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Feng Gu

Researcher at University of Hong Kong

Publications -  18
Citations -  246

Feng Gu is an academic researcher from University of Hong Kong. The author has contributed to research in topics: Mismatch negativity & Lexical decision task. The author has an hindex of 8, co-authored 14 publications receiving 179 citations. Previous affiliations of Feng Gu include University of Science and Technology of China & Minzu University of China.

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Left hemisphere lateralization for lexical and acoustic pitch processing in Cantonese speakers as revealed by mismatch negativity

TL;DR: The mismatch negativity elicited by lexical pitch contrast was lateralized to the left hemisphere, which is consistent with the pattern of function-dependent brain asymmetry (i.e., left hemisphere lateralization for speech processing) in nontonal language speakers.
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Memory traces for tonal language words revealed by auditory event-related potentials.

TL;DR: This study presents native Mandarin Chinese speakers with a sequence of spoken syllables as standards and disyllables as deviants in a passive oddball paradigm and indicates an activation of memory traces for tonal language words.
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Is the Excessive Use of Microblogs an Internet Addiction? Developing a Scale for Assessing the Excessive Use of Microblogs in Chinese College Students

TL;DR: It is found that females have significantly higher MeUS scores than males, and that total MEUS scores positively correlated with scores from “self-disclosure” and “real social interaction” scales, suggesting that microblog overuse may not correspond exactly to the state of Internet addiction.
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On the early neural perceptual integrality of tones and vowels

TL;DR: In this paper, the authors adopted the MMN additivity approach to examine the pre-attentive perceptual integration of vowels and tones and found that the double-MMNs were significantly smaller in amplitude than the sum of single feature MMNs.