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이화여자대학교 아시아여성학센터 Asian Journal of Women's Studies Asian Journal of Women's Studies Vol.25 No.1
발행연도
2019.1
수록면
2 - 29 (28page)

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In order to understand why women tend to be under-nominated even though they are more likely to be elected compared to men in Taiwan, this study focuses on the nomination systems of two major political parties. The country provides a critical case of inter-party and intra-party comparison for women’s nomination, as the two major parties diverge in their practice of candidate selection. Further, the electoral reforms from the SNTV (Single Non-Transferable Vote) system to the SMD (Single-Member District) system have led parties to alter their strategies in selecting women candidates. With the nomination dataset compiled over the past 20 years, this study finds that more centralized nomination is more conducive to women’s candidacy, even under different electoral systems. Under the old SNTV system, the more centralized KMT (Kuomintang) nominated more women candidates than did the decentralized DPP (Democratic Progressive Party). Under the new SMD system, women’s representation as a whole actually increased in Taiwan, which runs contrary to the general expectation, compared to the multimember-district system and so the SMD tends to inhibit women’s representation. The growing centralization in the major parties after the electoral rule changed to the new system, has enhanced women’s candidacies, but the higher male incumbent advantage is a hurdle still to be overcome in the long term. This study argues that although electoral rules have altered the parameters of party competition, party nomination are critical factors for explaining changing women’s representation.

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