AIÈȳ±À´Ï®£¬ £¬£¬£¬£¬ÔõÑùÓÃÁª°îѧϰʵÏÖ´óÊý¾ÝµÄÒþ˽ÅÌË㣿£¿£¿£¿£¿

Ðû²¼Ê±¼ä 2023-04-06

±¾ÎÄÒÔÈ˹¤ÖÇÄܳ¡¾°ÏµÄÊý¾ÝȷȨÊÚȨÓëÇå¾²ºÏ¹æÊ¹ÓÃΪÇÐÈëµã£¬ £¬£¬£¬£¬ÏÈÈÝÁËÁª°îѧϰµÄ½ç˵¡¢Í·ÄԼܹ¹¡¢·ÖÀàµÈÄÚÈÝ£¬ £¬£¬£¬£¬²¢Ì½ÌÖÁËÁª°îѧϰÔÚ²î±ðÐÐÒµ³¡¾°µÄÓ¦ÓúÍʵ¼ùÂ䵨£¬ £¬£¬£¬£¬×ÊÖú¸÷ÈË´ºÁª°îѧϰÕâÒ»Çå¾²ÊÖÒÕÓиüΪÖÜÈ«µØÏàʶ¡£¡£¡£


È˹¤ÖÇÄÜBÃæ£ºÊý¾ÝÇå¾²ÓëÒþ˽±£»£»£»£»¤


ÔÚÊý×Ö»¯×ªÐͼÓËÙÅä¾°Ï£¬ £¬£¬£¬£¬È˹¤ÖÇÄÜ£¨Artificial Intelligence£¬ £¬£¬£¬£¬AI£©È¡µÃѸÃÍÉú³¤¡£¡£¡£Ëæ×ÅChatGPTºá¿Õ³öÉú¡¢°Ù¶ÈÎÄÐÄÒ»ÑÔÐû²¼£¬ £¬£¬£¬£¬2023ÄêÈ˹¤ÖÇÄÜÔٴγÉΪÈËÃÇ×îΪ¹Ø×¢µÄÖØµã°å¿é¡£¡£¡£


È˹¤ÖÇÄܵÄÀֳɽ¨ÉèÔÚ´ó×ÚµÄÊý¾Ý»ù´¡Ö®ÉÏ£¬ £¬£¬£¬£¬Êý¾ÝÊÇÇý¸ÐÈ˹¤ÖÇÄÜÊÖÒÕÍ»·ÉÃͽøµÄÒªº¦ÒªËØ¡£¡£¡£AI²úÆ·ÔÚÄ£×ÓѵÁ·¡¢ÓÅ»¯ÒÔ¼°Óû§Ê¹ÓÃÀú³ÌÖÐÉæ¼°¶ÔСÎÒ˽¼ÒÊý¾Ý¡¢ÉÌÒµÊý¾Ý¡¢ÖªÊ¶²úȨµÈµÄÍøÂçºÍ´¦Öóͷ££¬ £¬£¬£¬£¬Æä±³ºóDZÔÚ×ÅÒþ˽±£»£»£»£»¤¡¢Êý¾Ý±£»£»£»£»¤ºÏ¹æµÈÎÊÌâ¡£¡£¡£


Ëæ×ÅÈËÃÇÇå¾²ÒâʶµÄÌá¸ß£¬ £¬£¬£¬£¬Óû§×îÏÈÔ½·¢¹Ø×¢ËûÃǵÄÒþ˽ÐÅÏ¢ÊÇ·ñδ¾­×Ô¼ºÔÊÐí±ã±»ËûÈ˳öÓÚÉÌÒµ»òÕßÕþÖÎÄ¿µÄ¶øÊ¹Ó㬠£¬£¬£¬£¬ÉõÖÁÀÄÓᣡ£¡£ÔõÑù¼æ¹Ë¸ß¶ÈÖÇÄÜ»¯ºÍ¸ß¶ÈÒþ˽Çå¾²£¬ £¬£¬£¬£¬´Ó¶øÏíÊÜAI´øÀ´µÄЧÂʺͱ¾Ç®ÓÅ»¯£¬ £¬£¬£¬£¬Õâ¸öÎÊÌâÖµµÃÉî˼¡£¡£¡£


¹æÔòÖÆ¶©ÕߺÍî¿Ïµ»ú¹¹Öð½¥³ǫ̈Ïà¹ØÖ´·¨À´¹æ·¶Êý¾ÝµÄÖÎÀíºÍʹÓᣡ£¡£Å·ÃË¡¶Í¨ÓÃÊý¾Ý±£»£»£»£»¤ÌõÀý¡·¡¢ÃÀ¹ú¡¶¼ÓÀû¸£ÄáÑÇÖÝÏûºÄÕßÒþ˽·¨¡·¡¢¡¶ÖлªÈËÃñ¹²ºÍ¹úÍøÂçÇå¾²·¨¡·µÈÖ´ÂÉÀýÔòÏà¼ÌÂ䵨£¬ £¬£¬£¬£¬¶ÔÊý¾ÝµÄÍøÂçºÍ´¦Öóͷ£Ìá³öÁËÑÏ¿áµÄÔ¼ÊøºÍ¿ØÖÆÒªÇ󡣡£¡£


Ò»Ñùƽ³£À´ËµÊý¾ÝÊÇÓɲî±ð×éÖ¯±¬·¢²¢ÓµÓеÄ£¬ £¬£¬£¬£¬¹Å°åµÄÒªÁìÊÇÍøÂçÊý¾Ý²¢´«ÊäÖÁÒ»ÆäÖÐÐĵ㣬 £¬£¬£¬£¬ÕâÆäÖÐÐĵãÓµÓиßÐÔÄܵÄÅÌË㼯Ⱥ²¢ÇÒÄܹ»ÑµÁ·ºÍ½¨Éè»úеѧϰģ×Ó¡£¡£¡£µ«ÔÚÓú·¢ÑÏ¿áµÄÖ´·¨ÇéÐÎÏ£¬ £¬£¬£¬£¬²î±ð×éÖ¯¼äÍøÂçºÍ·ÖÏíÊý¾Ý½«»á±äµÃÔ½À´Ô½ÄÑÌ⣬ £¬£¬£¬£¬½ø¶øÐγɸ÷×ÔÁæØêµÄÊý¾Ý¹Âµº¡£¡£¡£


Êý¾Ý¹ÂµºµÄÐγÉ£¬ £¬£¬£¬£¬Õý×è°­×ÅÊý¾ÝµÄʹÓᣡ£¡£Ò»ÖÖ¿ÉÐеÄÒªÁìÊÇÓÉÿһ¸öÓµÓÐÊý¾ÝÔ´µÄ×é֯ѵÁ·Ò»¸ö¾Ö²¿Ä£×Ó£¬ £¬£¬£¬£¬Ö®ºóÈø÷¸ö×éÖ¯ÔÚ¸÷×ÔµÄÄ£×ÓÉϽ»Á÷£¬ £¬£¬£¬£¬×îÖÕͨ¹ýÄ£×ӾۺϻñµÃ?¸öÈ«¾ÖÄ£×Ó¡£¡£¡£ÎªÁËÈ·±£Óû§Òþ˽ºÍÊý¾ÝÇå¾²£¬ £¬£¬£¬£¬¸÷×éÖ¯¼ä½»Á÷Ä£×ÓÐÅÏ¢µÄÀú³Ì½«»á±»È«ÐĵØÉè¼Æ£¬ £¬£¬£¬£¬Ê¹µÃÈκÎ×éÖ¯²»¿É¹»ÍƲ⵽ÆäËû×éÖ¯µÄÒþ˽Êý¾ÝÐÅÏ¢¡£¡£¡£


Áª°îѧϰ£¨Federated Learning£¬ £¬£¬£¬£¬FL£©±ã½ÓÄÉÁËÕâһͷÄÔ£¬ £¬£¬£¬£¬ËüΪÊý¾ÝÇå¾²ÓëºÏ¹æÊ¹ÓÃÌṩÁËÊÖÒռƻ®¡£¡£¡£


ʲôÊÇÁª°îѧϰ£¿£¿£¿£¿£¿


Áª°îѧϰּÔÚ½¨ÉèÒ»¸ö»ùÓÚÂþÑÜÊý¾Ý¼¯µÄÄ£×Ó£¬ £¬£¬£¬£¬ÓµÓÐÊý¾ÝÔ´µÄ×é֯ѵÁ·Ò»¸ö¾Ö²¿Ä£×Ó£¬ £¬£¬£¬£¬È»ºó¸÷×éÖ¯µÄÄ£×ÓÖ®¼ä¾ÙÐн»Á÷£¬ £¬£¬£¬£¬×îºóͨ¹ýÄ£×ӾۺϻñµÃÒ»¸öÈ«¾ÖÄ£×Ó£¬ £¬£¬£¬£¬ÇÒÄ£×ÓÐÔÄÜ¿¿½ü¹Å°å·½·¨ÑµÁ·Ï»úеѧϰģ×ÓµÄÒ»ÖÖËã·¨¿ò¼Ü¡£¡£¡£


Áª°îѧϰ¾ßÓÐÒÔÏÂÌØÕ÷£º

1¡¢ÓÐÁ½¸ö»òÒÔÉϵÄÁª°îѧϰ¼ÓÈ뷽Э×÷¹¹½¨Ò»¸ö¹²ÏíµÄ»úеѧϰģ×Ó£¬ £¬£¬£¬£¬ÇÒÿһ¸ö¼ÓÈë·½¶¼ÓµÓÐÈô¸ÉÄܹ»ÓÃÀ´ÑµÁ·Ä£×ÓµÄѵÁ·Êý¾Ý¡£¡£¡£

2¡¢Ä£×ÓÏà¹ØµÄÐÅÏ¢ÒÔ¼ÓÃÜ·½·¨ÔÚ¸÷·½Ö®¼ä¾ÙÐд«ÊäºÍ½»Á÷£¬ £¬£¬£¬£¬²¢°ü¹ÜÈκÎÒ»¸ö¼ÓÈë·½¶¼²»¿ÉÍÆ²â³öÆäËû·½µÄԭʼÊý¾Ý¡£¡£¡£

3¡¢ÔÚÄ£×ÓµÄѵÁ·Àú³ÌÖУ¬ £¬£¬£¬£¬Ã¿Ò»¸ö¼ÓÈë·½ÓµÓеÄÊý¾Ý¶¼²»»áÍÑÀë¸Ã¼ÓÈë·½¡£¡£¡£

4¡¢Ä£×ÓµÄÐÔÄÜÒªÄܹ»³ä·ÖÆÈ½üÀíÏëÄ£×ÓµÄÐÔÄܼ´½«ËùÓÐѵÁ·Êý¾Ý¼¯ÖÐÔÚÒ»ÆðѵÁ·¶øÀ´µÄ»úеѧϰģ×ÓµÄÐÔÄÜ¡£¡£¡£


Áª°îѧϰ°üÀ¨Ä£×ÓѵÁ·ºÍÄ£×ÓÍÆÀíÁ½¸öÀú³Ì¡£¡£¡£ÔÚÄ£×ÓѵÁ·µÄÀú³ÌÖУ¬ £¬£¬£¬£¬Ä£×ÓÏà¹ØµÄÐÅÏ¢£¨Ìݶȡ¢²ÎÊýµÈ£©Äܹ»ÔÚ¸÷·½Ö®¼ä½»Á÷»òÒÔ¼ÓÃÜÐÎʽ¾ÙÐн»Á÷Íê³ÉѵÁ·£¬ £¬£¬£¬£¬µ«²»½»Á÷Êý¾Ý¡£¡£¡£Ä£×ÓÍÆÀí¼´Ä£×ÓÓ¦ÓÃÓÚеÄÊý¾ÝʵÀý²¢»ñµÃЧ¹û£¬ £¬£¬£¬£¬²¢Í¨¹ýÒ»¸ö¹«ÕýµÄ¼ÛÖµ·ÖÅÉ»úÖÆÀ´·ÖÅÉЭͬģ×ÓËù»ñµÃµÄÊÕÒæ¡£¡£¡£


Áª°îѧϰµÄ¼Ü¹¹


ƾ֤³¡¾°µÄ²î±ð£¬ £¬£¬£¬£¬Áª°îѧϰϵͳƾ֤ÊÇ·ñÉæ¼°ÖÐÑëЭµ÷·½£¬ £¬£¬£¬£¬´Ó¶ø¿ÉÒÔ·ÖΪ¿Í»§¶Ë-ЧÀÍÆ÷£¨Client-Server£©¼Ü¹¹ºÍ¶ÔµÈÍøÂ磨Peer-to-Peer£©¼Ü¹¹¡£¡£¡£


ÔÚ¿Í»§-ЧÀÍÆ÷¼Ü¹¹ÖУ¬ £¬£¬£¬£¬Ð­µ÷·½ÊÇһ̨¾ÛºÏЧÀÍÆ÷£¬ £¬£¬£¬£¬Æä¿ÉÒÔ½«³õʼģ×Ó·¢Ë͸ø¸÷¼ÓÈë·½A¡«C£¬ £¬£¬£¬£¬ A¡«C»®·ÖʹÓø÷×ÔµÄÊý¾Ý¼¯ÑµÁ·¸ÃÄ£×Ó£¬ £¬£¬£¬£¬²¢½«Ä£×ÓÈ¨ÖØ¸üз¢Ë͵½¾ÛºÏЧÀÍÆ÷¡£¡£¡£¾ÛºÏЧÀÍÆ÷½«´Ó¼ÓÈë·½´¦ÎüÊÕµ½µÄÄ£×Ó¾ÛºÏÆðÀ´£¬ £¬£¬£¬£¬²¢½«¾ÛºÏºóµÄÄ£×Ó¸üз¢»Ø¸ø¼ÓÈë·½¡£¡£¡£ÕâÒ»Àú³Ì½«»áÖØ¸´¾ÙÐÐÖ±ÖÁÄ£×ÓÊÕÁ²»òµÖ´ï×î´óµü´ú´ÎÊý¡£¡£¡£ÕâÀï¼ÓÈë·½µÄÊý¾Ý²»»áÍÑÀë×Ô¼º£¬ £¬£¬£¬£¬±£»£»£»£»¤Á˼ÓÈë·½µÄÒþ˽ºÍÊý¾ÝÇå¾²¡£¡£¡£


¿­Ê±K66¡¤(ÖйúÇø)¹Ù·½ÍøÕ¾


ÔÚ¶ÔµÈÍøÂç¼Ü¹¹ÖУ¬ £¬£¬£¬£¬¸÷·½ÎÞÐë½èÖúЭµ÷·½Ö±½ÓͨѶ£¬ £¬£¬£¬£¬ÕâÖÖϵͳ½á¹¹µÄÓŵãÊDz»ÐèҪЭµ÷·½´Ó¶øÌá¸ßÁËÇå¾²ÐÔ£¬ £¬£¬£¬£¬µ«¿ÉÄÜÐèÒª¶àµÄÅÌËãºÍͨѶ¿ªÏú¡£¡£¡£


¿­Ê±K66¡¤(ÖйúÇø)¹Ù·½ÍøÕ¾


Áª°îѧϰһ·½Ãæ±£»£»£»£»¤ÁËÓû§µÄÒþ˽ºÍÊý¾ÝÇå¾²£¬ £¬£¬£¬£¬ÁíÒ»·½Ãæ¼ÓÈ뷽ЭͬѵÁ·µÄ»úеѧϰģ×Ó¿ÉÄÜÓÅÓÚ×Ô¼ºÑµÁ·µÄÄ£×Ó¡£¡£¡£¿ÉÊÇÒ²ÃæÁÙһЩÌôÕ½£¬ £¬£¬£¬£¬ºÃ±È¼ÓÈë·½ºÍ¾ÛºÏЧÀÍÆ÷Ö®¼äµÄͨѶÁ´½Ó¿ÉÄÜÊÇÂýËÙÇÒ²»Îȹ̵Ä£¬ £¬£¬£¬£¬Õ⽫»áʹϵͳ±äµÃ²»ÎȹÌÇÒ²»¿ÉÕ¹Íû¡£¡£¡£»£»£»£ÉÐÓÐÀ´×Ô²î±ð¼ÓÈë·½µÄÊý¾Ý»á·ºÆð·Ç×ÔÁ¦Í¬ÂþÑܵÄÇéÐΣ¬ £¬£¬£¬£¬Õâ¿ÉÄܵ¼ÖÂÁª°îÄ£×Ó±¬·¢Îó²î£¬ £¬£¬£¬£¬ÉõÖÁʧ°Ü¡£¡£¡£


Áª°îѧϰµÄ·ÖÀà


°´ÑµÁ·Êý¾Ý¼¯ÔÚÑù±¾¡¢ÌØÕ÷¿Õ¼äµÄÂþÑÜ¿ÉÒÔ½«Áª°îѧϰ·ÖΪºáÏòÁª°îѧϰ£¨Horizontal Federated Learning£¬ £¬£¬£¬£¬HFL£©¡¢×ÝÏòÁª°îѧϰ£¨Vertical Federated Learning£¬ £¬£¬£¬£¬VFL£©ºÍÁª°îǨáãѧϰ£¨Federated Transfer Learning£¬ £¬£¬£¬£¬FTL£©¡£¡£¡£


ºáÏòÁª°îѧϰÖмÓÈë·½Êý¾ÝÌØÕ÷ÊÇ¶ÔÆëµÄ£¬ £¬£¬£¬£¬¿ÉÊǼÓÈë·½ÓµÓеÄÊý¾ÝÑù±¾ÊDzî±ðµÄ£¬ £¬£¬£¬£¬Òò´ËÒ²¿ÉÒÔ½«Æä³ÆÎª°´Ñù±¾»®·ÖµÄÁª°îѧϰ£¨Sample-Partitioned Federated Learning£©¡£¡£¡£


¿­Ê±K66¡¤(ÖйúÇø)¹Ù·½ÍøÕ¾


µ±¼ÓÈë·½ÊÇÁ½¼Ò²î±ðÒøÐÐʱ£¬ £¬£¬£¬£¬¶þÕß¿ÉÄÜÓнÏÉÙµÄÖØµþ¿Í»§Ñù±¾£¬ £¬£¬£¬£¬¿ÉÊÇÑù±¾Êý¾Ý¿Í»§ÓкÜÊÇÏàËÆµÄÌØÕ÷¡£¡£¡£ÕâÁ½¼ÒÒøÐоͿÉÒÔͨ¹ýºáÏòÁª°îѧϰ½¨ÉèÒ»¸öÄ£×Ó¡£¡£¡£


×ÝÏòÁª°îѧϰÊÊÓÃÓÚ¼ÓÈë·½Ö®¼äµÄÊý¾ÝÑù±¾ÊÇ¶ÔÆëµÄ£¬ £¬£¬£¬£¬¿ÉÊÇÔÚÊý¾ÝÌØÕ÷²î±ð£¬ £¬£¬£¬£¬Òò´Ë¿ÉÒÔ½«×ÝÏòÁª°îѧϰÃüÃûΪ°´ÌØÕ÷»®·ÖµÄÁª°îѧϰ£¨Feature-Partitioned Federated Learning£©¡£¡£¡£


¿­Ê±K66¡¤(ÖйúÇø)¹Ù·½ÍøÕ¾


µ±¼ÓÈë·½Á½¼Ò¹«Ë¾Ìṩ²î±ðµÄЧÀ͵«ÔÚ¿Í»§ÈºÌåÉÏÓкÜÊÇ´óµÄ½»¼¯£¬ £¬£¬£¬£¬ÇÒÊý¾ÝÌØÕ÷µÄÖØµþ²¿·Ö½ÏСʱ£¬ £¬£¬£¬£¬Ôò¿ÉÒÔͨ¹ý×ÝÏòÁª°îѧϰѵÁ·Ä£×Ó¡£¡£¡£


µ±¼ÓÈë·½µÄÊý¾ÝÑù±¾ºÍÊý¾ÝÌØÕ÷ÖØµþ¶¼ºÜÉÙµÄÇéÐÎʱ³ÆÖ®ÎªÁª°îǨáãѧϰ¡£¡£¡£


¿­Ê±K66¡¤(ÖйúÇø)¹Ù·½ÍøÕ¾


Áª°îѧϰµÄÓ¦Óó¡¾°


Áª°îѧϰ×÷ΪÒþ˽ÅÌËãÈý´óÊÖÒÕõè¾¶Ö®Ò»£¬ £¬£¬£¬£¬Îª½â¾öÊý¾ÝÁ÷ͨÀú³ÌÖеÄÊý¾ÝÇå¾²ÌṩÁËÊÖÒÕ·¾¶£¬ £¬£¬£¬£¬¶ÔÒþ˽ÅÌËãÕâÒ»ÐÂÐËÊÖÒÕÔÚÖ÷Òª±ÊÖ±ÐÐÒµµÄÂ䵨¼°Êý¾ÝÒªËØÊг¡»¯µÄÉú³¤Æðµ½ÁËÖ÷ÒªÍÆ½ø×÷Óᣡ£¡£ 


Ò½ÁÆÐÐÒµ


Ô½À´Ô½¶àµÄÒ½ÁÆÐ§ÀÍÌṩÉÌ×îÏÈʹÓÃÈ˹¤ÖÇÄÜÊÖÒÕ£¬ £¬£¬£¬£¬¿ÉÊÇÈ˹¤ÖÇÄÜÊÖÒÕÔÚÒ½ÁÆÐÐÒµµÄÓ¦ÓÃÈÔ´¦ÓÚÆð²½½×¶Î£¬ £¬£¬£¬£¬ÆäÖеÄÒ»¸öÒªº¦ÒòËØ¾ÍÊÇÊý¾ÝÎÊÌ⣬ £¬£¬£¬£¬¼´È±·¦´ó×ڵġ¢¾ßÓи»ºñÌØÕ÷µÄ¡¢¿ÉÒÔÓÃÀ´ÖÜÈ«ÐÎò»¼ÕßÖ¢×´µÄÊý¾Ý¡£¡£¡£


Ò½ÁÆÊý¾ÝÓëÉúÃü¿µ½¡Ï¢Ï¢Ïà¹Ø£¬ £¬£¬£¬£¬¾ß±¸ÖØ´óÐÔ¼°¸ß¶ÈÃô¸ÐÐÔ£¬ £¬£¬£¬£¬Ç¿î¿ÏµÊôÐÔ¡£¡£¡£ÏÖÔÚ£¬ £¬£¬£¬£¬Ò½ÁÆÊý¾ÝÖ÷Òª±¬·¢²¢´æ´¢ÓÚÒ½ÁÆ»ú¹¹¼°Õþ¸®Æ½Ì¨Ö®ÖУ¬ £¬£¬£¬£¬Æä´¦Öóͷ£Éæ¼°Õþ¸®¡¢Ò½Ôº¡¢ÆóÒµ¡¢Ð¡ÎÒ˽¼ÒµÈ¶à¸öÖ÷Ìå¡£¡£¡£Ôڸó¡¾°Ï£¬ £¬£¬£¬£¬ÎªÊµÏÖÒ½ÁÆÊý¾Ý¹²ÏíÓëºÏ¹æ¡¢Ð¡ÎÒ˽¼ÒÒþ˽±£»£»£»£»¤µÄƽºâ£¬ £¬£¬£¬£¬¿É½ÓÄÉÁª°îѧϰ½«ËùÓеļÓÈ뷽Э×÷µØÑµÁ·Ò»¸ö¹²ÏíÄ£×Ó¶ø²»½»Á÷»ò¹ûÕæËûÃǵÄ˽ÓÐÊý¾Ý¡£¡£¡£


ͨ¹ýÁª°îѧϰµÄÓ¦Ó㬠£¬£¬£¬£¬¿ÉÍ»ÆÆÒ½Ôº¡¢Ò½Ò©¹«Ë¾¡¢µÚÈý·½Ð§ÀÍÆ½Ì¨µÈÒ½ÁÆ»ú¹¹Ö®¼äµÄÊý¾Ý¹ÂµºÊµÏÖÊý¾Ý½¨Ä££¬ £¬£¬£¬£¬Í¬Ê±ÂòͨҽԺ¼äµÄÊý¾Ý¹Âµº½«Ôö½øAIÒ½ÁÆÂ䵨ºÍÉú³¤¡£¡£¡£


½ðÈÚÐÐÒµ


½ðÈÚÁìÓòÒ²ÊÇÈ˹¤ÖÇÄܱ»ÆÕ±éÓ¦ÓõÄÁìÓò£¬ £¬£¬£¬£¬Áª°îѧϰÄÜ×ÊÖúÏÔÖø¸ÄÉÆÎ£º¦Á¿»¯ÄÜÁ¦¡¢½µµÍÕûÌå½ðÈÚ²úÆ·¼ÛÇ®¡£¡£¡£ÈçÕë¶ÔС΢ÆóÒµÐÅ´û¡¢Ð¡ÎÒ˽¼Ò´û¿îµÈΣº¦ÖÎÀí³¡¾°ÖÐÕ÷Ðű¨¸æÏà¹ØÊý¾Ý±£´æµÄƵ´ÎµÍ¡¢Êý¾Ýά¶ÈȱʧµÈÎÊÌ⣬ £¬£¬£¬£¬ÒøÐпÉÒÔÕë¶ÔС΢ÆóÒµÒýÈ뷢ƱÊý¾Ý£¬ £¬£¬£¬£¬Õë¶ÔСÎÒ˽¼Ò´û¿îÒýÈëСÎÒ˽¼ÒÏûºÄÊý¾ÝºÍÉç½»Êý¾ÝµÈÀ´Ìá¸ß·ç¿ØÄÜÁ¦¡£¡£¡£


ÎïÁªÍøÐÐÒµ


ÎïÁªÍøÒѾ­ÉøÍ¸µ½Éú±¬·¢Ñĵĸ÷¸ö·½Ã棬 £¬£¬£¬£¬Í¬Ê±Ò²±¬·¢Á˺£Á¿µÄÊý¾Ý£¬ £¬£¬£¬£¬ÔõÑùÓÐÓÃʹÓÃÕâЩÊý¾ÝÊÇÒ»¸öºÜÖ÷ÒªµÄÎÊÌ⣬ £¬£¬£¬£¬½«ÆäÍøÂçµ½ÔÆ¶Ë»á¿ÉÄÜ»á´øÀ´ÖØ´óµÄ´«Ê俪Ïú£¬ £¬£¬£¬£¬Ò²»áÎ¥·´Êý¾ÝÒþ˽¹æÔò¡£¡£¡£Áª°îѧϰÄܹ»Ê¹µÃ±ßÑØÅÌËã×°±¸ÔÚ²»ÏòÔÆÐ§ÀÍÆ÷·¢ËÍÊý¾ÝµÄÇéÐÎÏÂЭ×÷ѵÁ·Ä£×Ó¡£¡£¡£


Êý¾ÝÊÇÊý×Ö¾­¼Ãʱ´úÓ¿ÏÖµÄÐÂÐÍÉú²úÒªËØ£¬ £¬£¬£¬£¬ÊÇÊý×Ö¾­¼Ãʱ´úÉç»á¼ÛÖµºÍ²Æ²ú´´Á¢µÄÒªº¦Çý¶¯Á¦£¬ £¬£¬£¬£¬Ëæ×ÅÊý¾Ý¹Âµº¡¢Óû§Òþ˽й¶µÈÎÊÌâÔ½À´Ô½Êܵ½¹Ø×¢£¬ £¬£¬£¬£¬Áª°îѧϰµÄÓ¦Óó¡¾°Ò²½«Ô½À´Ô½¶à¡£¡£¡£¿­Ê±K66Òþ˽ÅÌËãÆ½Ì¨»ùÓÚ²î±ð³¡¾°»¯µÄÐèÇó£¬ £¬£¬£¬£¬ÔÚÊý¾ÝÁ÷ͨÀú³ÌÖУ¬ £¬£¬£¬£¬½â¾öÅÌËã»·½ÚµÄÐÅÏ¢±£ÃÜÎÊÌâ¡£¡£¡£


×÷ΪÊý¾ÝÇå¾²ÁìÓòµÄ±ê¸ËÆóÒµ£¬ £¬£¬£¬£¬¿­Ê±K66ËѼ¯½ü¶þÊ®ÄêµÄÉîÖ¿Êý¾ÝÇå¾²ÊÖÒÕÂÄÀú£¬ £¬£¬£¬£¬ÍƳöÁËÊý¾ÝÇ徲ϵͳºÍÄÜÁ¦Õ½ÂÔ¹¹½¨¡ª¡ªÊý¾ÝÂÌÖÞ£¬ £¬£¬£¬£¬ÃæÏòÊý¾ÝµÄϵͳÊôÐÔ¡¢ÓªÒµÊôÐÔ¡¢¾­¼ÃÊôÐÔÌṩȫ·½Î»µÄÇå¾²ÊÖÒÕ¼°ÖÎÀíµÄϵͳ»¯°ü¹Ü£¬ £¬£¬£¬£¬ÒÔÇ徲ʵ¼ùÊØ»¤Êý×Ö»¯×ªÐÍÖеÄÖÖÖÖÓÃÊý³¡¾°£¬ £¬£¬£¬£¬ÀÎÖþÊý×Ö¾­¼Ã¿µ½¡Éú³¤Çå¾²»ùʯ¡£¡£¡£