubtless,\\\" said I, \ \\\"what it utters is its only stock and store, Caught from some unhappy \ master whom unmerciful Disaster Followed fast and followed faster till his \ songs one burden bore-- Till the dirges of his Hope the melancholy burden \ bore Of 'Never--nevermore.'\\\" But the Raven still beguiling all my sad soul \ into smiling, Straight I wheeled a cushioned seat in front of bird and bust \ and door; Then, upon the velvet sinking, I betook myself to linking Fancy \ unto fancy, thinking what this ominous bird of yore-- What this grim, \ ungainly, ghastly, gaunt, and ominous bird of yore Meant in croaking \ \\\"Nevermore.\\\" This I sat engaged in guessing, but no syllable expressing \ To the fowl whose fiery eyes now burned into my bosom's core; This and more I \ sat divining, with my head at ease reclining On the cushion's velvet lining \ that the lamp-light gloated o'er, But whose velvet violet lining with the \ lamp-light gloating o'er, She shall press, ah, nevermore! 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\:7ba1 \:8f96 \ \:4e0b \:9886 \:571f \:7684 \:4eba \:6c11 \:4e2d \:5f97 \:5230 \:666e \:904d \ \:548c \:6709 \:6548 \:7684 \:627f \:8ba4 \:548c \:9075 \:884c; \:7b2c \:4e00 \ \:6761 \:4eba \:4eba \:751f \:800c \:81ea \:7531, \:5728 \:5c0a \:4e25 \:548c \ \:6743 \:5229 \:4e0a \:4e00 \:5f8b \:5e73 \:7b49\:3002 \:4ed6 \:4eec \:8d4b \ \:6709 \:7406 \:6027 \:548c \:826f \:5fc3, \:5e76 \:5e94 \:4ee5 \:5144 \:5f1f \ \:5173 \:7cfb \:7684 \:7cbe \:795e \:76f8 \:5bf9 \:5f85\:3002 \:7b2c \:4e8c \ \:6761 \:4eba \:4eba \:6709 \:8d44 \:683c \:4eab \:6709 \:672c \:5ba3 \:8a00 \ \:6240 \:8f7d \:7684 \:4e00 \:5207 \:6743 \:5229 \:548c \:81ea \:7531, \:4e0d \ \:5206 \:79cd \:65cf\:3001 \:80a4 \:8272\:3001 \:6027 \:522b\:3001 \:8bed \ \:8a00\:3001 \:5b97 \:6559\:3001 \:653f \:6cbb \:6216 \:5176 \:4ed6 \:89c1 \ \:89e3\:3001 \:56fd \:7c4d \:6216 \:793e \:4f1a \:51fa \:8eab\:3001 \:8d22 \ \:4ea7\:3001 \:51fa \:751f \:6216 \:5176 \:4ed6 \:8eab \:5206 \:7b49 \:4efb \ \:4f55 \:533a \:522b\:3002 \:5e76 \:4e14 \:4e0d \:5f97 \:56e0 \:4e00 \:4eba \ \:6240 \:5c5e \:7684 \:56fd \:5bb6 \:6216 \:9886 \:571f \:7684 \:653f \:6cbb \ \:7684\:3001 \:884c \:653f \:7684 \:6216 \:8005 \:56fd \:9645 \:7684 \:5730 \ \:4f4d \:4e4b \:4e0d \:540c \:800c \:6709 \:6240 \:533a \:522b, \:65e0 \:8bba \ \:8be5 \:9886 \:571f \:662f \:72ec \:7acb \:9886 \:571f\:3001 \:6258 \:7ba1 \ \:9886 \:571f\:3001 \:975e \:81ea \:6cbb \:9886 \:571f \:6216 \:8005 \:5904 \ \:4e8e \:5176 \:4ed6 \:4efb \:4f55 \:4e3b \:6743 \:53d7 \:9650 \:5236 \:7684 \ \:60c5 \:51b5 \:4e4b \:4e0b\:3002 \:7b2c \:4e09 \:6761 \:4eba \:4eba \:6709 \ \:6743 \:4eab \:6709 \:751f \:547d\:3001 \:81ea \:7531 \:548c \:4eba \:8eab \ \:5b89 \:5168\:3002 \:7b2c \:56db \:6761 \:4efb \:4f55 \:4eba \:4e0d \:5f97 \ \:4f7f \:4e3a \:5974 \:96b6 \:6216 \:5974 \:5f79; \:4e00 \:5207 \:5f62 \:5f0f \ \:7684 \:5974 \:96b6 \:5236 \:5ea6 \:548c \:5974 \:96b6 \:4e70 \:5356, \:5747 \ \:5e94 \:4e88 \:4ee5 \:7981 \:6b62\:3002 \:7b2c \:4e94 \:6761 \:4efb \:4f55 \ \:4eba \:4e0d \:5f97 \:52a0 \:4ee5 \:9177 \:5211, \:6216 \:65bd \:4ee5 \:6b8b \ \:5fcd \:7684\:3001 \:4e0d \:4eba \:9053 \:7684 \:6216 \:4fae \:8fb1 \:6027 \ \:7684 \:5f85 \:9047 \:6216 \:5211 \:7f5a\:3002 \:7b2c \:516d \:6761 \:4eba \ \:4eba \:5728 \:4efb \:4f55 \:5730 \:65b9 \:6709 \:6743 \:88ab \:627f \:8ba4 \ \:5728 \:6cd5 \:5f8b \:524d \:7684 \:4eba \:683c\:3002 \:7b2c \:4e03 \:6761 \ \:6cd5 \:5f8b \:4e4b \:524d \:4eba \:4eba \:5e73 \:7b49, \:5e76 \:6709 \:6743 \ \:4eab \:53d7 \:6cd5 \:5f8b \:7684 \:5e73 \:7b49 \:4fdd \:62a4, \:4e0d \:53d7 \ \:4efb \:4f55 \:6b67 \:89c6\:3002 \:4eba \:4eba \:6709 \:6743 \:4eab \:53d7 \ \:5e73 \:7b49 \:4fdd \:62a4, \:4ee5 \:514d \:53d7 \:8fdd \:53cd \:672c \:5ba3 \ \:8a00 \:7684 \:4efb \:4f55 \:6b67 \:89c6 \:884c \:4e3a \:4ee5 \:53ca \:717d \ \:52a8 \:8fd9 \:79cd \:6b67 \:89c6 \:7684 \:4efb \:4f55 \:884c \:4e3a \:4e4b \ \:5bb3\:3002 \:7b2c \:516b \:6761 \:4efb \:4f55 \:4eba \:5f53 \:5baa \:6cd5 \ \:6216 \:6cd5 \:5f8b \:6240 \:8d4b \:4e88 \:4ed6 \:7684 \:57fa \:672c \:6743 \ \:5229 \:906d \:53d7 \:4fb5 \:5bb3 \:65f6, \:6709 \:6743 \:7531 \:5408 \:683c \ \:7684 \:56fd \:5bb6 \:6cd5 \:5ead \:5bf9 \:8fd9 \:79cd \:4fb5 \:5bb3 \:884c \ \:4e3a \:4f5c \:6709 \:6548 \:7684 \:8865 \:6551\:3002 \:7b2c \:4e5d \:6761 \ \:4efb \:4f55 \:4eba \:4e0d \:5f97 \:52a0 \:4ee5 \:4efb \:610f \:902e \:6355\ \:3001 \:62d8 \:7981 \:6216 \:653e \:9010\:3002 \:7b2c \:5341 \:6761 \:4eba \ \:4eba \:5b8c \:5168 \:5e73 \:7b49 \:5730 \:6709 \:6743 \:7531 \:4e00 \:4e2a \ \:72ec \:7acb \:800c \:65e0 \:504f \:501a \:7684 \:6cd5 \:5ead \:8fdb \:884c \ \:516c \:6b63 \:7684 \:548c \:516c \:5f00 \:7684 \:5ba1 \:8baf, \:4ee5 \:786e \ \:5b9a \:4ed6 \:7684 \:6743 \:5229 \:548c \:4e49 \:52a1 \:5e76 \:5224 \:5b9a \ \:5bf9 \:4ed6 \:63d0 \:51fa \:7684 \:4efb \:4f55 \:5211 \:4e8b \:6307 \:63a7\ \:3002 \:7b2c \:5341 \:4e00 \:6761 1. \:3220 \:51e1 \:53d7 \:5211 \:4e8b \ \:63a7 \:544a \:8005, \:5728 \:672a \:7ecf \:83b7 \:5f97 \:8fa9 \:62a4 \:4e0a \ \:6240 \:9700 \:7684 \:4e00 \:5207 \:4fdd \:8bc1 \:7684 \:516c \:5f00 \:5ba1 \ \:5224 \:800c \:4f9d \:6cd5 \:8bc1 \:5b9e \:6709 \:7f6a \:4ee5 \:524d, \:6709 \ \:6743 \:88ab \:89c6 \:4e3a \:65e0 \:7f6a\:3002 2. \:3221 \:4efb \:4f55 \ \:4eba \:7684 \:4efb \:4f55 \:884c \:4e3a \:6216 \:4e0d \:884c \:4e3a, \:5728 \ \:5176 \:53d1 \:751f \:65f6 \:4f9d \:56fd \:5bb6 \:6cd5 \:6216 \:56fd \:9645 \ \:6cd5 \:5747 \:4e0d \:6784 \:6210 \:5211 \:4e8b \:7f6a \:8005, \:4e0d \:5f97 \ \:88ab \:5224 \:4e3a \:72af \:6709 \:5211 \:4e8b \:7f6a\:3002 \:5211 \:7f5a \ \:4e0d \:5f97 \:91cd \:4e8e \:72af \:7f6a \:65f6 \:9002 \:7528 \:7684 \:6cd5 \ \:5f8b \:89c4 \:5b9a\:3002 \:7b2c \:5341 \:4e8c \:6761 \:4efb \:4f55 \:4eba \ \:7684 \:79c1 \:751f \:6d3b\:3001 \:5bb6 \:5ead\:3001 \:4f4f \:5b85 \:548c \ \:901a \:4fe1 \:4e0d \:5f97 \:4efb \:610f \:5e72 \:6d89, \:4ed6 \:7684 \:8363 \ \:8a89 \:548c \:540d \:8a89 \:4e0d \:5f97 \:52a0 \:4ee5 \:653b \:51fb\:3002 \ \:4eba \:4eba \:6709 \:6743 \:4eab \:53d7 \:6cd5 \:5f8b \:4fdd \:62a4, \:4ee5 \ \:514d \:53d7 \:8fd9 \:79cd \:5e72 \:6d89 \:6216 \:653b \:51fb\:3002 \:7b2c \ \:5341 \:4e09 \:6761 1. \:3220 \:4eba \:4eba \:5728 \:5404 \:56fd \:5883 \ \:5185 \:6709 \:6743 \:81ea \:7531 \:8fc1 \:5f99 \:548c \:5c45 \:4f4f\:3002 \ 2. \:3221 \:4eba \:4eba \:6709 \:6743 \:79bb \:5f00 \:4efb \:4f55 \:56fd \ \:5bb6, \:5305 \:62ec \:5176 \:672c \:56fd \:5728 \:5185, \:5e76 \:6709 \ \:6743 \:8fd4 \:56de \:4ed6 \:7684 \:56fd \:5bb6\:3002 \:7b2c \:5341 \:56db \ \:6761 1. \:3220 \:4eba \:4eba \:6709 \:6743 \:5728 \:5176 \:4ed6 \:56fd \ \:5bb6 \:5bfb \:6c42 \:548c \:4eab \:53d7 \:5e87 \:62a4 \:4ee5 \:907f \:514d \ \:8feb \:5bb3\:3002 2. \:3221 \:5728 \:771f \:6b63 \:7531 \:4e8e \:975e \ \:653f \:6cbb \:6027 \:7684 \:7f6a \:884c \:6216 \:8fdd \:80cc \:8054 \:5408 \ \:56fd \:7684 \:5b97 \:65e8 \:548c \:539f \:5219 \:7684 \:884c \:4e3a \:800c \ \:88ab \:8d77 \:8bc9 \:7684 \:60c5 \:51b5 \:4e0b, \:4e0d \:5f97 \:63f4 \:7528 \ \:6b64 \:79cd \:6743 \:5229\:3002 \:7b2c \:5341 \:4e94 \:6761 1. \:3220 \ \:4eba \:4eba \:6709 \:6743 \:4eab \:6709 \:56fd \:7c4d\:3002 2. \:3221 \ \:4efb \:4f55 \:4eba \:7684 \:56fd \:7c4d \:4e0d \:5f97 \:4efb \:610f \:5265 \ \:593a, \:4ea6 \:4e0d \:5f97 \:5426 \:8ba4 \:5176 \:6539 \:53d8 \:56fd \:7c4d \ \:7684 \:6743 \:5229\:3002 \:7b2c \:5341 \:516d \:6761 1. \:3220 \:6210 \ \:5e74 \:7537 \:5973, \:4e0d \:53d7 \:79cd \:65cf\:3001 \:56fd \:7c4d \:6216 \ \:5b97 \:6559 \:7684 \:4efb \:4f55 \:9650 \:5236 \:6709 \:6743 \:5a5a \:5ac1 \ \:548c \:6210 \:7acb \:5bb6 \:5ead\:3002 \:4ed6 \:4eec \:5728 \:5a5a \:59fb \ \:65b9 \:9762, \:5728 \:7ed3 \:5a5a \:671f \:95f4 \:548c \:5728 \:89e3 \:9664 \ \:5a5a \:7ea6 \:65f6, \:5e94 \:6709 \:5e73 \:7b49 \:7684 \:6743 \:5229\:3002 \ 2. \:3221 \:53ea \:6709 \:7ecf \:7537 \:5973 \:53cc \:65b9 \:7684 \:81ea \ \:7531 \:548c \:5b8c \:5168 \:7684 \:540c \:610f, \:624d \:80fd \:7f14 \:5a5a\ \:3002 3. \:3222 \:5bb6 \:5ead \:662f \:5929 \:7136 \:7684 \:548c \:57fa \ \:672c \:7684 \:793e \:4f1a \:5355 \:5143, \:5e76 \:5e94 \:53d7 \:793e \:4f1a \ \:548c \:56fd \:5bb6 \:7684 \:4fdd \:62a4\:3002 \:7b2c \:5341 \:4e03 \:6761 \ 1. \:3220 \:4eba \:4eba \:5f97 \:6709 \:5355 \:72ec \:7684 \:8d22 \:4ea7 \ \:6240 \:6709 \:6743 \:4ee5 \:53ca \:540c \:4ed6 \:4eba \:5408 \:6709 \:7684 \ \:6240 \:6709 \:6743\:3002 2. \:3221 \:4efb \:4f55 \:4eba \:7684 \:8d22 \ \:4ea7 \:4e0d \:5f97 \:4efb \:610f \:5265 \:593a\:3002 \:7b2c \:5341 \:516b \ \:6761 \:4eba \:4eba \:6709 \:601d \:60f3\:3001 \:826f \:5fc3 \:548c \:5b97 \ \:6559 \:81ea \:7531 \:7684 \:6743 \:5229; \:6b64 \:9879 \:6743 \:5229 \:5305 \ \:62ec \:6539 \:53d8 \:4ed6 \:7684 \:5b97 \:6559 \:6216 \:4fe1 \:4ef0 \:7684 \ \:81ea \:7531, \:4ee5 \:53ca \:5355 \:72ec \:6216 \:96c6 \:4f53\:3001 \:516c \ \:5f00 \:6216 \:79d8 \:5bc6 \:5730 \:4ee5 \:6559 \:4e49\:3001 \:5b9e \:8df5\ \:3001 \:793c \:62dc \:548c \:6212 \:5f8b \:8868 \:793a \:4ed6 \:7684 \:5b97 \ \:6559 \:6216 \:4fe1 \:4ef0 \:7684 \:81ea \:7531\:3002 \:7b2c \:5341 \:4e5d \ \:6761 \:4eba \:4eba \:6709 \:6743 \:4eab \:6709 \:4e3b \:5f20 \:548c \:53d1 \ \:8868 \:610f \:89c1 \:7684 \:81ea \:7531; \:6b64 \:9879 \:6743 \:5229 \:5305 \ \:62ec \:6301 \:6709 \:4e3b \:5f20 \:800c \:4e0d \:53d7 \:5e72 \:6d89 \:7684 \ \:81ea \:7531, \:548c \:901a \:8fc7 \:4efb \:4f55 \:5a92 \:4ecb \:548c \:4e0d \ \:8bba \:56fd \:754c \:5bfb \:6c42\:3001 \:63a5 \:53d7 \:548c \:4f20 \:9012 \ \:6d88 \:606f \:548c \:601d \:60f3 \:7684 \:81ea \:7531\:3002 \:7b2c \:4e8c \ \:5341 \:6761 1. \:3220 \:4eba \:4eba \:6709 \:6743 \:4eab \:6709 \:548c \ \:5e73 \:96c6 \:4f1a \:548c \:7ed3 \:793e \:7684 \:81ea \:7531\:3002 2. \ \:3221 \:4efb \:4f55 \:4eba \:4e0d \:5f97 \:8feb \:4f7f \:96b6 \:5c5e \:4e8e \ \:67d0 \:4e00 \:56e2 \:4f53\:3002 \:7b2c \:4e8c \:5341 \:4e00 \:6761 1. \ \:3220 \:4eba \:4eba \:6709 \:76f4 \:63a5 \:6216 \:901a \:8fc7 \:81ea \:7531 \ \:9009 \:62e9 \:7684 \:4ee3 \:8868 \:53c2 \:4e0e \:6cbb \:7406 \:672c \:56fd \ \:7684 \:6743 \:5229\:3002 2. \:3221 \:4eba \:4eba \:6709 \:5e73 \:7b49 \ \:673a \:4f1a \:53c2 \:52a0 \:672c \:56fd \:516c \:52a1 \:7684 \:6743 \:5229\ \:3002 3. \:3222 \:4eba \:6c11 \:7684 \:610f \:5fd7 \:662f \:653f \:5e9c \ \:6743 \:529b \:7684 \:57fa \:7840; \:8fd9 \:4e00 \:610f \:5fd7 \:5e94 \:4ee5 \ \:5b9a \:671f \:7684 \:548c \:771f \:6b63 \:7684 \:9009 \:4e3e \:4e88 \:4ee5 \ \:8868 \:73b0, \:800c \:9009 \:4e3e \:5e94 \:4f9d \:636e \:666e \:904d \:548c \ \:5e73 \:7b49 \:7684 \:6295 \:7968 \:6743, \:5e76 \:4ee5 \:4e0d \:8bb0 \:540d \ \:6295 \:7968 \:6216 \:76f8 \:5f53 \:7684 \:81ea \:7531 \:6295 \:7968 \:7a0b \ \:5e8f \:8fdb \:884c\:3002 \:7b2c \:4e8c \:5341 \:4e8c \:6761 \:6bcf \:4e2a \ \:4eba, \:4f5c \:4e3a \:793e \:4f1a \:7684 \:4e00 \:5458, \:6709 \:6743 \ \:4eab \:53d7 \:793e \:4f1a \:4fdd \:969c, \:5e76 \:6709 \:6743 \:4eab \:53d7 \ \:4ed6 \:7684 \:4e2a \:4eba \:5c0a \:4e25 \:548c \:4eba \:683c \:7684 \:81ea \ \:7531 \:53d1 \:5c55 \:6240 \:5fc5 \:9700 \:7684 \:7ecf \:6d4e\:3001 \:793e \ \:4f1a \:548c \:6587 \:5316 \:65b9 \:9762 \:5404 \:79cd \:6743 \:5229 \:7684 \ \:5b9e \:73b0, \:8fd9 \:79cd \:5b9e \:73b0 \:662f \:901a \:8fc7 \:56fd \:5bb6 \ \:52aa \:529b \:548c \:56fd \:9645 \:5408 \:4f5c \:5e76 \:4f9d \:7167 \:5404 \ \:56fd \:7684 \:7ec4 \:7ec7 \:548c \:8d44 \:6e90 \:60c5 \:51b5\:3002 \:7b2c \ \:4e8c \:5341 \:4e09 \:6761 1. \:3220 \:4eba \:4eba \:6709 \:6743 \:5de5 \ \:4f5c\:3001 \:81ea \:7531 \:9009 \:62e9 \:804c \:4e1a\:3001 \:4eab \:53d7 \ \:516c \:6b63 \:548c \:5408 \:9002 \:7684 \:5de5 \:4f5c \:6761 \:4ef6 \:5e76 \ \:4eab \:53d7 \:514d \:4e8e \:5931 \:4e1a \:7684 \:4fdd \:969c\:3002 2. \ \:3221 \:4eba \:4eba \:6709 \:540c \:5de5 \:540c \:916c \:7684 \:6743 \:5229, \ \:4e0d \:53d7 \:4efb \:4f55 \:6b67 \:89c6\:3002 3. \:3222 \:6bcf \:4e00 \ \:4e2a \:5de5 \:4f5c \:7684 \:4eba, \:6709 \:6743 \:4eab \:53d7 \:516c \:6b63 \ \:548c \:5408 \:9002 \:7684 \:62a5 \:916c, \:4fdd \:8bc1 \:4f7f \:4ed6 \:672c \ \:4eba \:548c \:5bb6 \:5c5e \:6709 \:4e00 \:4e2a \:7b26 \:5408 \:4eba \:7684 \ \:751f \:6d3b \:6761 \:4ef6, \:5fc5 \:8981 \:65f6 \:5e76 \:8f85 \:4ee5 \:5176 \ \:4ed6 \:65b9 \:5f0f \:7684 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