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青莲、秦涛、田遥,你们也先走。
阴霾冰冷、罪恶横生的现代化都市,勤奋努力的保险业务员马克(吴彦祖饰)多年来都和精神分裂的母亲(惠英红饰)相依为命。为了帮母亲搬入最好的养老院,马克努力赚钱,甚至不惜作伪证保护自己的地位。然而一失足成千古恨,他作伪证的事情被某个神秘之人获知,不仅账户中的存款盗取,还必须按照对方电话中的指示行事。在这一过程中,马克重逢在银行工作的高中时代初恋女友洁希(姚晨饰)。谁知洁希也被神秘人算入迷局,她和马克的命运紧紧捆绑在一起。在此之后,马克还惹上了雄霸一方的黑帮老大泰哥(任达华饰)。神秘人仿佛高高在上、算无遗策的神明,洋洋得意操控着所有人的命运……
某地产集团高层许德才被迫出逃。与其有暧昧关系的女老板赵冰要求他背黑锅,给他两个选择:一是逃跑,二是死。
胡光,广东人,海匪出身,年三十四,此人本是海寇许栋爱将,后许朝光弑父夺权,胡光遂投徽王府,任舰长两年有余。
  从多夫随劳瑞先生一起来到巴黎,露茜找到了失散十八年的父亲玛内特医生,由此揭开了一段关于父亲的秘密。十八前,父亲在法国做医生。一次,父亲在埃佛蒙德贵族庄园发现了贵族残酷迫害法国民众致死的秘密。出于人道,玛内特医生答应为最后一个幸免的小姑娘寻找生的机会。然而,玛内特医生为此而遭牢狱之灾,一关就是十八年。
Prunus dulcis almond
一份从天而降的遗产打破了赵小宇简单而快乐的生活,她的生活轨迹发生了天翻地覆的变化:特殊的身份招来了至爱亲朋的非议和嫉妒,一群血缘相关的亲人为了遗产猜忌争斗,相恋多年的男友成了别人的丈夫,萍水相逢的遗嘱执行人却和自己成为了合同夫妻。谁也不明白儿孙满堂的爷爷为什么会把所有遗产留给她一个人。赵小宇用真诚和宽容担当起了责任,让四分五裂的一家人重聚,让久违的亲情和温暖回归,她完成了爷爷赋予的使命。
Instead of the eldest man, he entered the society early and achieved success, and took the role of the eldest man in the family. Because of the parents' preference, he lacked the care of his parents when he was young, so he was in a competitive relationship with his brother. As a result, it has become the main reason that affects family disputes. In order to get the care and affirmation of his parents, he longed for success from an early age. From an early age, his nickname was money, and he made money just like his nickname. Now he is engaged in various businesses, and the accumulated cash of the characters' names. As the name implies, (her name means domestic helper in Korean) acts as a domestic helper at home. Although she is the second daughter-in-law, she bears the responsibility and obligation of the eldest daughter-in-law. She feels inferior in her husband's family because her family is poor. He is always jittery at the faces of his husband and mother-in-law. He is a daughter who still bears hardships because of her mother's family after getting married, and he is also a figure who causes entanglements between daughters-in-law. Because of the poor family environment, she started her family plan after graduating from the night-time women's business school. Although she had a brother on it, she actually played the role of head of the family.
整个童话故事围绕着两件稀有珍宝“金箍棒”和《西游记》手稿展开。在遥远的海中央有一个神秘的小岛——毛毛岛,传说是孙悟空的后代毛毛族居住的地方,而牛魔王的后代力大王的出现打破了毛毛岛上的宁静。力大王派遣其手下五行大王抓走了毛毛后在内的年轻毛族成员作为人质威胁毛毛族交出金箍棒。为了营救同伴及拯救世界,勇敢毛毛王开始了他的冒险旅程,带着毛爷送的一套“72张变装卡片”和“宝贝猴”并在结识少年科学家朱朱及力大无穷的小女孩桃淘之后正式踏上了旅程。
"No, it's all sent at home." Huang Jinbo told him, "Go out by yourself and stop that. Be careful."
幸福人妻爱丽丝,丈夫疼爱、孩子可爱。才在晚餐聚会向众好友放闪,隔日购物刷卡失败,才惊觉一生积蓄已被枕边人败光,抛下她与稚儿自生自灭,连唯一遮风避雨的公寓也将失去!爱丽丝翻箱倒柜,发现丈夫将钱全花在高级应召女郎。循着线索,她来到招待所想问个究竟,未想成了活命生机,意外开启职场第二春。然而性情单纯的她,如何面对男人们的各式需索?况且孩子还得时时看顾。爱丽丝最后能否「过关斩将」,重新拿回人生的主导权?旅居巴黎的澳大利亚女性导演乔瑟芬·马克拉斯首部编导长片作品。同时身为制片的她,自己的公寓与儿子都成为片中要角,花了两年半才完成视频,过程没人拿到酬劳。因为没有资金起用明星,让首度担纲女主角的埃米莉皮波尼尔有机会大展惊人演技。全片优雅地平衡人性中的光与影,悲而不伤,时时闪现豁达幽默的智慧光芒。
季棠棠的母亲是上一代路铃掌铃人盛清屏,被父亲秦守成欺骗感情,逃离盛家,生下盛夏后被秦家害死。作为下一任路铃掌铃人的季棠棠在母亲被杀害后独自踏上旅途,棠棠拥有着不为人所知的神奇超能力,她一路调查与冒险。在途中结识了男主角岳峰,与岳峰一路斗嘴却又惺惺相惜,并在岳峰等人的帮助下,一步一步揭开盛家、秦家、石家三大家族间百年恩怨的故事。

化学教师Walter White人到中年患上晚期肺癌,原本为家人日后生活打算,走上制毒贩毒的不归路。然而一入毒门深似海,打响名号之后,黑道同行和白道对手纷纷盯上了横空出世的“海森堡“,而Walter和帮手Jesse便在看似荒诞又命悬一线的亡命生涯中体会着非同寻常的心路历程。
英布迟疑片刻道:那好,小心些便是了。
本片讲述21世纪初期,美国爆发内战,独裁政权推翻民主制度,自号国会监察。各义士奋起抗暴,全国烽烟四起,各地更严密实施军管。唯一的自由城市钢港,市内龙蛇混杂。火凤凰在此经营酒巴,兼职捕快与一批抗暴分子并肩全战。艾素是一名自由战士,与火凤凰曾有过一段恋情,帮助女科学家戴博士逃离华盛顿,并与她一起逃到钢港,在走投无路之下求助火凤凰,相处之下二人发生微妙的感情。

魏铁急忙跑进来,抱拳道:王爷。
林为零,女,24岁。恒盛集团创始人林甚鹏独女,但其实是母亲和环球集团总裁乔力所生。林为零本性善良,温柔怡静,因为家庭遭受巨变,性格后续变成外强内柔,脸上常挂着不同性格的伪装。胡骞予,男,26岁。恒盛创始人之一,胡欣之子,父亲张怀年。表面霸道,实则温暖深情。情商超高,但又偶有黑色幽默。他深爱着林为零,愿意牺牲自己的生命去化解她的仇恨。
  姚钧墨(小说原名姚谦墨),男,26岁。恒盛第二大股东姚亦琛唯一的儿子,但却是私生子,和姚瑶是同父异母的兄妹。为了得到父亲的承认,姚钧墨准备重振姚氏企业夺走恒盛集团。用尽一切对抗胡骞予、假戏真做爱上林为零,越陷越深的他最终走上歧途。
It is easy to see that OvR only needs to train N classifiers, while OvO needs to train N (N-1)/2 classifiers, so the storage overhead and test time overhead of OvO are usually larger than OvR. However, in training, each classifier of OVR uses all training samples, while each classifier of OVO only uses samples of two classes. Therefore, when there are many classes, the training time cost of OVO is usually smaller than that of OVR. As for the prediction performance, it depends on the specific data distribution, which is similar in most cases.