Star Awards for London Choco Roll Happiness Award

The Star Awards for London Choco Roll Happiness Award is an award presented annually at the Star Awards, a ceremony that was established in 1994. It is jointly presented by Mediacorp and London Choco Roll, a presenter of the awards since 2013.

Star Awards for
London Choco Roll Happiness Award
London Choco Roll 最佳开心果奖
Current: Star Awards 2017
Awarded forMost Popular Drama Series Character by an Actor or Actress
CountrySingapore
Presented byMediacorp
London Choco Roll
First awarded2014
Currently held byIan Fang 方伟杰,
The Dream Job 绝世好工 (2017)

The category was introduced in 2014, at the 20th Star Awards ceremony; Xu Bin received the award for his role in The Recruit Diaries and it is given in honour of a Mediacorp actor or actress who portrayed a drama series character that is deemed as the most popular among the television audience. The nominees are determined by a team of judges employed by Mediacorp; winners are selected by a majority vote from the public via online voting.

Since its inception, the award has been given to four artistes. Ian Fang was the most recent winner in this category for his role in The Dream Job. Since the ceremony held in 2017, Romeo Tan has been nominated on three occasions, more than any other artiste. Shaun Chen and Julie Tan hold the record for the most nominations without a win, with two.

The award was not presented in 2018 & 2019, as London Choco Roll is not the presenter.

Recipients

Year Actor Role (title) Nominees
2014 Xu Bin 徐彬 Qin Sheng 秦胜
(The Recruit Diaries 阿兵新传)
2015 Rebecca Lim 林慧玲 Zhang Xueqin 张雪芹
(Yes We Can! 我们一定行!)
2016 Romeo Tan 陈罗密欧 Zhong Yiming 钟一鸣
(The Dream Makers II 志在四方 II)
2017 Ian Fang 方伟杰 Lin Zijie 林梓杰
(The Dream Job 绝世好工)

^[I] Each year is linked to the article about the Star Awards held that year.

Category facts

Most nominations
Rank 1st 2nd
Artiste Romeo Tan
Ian Fang
Shaun Chen
Julie Tan
Xu Bin
Total nominations 3 nominations 2 nominations

References

    This article is issued from Wikipedia. The text is licensed under Creative Commons - Attribution - Sharealike. Additional terms may apply for the media files.