复盘 Monad Card 活动:一场面向加密推特的“反内卷”实验

深潮2025-08-26 tarihinde yayınlandı2025-08-27 tarihinde güncellendi

去中心化提名,让 Monad 公平起步。

作者:Happy

编译:深潮TechFlow

我认为,许多 TGE 前的团队常犯的一个错误,就是过度依赖 Kaito boards 或 Zealy 活动等增长手段来获取关注度。

过去我对此一直持批评态度,坦率讲,我觉得这些其实是负作用更大。

凡是被宣传的东西,都会被操控。凡是被衡量的东西,都会被滥用。

你吸引来的往往是最糟糕的唯利是图的用户,并会阻碍自然发帖,因为参与所带来的声誉损害往往超过潜在的回报。

另一方面,Monad Cards 采取了相反的方式。

它们会分发给那些在更广泛加密领域中建立影响力的 CT 用户,而不是专门发帖讨论 Monad 的帖子。

这之所以有效,有几个原因:

  • 要长期保持社交影响力,比反复发某一个项目的内容更难作假;

  • 让成功的 CT 用户在不“出卖灵魂”的情况下,也能真正拥有一定的利益绑定(或许);

  • 让他们因自己对加密领域的更广泛贡献而感到真正被奖励和认可;

  • 激励他们主动发关于 Monad 的内容,以展示自己的相关性;

  • 允许他们提名那些可能被忽视的人。

在我看来,最后一点最为重要。

通过允许这些用户去提名他人,你赋予了他们权力、信任与责任。

从长远看,这也有助于避免社交空投中常见的一类 FUD ——“这都是分给内部人的。”

说实话,这种批评在历史上往往是有道理的,即使并非出于主观意图。

人类总是容易受到无意识偏见的影响,而空投的标准通常是保密的,并且由少数人掌控。这样几乎不可避免地会让奖励最终落到团队“最喜欢”的人手中。

但在这里,情况并非如此。通过将决策过程去中心化到整个 CT,你就消除了大部分这种偏见。

如果你在这个领域活跃了一段时间,即使你自己发帖不多、社交影响力不大,你很可能也在某个群聊里认识一些有影响力的人。所以如果你得不到提名,这更多是你自身能力的问题,而不是可以归咎于团队的事情。

而且很明显,团队也努力把这种理念嵌入到自己的社区中。

他们推出了识别应用(recogniser app),用户只需回答一个问题的“是/否”:你是否认识这位社区成员?

这是在消除决策过程中的偏见、增加更多去中心化数据点的又一步。

在加密圈外的人看来,这些或许只是些微不足道的小事,但我认为它们对一条链的起源故事有着超乎寻常的影响。

在我看来,加密世界里,“公平”发行的认知,是未来能否获得文化成功的最大预测因素。

毕竟,这个行业的文化正是源于那些最公平的发行——比特币、以太坊,以及更近的 Hyperliquid。

当然,这些措施本身并不能解决 Monad 的所有问题,但它们在很大程度上回应了 CT 最大的抱怨——相比其他在更宽松监管环境下融资的新链,普通用户想在 Monad 上获得“利益绑定”的机会实在太难。

没有任何活动能让所有人满意,但这次活动却让 Monad 的口碑发生了转变,为其未来的发展奠定了更坚实的基础。

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