在全国打击在线赌博网站之际,新加坡禁止了 Polymarket

tokeninsight_newsPublicado a 2025-01-13Actualizado a 2025-01-13

Resumen

新加坡限制对 Polymarket 的访问,作为对未获许可在线赌博的全国打击的一部分,自年初以来,已有超过 3,800 个网站被关闭。

据 The Block 报道: 新加坡限制对 Polymarket 的访问,作为对未获许可在线赌博的全国打击的一部分,自年初以来,已有超过 3,800 个网站被关闭。


新加坡成为最新一个限制访问预测市场 Polymarket 的国际管辖区,加入了美国、法国、台湾等国。新加坡用户首次在 1 月 12 日报告无法访问该网站。用户在社交媒体平台 X 上发布的截图显示,新加坡博彩管理局(GRA)在网站首页上发布了通知,警告用户 Polymarket 被视为非法,违反者可能面临 10,000 新元罚款、6 个月监禁或二者兼施。


通知指出,想要在线投注的新加坡用户必须使用新加坡 Pools,这是新加坡唯一的持牌在线赌博提供商,为国有彩票子公司。


这一新限制是在全国范围内打击未获许可的在线赌博提供商之后实施的,截至去年 12 月 31 日,已关闭超过 3,800 个网站,封锁交易额达 3700 万美元,新加坡内政部长表示。GRA 和 Polymarket 尚未立即回应置评请求。


随着 Polymarket 在 2024 年总统选举期间的受欢迎程度飙升,全球其他地区也对其合法性进行了更严格的审查。台湾在 2024 年限制了对 Polymarket 的访问,甚至起诉了一名在该网站上下注约 530 美元政治选举的男子,具体情况见《自由时报》。其他限制 Polymarket 的管辖区包括法国和美国,而其服务条款禁止来自玻利维亚、委内瑞拉、伊朗等国的用户使用该平台。

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