Ê×Ò³
ѧϰ
»î¶¯
רÇø
¹¤¾ß
TVP
·¢²¼
¾«Ñ¡ÄÚÈÝ/¼¼ÊõÉçȺ/ÓŻݲúÆ·,¾¡ÔÚС³ÌÐò
Á¢¼´Ç°Íù

±È¿É΢¼Ü¹¹ËÑË÷DARTS¿ì10±¶£¬µÚËÄ·¶Ê½Ìá³öÓÅ»¯NASËã·¨

Éñ¾­¼Ü¹¹ËÑË÷Ò»Ö±±»ÈÏΪÊǸßËãÁ¦µÄ´ú±í£¬¾¡¹Ü¿É΢¼Ü¹¹ËÑË÷µÄ¸ÅÄî·Ç³£ÎüÒýÈË£¬µ«ËüÄ¿Ç°µÄЧÂÊÓëЧ¹ûÈÔÈ»²»¾¡ÈËÒâ¡£ÔÚ×î½üµÄ AAAI 2020 ÖУ¬µÚËÄ·¶Ê½Ìá³öÁËÒ»ÖÖ»ùÓÚÁÙ½üµü´ú£¨Proximal Iterations£©µÄ NAS ·½·¨£¬ÆäËÙ¶È±È DARTS ¿ìÁË 10 ±¶ÒÔÉÏ¡£

Éñ¾­¼Ü¹¹ËÑË÷£¨NAS£©ÒòÆä±ÈÊÖ¹¤¹¹½¨µÄ¼Ü¹¹¸üÄÜʶ±ð³ö¸üºÃµÄ¼Ü¹¹¶ø±¸ÊܹØ×¢¡£½üÄêÀ´£¬¿É΢·ÖµÄËÑË÷·½·¨Òò¿ÉÒÔÔÚÊýÌìÄÚ»ñµÃ¸ßÐÔÄÜµÄ NAS ¶ø³ÉΪÑо¿Èȵ㡣Ȼ¶ø£¬ÓÉÓÚ³¬¼¶ÍøµÄ½¨É裬ÆäÈÔÈ»ÃæÁÙמ޴óµÄ¼ÆËã³É±¾ºÍÐÔÄܵÍϵÄÎÊÌâ¡£

ÔÚ±¾ÎÄÖУ¬ÎÒÃÇÌá³öÁËÒ»ÖÖ»ùÓÚ½ü¶Ëµü´ú£¨NASP£©µÄ¸ßЧ NAS ·½·¨¡£ÓëÒÔÍùµÄ¹¤×÷²»Í¬£¬NASP ½«ËÑË÷¹ý³ÌÖØж¨ÒåΪ¾ßÓÐÀëÉ¢Ô¼ÊøµÄÓÅ»¯ÎÊÌâºÍÄ£Ð͸´ÔӶȵÄÕýÔò»¯Æ÷¡£ÓÉÓÚеÄÄ¿±êÊÇÄÑÒÔ½â¾öµÄ£¬ÎÒÃǽøÒ»²½Ìá³öÁËÒ»ÖÖ¸ßЧµÄËã·¨£¬Óɽü¶ËÆô·¢·¨½øÐÐÓÅ»¯¡£

ͨ¹ýÕâÖÖ·½Ê½£¬NASP ²»½ö±ÈÏÖÓеĿÉ΢·ÖµÄËÑË÷·½·¨Ëٶȿ죬¶øÇÒ»¹¿ÉÒÔÕÒµ½¸üºÃµÄÌåϵ½á¹¹²¢Æ½ºâÄ£Ð͸´ÔӶȡ£×îÖÕ£¬Í¨¹ý²»Í¬ÈÎÎñµÄ´óÁ¿ÊµÑé±íÃ÷£¬NASP ÔÚ²âÊÔ¾«¶ÈºÍ¼ÆËãЧÂÊÉϾùÄÜ»ñµÃ¸üºÃµÄÐÔÄÜ£¬ÔÚ·¢ÏÖ¸üºÃµÄÄ£ÐͽṹµÄͬʱ£¬ËÙ¶È±È DARTS µÈÏÖÓм¼Êõ¿ì 10 ±¶ÒÔÉÏ¡£´ËÍ⣬NASP Ïû³ýÁ˲Ù×÷Ö®¼äµÄ¹ØÁªÐÔ¡£

  • ÂÛÎÄ£ºhttps://arxiv.org/abs/1905.13577
  • ´úÂ룺https://github.com/xujinfan/NASP-codes

´ËÍ⣬ÔÚ WWW 2020 µÄÂÛÎÄ¡¹Efficient Neural Interaction Functions Search for Collaborative Filtering¡¹ÖУ¬ÎÒÃǽ« NASP Ëã·¨Ó¦Óõ½ÁËÍƼöϵͳÁìÓò£º

  • ÊÓƵ£ºhttps://www.tuijianxitong.cn/cn/school/video/26
  • PPT£ºhttps://www.tuijianxitong.cn/cn/school/openclass/27
  • ÂÛÎÄ£ºhttps://arxiv.org/pdf/1906.12091
  • ´úÂ룺https://github.com/quanmingyao/SIF

×ßÏò¼«ËÙµÄÉñ¾­¼Ü¹¹ËÑË÷

Éî¶ÈÍøÂçÒѾ­Ó¦Óõ½Ðí¶àÓ¦ÓÃÖУ¬ÆäÖУ¬Êʵ±µÄÌåϵ½á¹¹¶ÔÓÚÈ·±£Á¼ºÃµÄÐÔÄÜÖÁ¹ØÖØÒª¡£½üÄêÀ´£¬NAS Òò¿ÉÒÔÕÒµ½²ÎÊý¸üÉÙ¡¢ÐÔÄܸüºÃµÄÍøÂç³ÉΪÁ˹Ø×¢ºÍÑо¿µÄÈȵ㣬¸Ã·½·¨¿ÉÈ¡´úÉè¼Æ¼Ü¹¹µÄÈËÀàר¼Ò¡£

NASNet ÊÇÕâ·½ÃæµÄÏÈÇýÐÔ¹¤×÷£¬Ëü½«¾í»ýÉñ¾­ÍøÂ磨CNN£©µÄÉè¼ÆΪһ¸ö¶à²½Öè¾ö²ßÎÊÌ⣬²¢ÓÃÇ¿»¯Ñ§Ï°À´½â¾ö¡£

È»¶ø£¬ÓÉÓÚËÑË÷¿Õ¼äÀëÉ¢ÇÒ¾Þ´ó£¬NASNet ÐèÒªÊý°Ù¸ö GPU ºÄ·ÑÒ»¸öÔµÄʱ¼ä£¬²ÅÄÜ»ñµÃÒ»¸öÁîÈËÂúÒâµÄÍøÂç½á¹¹¡£ºóÀ´£¬Í¨¹ý¹Û²ìÍøÂç´ÓСµ½´óµÄÁ¼ºÃ´«ÊäÐÔ£¬NASNetA£©ÌáÒ齫ÍøÂç·Ö¸î³É¿é£¬²¢ÔÚ¿é»òµ¥ÔªÄÚ½øÐÐËÑË÷¡£È»ºó£¬Ê¶±ð³öµÄµ¥Ôª±»ÓÃ×÷¹¹½¨¿éÀ´×é×°´óÐÍÍøÂç¡£ÕâÖÖÁ½½×¶ÎµÄËÑË÷²ßÂÔ¼«´óµØ¼õСÁËËÑË÷¿Õ¼äµÄ´óС£¬´Ó¶øʹ½ø»¯Ëã·¨¡¢Ì°ÐÄËã·¨¡¢Ç¿»¯Ñ§Ï°µÈËÑË÷Ëã·¨ÏÔÖø¼ÓËÙ¡£

¾¡¹Ü¼õÉÙÁËËÑË÷¿Õ¼ä£¬µ«ËÑË÷¿Õ¼äÈÔÈ»ÊÇÀëÉ¢µÄ£¬Í¨³£ºÜÄÑÓÐЧËÑË÷¡£×î½üµÄÑо¿¼¯ÖÐÔÚÈçºÎ½«ËÑË÷¿Õ¼ä´ÓÀëÉ¢µÄ±äΪ¿É΢·Ö¡£ÕâÖÖ˼ÏëµÄÓŵãÔÚÓÚ¿É΢¿Õ¼ä¿ÉÒÔ¼ÆËãÌݶÈÐÅÏ¢£¬´Ó¶ø¼Ó¿ìÓÅ»¯Ëã·¨µÄÊÕÁ²Ëٶȡ£

¸Ã˼ÏëÒѾ­ÑÜÉú³öÁ˸÷ÖÖ¼¼Êõ£¬ÀýÈç DARTS ƽ»¬ÁË Softmax µÄÉè¼ÆÑ¡Ôñ£¬²¢ÑµÁ·ÁËÒ»×éÍøÂ磻SNAS ͨ¹ýƽ»¬³éÑù·½°¸¼ÓÇ¿Ç¿»¯Ñ§Ï°¡£NAO ʹÓÃ×Ô¶¯±àÂëÆ÷½«ËÑË÷¿Õ¼äÓ³É䵽еĿÉ΢¿Õ¼ä¡£

ÔÚËùÓÐÕâЩ¹¤×÷ÖУ¨Table 1£©£¬×îΪ³öÉ«µÄÊÇ DARTS [1]£¬ÒòΪËü½áºÏÁË¿É΢·ÖÒÔ¼°Ð¡ËÑË÷¿Õ¼äÁ½ÕßµÄÓŵ㣬ʵÏÖÁ˵¥ÔªÄڵĿìËÙÌݶÈϽµ¡£È»¶ø£¬ÆäËÑË÷ЧÂʺÍʶ±ðÌåϵ½á¹¹µÄÐÔÄÜÈÔÈ»²»¹»ÁîÈËÂúÒâ¡£

ÓÉÓÚËüÔÚËÑË÷¹ý³ÌÖб£³Ö³¬¼¶Íø£¬´Ó¼ÆËãµÄ½Ç¶ÈÀ´¿´£¬ËùÓвÙ×÷¶¼ÐèÒªÔÚÌݶÈϽµ¹ý³ÌÖÐÏòÇ°ºÍÏòºó´«²¥¡£´ÓÐÔÄܵĽǶÈÀ´¿´£¬²Ù×÷ͨ³£ÊÇÏ໥¹ØÁªµÄ¡£ÀýÈ磬7x7 µÄ¾í»ýÂ˲¨Æ÷¿ÉÒÔ×÷ΪÌØÀý¸²¸Ç 3x3 µÄÂ˲¨Æ÷¡£µ±¸üÐÂÍøÂçȨֵʱ£¬ÓÉ DARTS ¹¹ÔìµÄ ensemble ¿ÉÄܻᵼÖ·¢ÏÖÁÓÖʵÄÌåϵ½á¹¹¡£

´ËÍ⣬DARTS ×îÖյĽṹÐèÒªÔÚËÑË÷ºóÖØÐÂÈ·¶¨¡£Õâ»áµ¼ÖÂËÑË÷µÄÌåϵ½á¹¹ºÍ×îÖÕÌåϵ½á¹¹Ö®¼ä´æÔÚÆ«²î£¬²¢¿ÉÄܵ¼ÖÂ×îÖÕÌåϵ½á¹¹µÄÐÔÄÜϽµ¡£

¸ü¿ì¸üÇ¿µÄÁÙ½üµü´ú

Ôڴ˴ι¤×÷ÖУ¬µÚËÄ·¶Ê½Ìá³öÁË»ùÓÚÁÙ½üµü´úËã×ÓËã·¨£¨Proximal gradient Algorithm [2]£©µÄ NAS ·½·¨£¨NASP£©£¬ÒÔÌá¸ßÏÖÓеĿÉ΢ËÑË÷·½·¨µÄЧÂʺÍÐÔÄÜ¡£ÎÒÃǸø³öÁËÒ»¸öÐ嵀 NAS ÎÊÌâµÄ¹«Ê½ºÍÓÅ»¯Ëã·¨£¬ËüÔÊÐíÔÚ¿É΢¿Õ¼äÖÐËÑË÷£¬Í¬Ê±±£³ÖÀëÉ¢µÄ½á¹¹¡£ÕâÑù£¬NASP ¾Í²»ÔÙÐèҪѵÁ·Ò»¸ö³¬¼¶Íø£¬´Ó¶ø¼Ó¿ìËÑË÷Ëٶȣ¬´Ó¶ø²úÉú¸üÓŵÄÍøÂç½á¹¹¡£

¸Ã¹¤×÷µÄ¹±Ï×ÔÚÓÚ£º

  • ³ýÁËÒÔÍù NAS ÆÕ±éÌÖÂÛµÄËÑË÷¿Õ¼ä¡¢Í걸ÐÔºÍÄ£Ð͸´ÔÓ¶ÈÖ®Í⣬¸Ã¹¤×÷È·¶¨ÁËÒ»¸öÈ«ÐÂÇÒÖØÒªµÄÒ»¸öÒòËØ£¬¼´ NAS ¶ÔÌåϵ½á¹¹µÄÔ¼Êø£»
  • ÎÒÃǽ« NAS ÃèÊöΪһ¸öÔ¼ÊøÓÅ»¯ÎÊÌ⣬±£³Ö¿Õ¼ä¿É΢£¬µ«Ç¿ÖƼܹ¹ÔÚËÑË÷¹ý³ÌÖÐÊÇÀëÉ¢µÄ£¬¼´ÔÚ·´ÏòÌݶȴ«²¥µÄʱºò¾¡Á¿Î¬³ÖÉÙÁ¿¼¤»îµÄ²Ù×÷¡£ÕâÓÐÖúÓÚÌá¸ßËÑË÷ЧÂʲ¢ÔÚѵÁ·¹ý³ÌÖзÖÀ벻ͬµÄ²Ù×÷¡£ÕýÔò»¯Æ÷Ò²±»ÒýÈëµ½ÐÂÄ¿±êÖУ¬´Ó¶ø¿ØÖÆÍøÂç½á¹¹µÄ´óС£»
  • ÓÉÓÚÕâÖÖÀëÉ¢Ô¼ÊøÄÑÒÔÓÅ»¯£¬ÇÒÎÞ·¨Ó¦Óüòµ¥µÄ DARTS ×ÔÊÊÓ¦¡£Òò´Ë£¬µÚËÄ·¶Ê½Ìá³öÁËÒ»ÖÖÓɽü¶Ëµü´úÑÜÉúµÄÐÂÓÅ»¯Ëã·¨£¬²¢ÇÒÏû³ýÁË DARTS ËùÐèµÄ°º¹ó¶þ½×½üËÆ£¬Îª±£Ö¤Ëã·¨µÄÊÕÁ²ÐÔ£¬ÎÒÃǸü½øÒ»²½½øÐÐÁËÀíÂÛ·ÖÎö¡£
  • ×îºó£¬ÔÚÉè¼Æ CNN ºÍ RNN ¼Ü¹¹Ê±£¬Ê¹Óø÷ÖÖ»ù×¼Êý¾Ý¼¯½øÐÐÁËʵÑé¡£Óë×îÏȽøµÄ·½·¨Ïà±È£¬Ìá³öµÄ NASP ²»½öËٶȿ죨±È DARTS ¿ì 10 ±¶ÒÔÉÏ£©£¬¶øÇÒ¿ÉÒÔ·¢ÏÖ¸üºÃµÄÄ£Ðͽṹ¡£ÊµÑé½á¹û±íÃ÷£¬NASP ÔÚ²âÊÔ¾«¶ÈºÍ¼ÆËãЧÂÊÉϾùÄÜ»ñµÃ¸üºÃµÄÐÔÄÜ¡£

¾ßÌåËã·¨ÈçÏ£º

ÔÚµÚÈý²½ÖУ¬ÎÒÃÇÀûÓÃÁÙ½üµü´úËã×Ó²úÉúÀëÉ¢½á¹¹£»ÔÙÔÚµÚËIJ½ÖиüÐÂÁ¬ÐøµÄ½á¹¹²ÎÊý£¨µ¥²½ÌݶÈϽµ£¬ÎÞ¶þ½×½üËÆ£©£»×îºó£¬ÎÒÃÇÔÚÀëÉ¢µÄÍøÂç½á¹¹Ï£¬¸üÐÂÍøÂçȨÖØ¡£

ʵÑé½á¹û

¸Ã¹¤×÷ÀûÓÃËÑË÷ CNN ºÍ RNN ½á¹¹À´½øÐÐʵÑé¡£´Ë´ÎÊÔÑéʹÓà CIFAR-10¡¢ImageNet¡¢PTB¡¢WT2 µÈËĸöÊý¾Ý¼¯¡£

CNN µÄ¼Ü¹¹ËÑË÷

1. ÔÚ CIFAR-10 ÉÏËÑË÷µ¥Ôª

ÔÚ CIFAR-10 ÉÏËÑË÷¼Ü¹¹Ïàͬ£¬¾í»ýµ¥ÔªÓÉ N=7 ¸ö½Úµã×é³É£¬Í¨¹ý¶Ôµ¥Ôª½øÐÐ 8 ´Îµþ¼Ó»ñµÃÍøÂ磻ÔÚËÑË÷¹ý³ÌÖУ¬ÎÒÃÇѵÁ·ÁËÒ»¸öÓÉ 8 ¸öµ¥Ôªµþ¼ÓµÄ 50 ¸öÖÜÆÚµÄСÍøÂç¡£ÕâÀÂÇÁ½¸ö²»Í¬µÄËÑË÷¿Õ¼ä¡£µÚÒ»¸öÓë DARTS Ïàͬ£¬°üº¬ 7 ¸ö²Ù×÷¡£µÚ¶þ¸ö¸ü´ó£¬°üº¬ 12 ¸ö²Ù×÷¡£

Óë×îÐ嵀 NAS ·½·¨Ïà±È£¬ÔÚÏàͬµÄ¿Õ¼ä£¨7 ´Î²Ù×÷£©ÖУ¬NASP µÄÐÔÄÜÓë DARTS£¨¶þ½×£©Ï൱£¬±È DARTS£¨Ò»½×£©ºÃµÃ¶à¡£ÔÚ¸ü´óµÄ¿Õ¼ä£¨12 ¸ö²Ù×÷£©ÖУ¬NASP ÈÔÈ»±È DARTS ¿ìºÜ¶à£¬²âÊÔÎó²î±ÈÆäËû·½·¨¸üµÍºÜ¶à¡£

ÔÚÒÔÉÏʵÑéÖУ¬Ñо¿ÈËÔ±¶ÔÄ£Ð͸´ÔӶȽøÐÐÁËÕýÔò»¯£¬ÎÒÃÇÉèÖÃÁ˵Ħǣ½0¡£½á¹ûÏÔʾ£¬Ä£ÐͳߴçËæ×ŦǵÄÔö´ó¶ø±äС¡£

2.ǨÒƵ½?ImageNet

ΪÁË̽Ë÷ʵÑéÖÐËÑË÷µ½µÄµ¥ÔªÔÚ ImageNet ÉϵÄǨÒÆÄÜÁ¦£¬ÎÒÃǽ«ËÑË÷µ½µÄµ¥Ôª¶ÑµþÁË 14 ´Î¡£ÖµµÃ×¢ÒâµÄÊÇ£¬NASP ¿ÉÒÔÓÃ×îÏȽøµÄ·½·¨ÊµÏÖ¾ºÕùÐÔ²âÊÔÎó²î¡£

RNN µÄ¼Ü¹¹ËÑË÷

1. ÔÚ PTB ÉÏËÑË÷µ¥Ôª

¸ù¾Ý DARTS µÄÉèÖ㬵ݹ鵥ԪÓÉ N=12 ¸ö½Úµã×é³É£»µÚÒ»¸öÖмä½Úµãͨ¹ýÏßÐԱ任Á½¸öÊäÈë½Úµã£¬½«½á¹ûÏà¼Ó£¬È»ºóͨ¹ý tanh ¼¤»îº¯ÊýµÃµ½£»µÚÒ»¸öÖмä½ÚµãµÄ½á¹ûӦΪÓɼ¤»îº¯Êýת»»¶ø³É¡£

ÔÚËÑË÷¹ý³ÌÖУ¬ÎÒÃÇѵÁ·ÁËÒ»¸öÐòÁ㤶ÈΪ 35 µÄ 50 ¸ö½×¶ÎµÄСÍøÂ硣ΪÁËÆÀ¹ÀÔÚ PTB ÉÏËÑË÷µ½µ¥ÔªµÄÐÔÄÜ£¬Ê¹ÓÃËù·¢Ïֵĵ¥Ôª¶Ôµ¥²ãµÝ¹éÍøÂç½øÐÐ×î¶à 8000 ¸ö½×¶ÎµÄѵÁ·£¬Ö±µ½ÓëÅú´¦Àí´óС 64 ÊÕÁ²¡£ÊµÑé½á¹ûÏÔʾ£¬DARTS µÄ¶þ½×±ÈÒ»½×ÂýµÃ¶à£¬NASP ²»½ö±È DARTS ¿ìµÃ¶à£¬¶øÇÒ¿ÉÒÔ´ïµ½ÓëÆäËû×îÏȽøµÄ·½·¨Ï൱µÄ²âÊÔÐÔÄÜ¡£

Ä£Ðͼò»¯²âÊÔ

1. ¶Ô±È DARTS

ʵÑé¸ø³öÁ˸üÐÂÍøÂç²ÎÊý£¨¼´ w£©ºÍ¼Ü¹¹£¨¼´ A£©µÄÏêϸ±È½Ï¡£ÔÚÏàͬµÄËÑË÷ʱ¼äÄÚ£¬NASP ¿ÉÒÔ»ñµÃ¸ü¸ßµÄ¾«¶È£¬ÇÒ NASP ÔÚÏàͬµÄ¾«¶ÈÏ»¨·Ñ¸üÉÙµÄʱ¼ä¡£Õâ½øÒ»²½ÑéÖ¤ÁË NASP ±È DARTS ЧÂʸü¸ß¡£

2. ÓëͬÆÚ¹¤×÷±È½Ï

ʵÑéÖÐÒ²¼ÓÈëÁËÓëͬÆÚ¹¤×÷µÄ±È½Ï¡£ASAP Óë BayesNAS ½« NAS ×÷Ϊһ¸öÍøÂçÐÞ¼ôÎÊÌ⣬¸Ã¹¤×÷ɾ³ýÁËÔÚËÑË÷¹ý³ÌÖÐÎÞЧµÄ²Ù×÷¡£ASNG ºÍ GDAS ¶¼¶ÔËÑË÷¿Õ¼ä½øÐÐËæ»úËɳڣ¬Çø±ðÔÚÓÚ ASNG ʹÓÃ×ÔÈ»ÌݶÈϽµ½øÐÐÓÅ»¯£¬¶ø GDAS ʹÓà Gumbel-Max ¼¼ÇɽøÐÐÌݶÈϽµ¡£´Ë´ÎʵÑ齫 NASP ÓëÕâЩ¹¤×÷½øÐбȽϣ¬ÊµÑé±íÃ÷£¬NASP ¸üÓÐЧ£¬¿ÉÔÚ CNN ÈÎÎñÉÏÌṩ¸üºÃµÄÐÔÄÜ¡£´ËÍ⣬NASP »¹¿ÉÒÔÓ¦ÓÃÓÚ RNN¡£

[1]. Liu, H.; Simonyan, K.; and Yang, Y. DARTS: Differentiable architecture search. In ICLR 2019 [2]. Parikh, N., and Boyd, S. Proximal algorithms. Foundations and Trends in Optimization 2013

  • ·¢±íÓÚ:
  • Ô­ÎÄÁ´½Ó£ºhttp://news.51cto.com/art/202002/610422.htm
  • ÈçÓÐÇÖȨ£¬ÇëÁªÏµ cloudcommunity@tencent.com ɾ³ý¡£

Ïà¹Ø¿ìѶ

ɨÂë

Ìí¼ÓÕ¾³¤ ½ø½»Á÷Ⱥ

ÁìȡרÊô 10ÔªÎÞÃż÷ȯ

˽Ïí×îР¼¼Êõ¸É»õ

ɨÂë¼ÓÈ뿪·¢ÕßÉçȺ
Áìȯ
http://www.vxiaotou.com