| 5 | 1/1 | 返回列表 |
| 查看: 752 | 回復(fù): 3 | |||
| 當(dāng)前只顯示滿足指定條件的回帖,點(diǎn)擊這里查看本話題的所有回帖 | |||
time88木蟲之王 (文學(xué)泰斗)
|
[求助]
請(qǐng)查一下論文被SCI和EI檢索的情況
|
||
|
請(qǐng)給我查一下2012發(fā)表論文被SCI和EI檢索的情況。作者為yuan lichi,或 yuan li-chi, 或 lichi yuan。謝謝! |
木蟲 (著名寫手)
|
SCI 檢索情況(好像2012只有兩篇) 標(biāo)題: Vari-gram language model based on word clustering 作者: Yuan Li-chi 來源出版物: JOURNAL OF CENTRAL SOUTH UNIVERSITY OF TECHNOLOGY 卷: 19 期: 4 頁(yè): 1057-1062 DOI: 10.1007/s11771-012-1109-z 出版年: APR 2012 被引頻次: 0 (來自 Web of Science) Vari-gram language model based on word clustering 作者: Yuan, LC (Yuan Li-chi)1,2 來源出版物: JOURNAL OF CENTRAL SOUTH UNIVERSITY OF TECHNOLOGY 卷: 19 期: 4 頁(yè): 1057-1062 DOI: 10.1007/s11771-012-1109-z 出版年: APR 2012 被引頻次: 0 (來自 Web of Science) 引用的參考文獻(xiàn): 18 [ 查看 Related Records ] 引證關(guān)系圖 摘要: Category-based statistic language model is an important method to solve the problem of sparse data. But there are two bottlenecks: 1) The problem of word clustering. It is hard to find a suitable clustering method with good performance and less computation. 2) Class-based method always loses the prediction ability to adapt the text in different domains. In order to solve above problems, a definition of word similarity by utilizing mutual information was presented. Based on word similarity, the definition of word set similarity was given. Experiments show that word clustering algorithm based on similarity is better than conventional greedy clustering method in speed and performance, and the perplexity is reduced from 283 to 218. At the same time, an absolute weighted difference method was presented and was used to construct vari-gram language model which has good prediction ability. The perplexity of vari-gram model is reduced from 234.65 to 219.14 on Chinese corpora, and is reduced from 195.56 to 184.25 on English corpora compared with category-based model. 入藏號(hào): WOS:000302249800026 文獻(xiàn)類型: Article 語種: English 作者關(guān)鍵詞: word similarity; word clustering; statistical language model; vari-gram language model 通訊作者地址: Yuan, LC (通訊作者),Jiangxi Univ Finance & Econ, Sch Informat Technol, Nanchang 330013, Peoples R China. 地址: 1. Jiangxi Univ Finance & Econ, Sch Informat Technol, Nanchang 330013, Peoples R China 2. Cent S Univ, Sch Informat Sci & Engn, Changsha 410083, Peoples R China 電子郵件地址: yuanlichi@sohu.com 標(biāo)題: Improved hidden Markov model for speech recognition and POS tagging 作者: Yuan Li-chi 來源出版物: JOURNAL OF CENTRAL SOUTH UNIVERSITY OF TECHNOLOGY 卷: 19 期: 2 頁(yè): 511-516 DOI: 10.1007/s11771-012-1033-2 出版年: FEB 2012 被引頻次: 0 (來自 Web of Science) Improved hidden Markov model for speech recognition and POS tagging 作者: Yuan, LC (Yuan Li-chi)1,2 來源出版物: JOURNAL OF CENTRAL SOUTH UNIVERSITY OF TECHNOLOGY 卷: 19 期: 2 頁(yè): 511-516 DOI: 10.1007/s11771-012-1033-2 出版年: FEB 2012 被引頻次: 0 (來自 Web of Science) 引用的參考文獻(xiàn): 26 [ 查看 Related Records ] 引證關(guān)系圖 摘要: In order to overcome defects of the classical hidden Markov model (HMM), Markov family model (MFM), a new statistical model was proposed. Markov family model was applied to speech recognition and natural language processing. The speaker independently continuous speech recognition experiments and the part-of-speech tagging experiments show that Markov family model has higher performance than hidden Markov model. The precision is enhanced from 94.642% to 96.214% in the part-of-speech tagging experiments, and the work rate is reduced by 11.9% in the speech recognition experiments with respect to HMM baseline system. 入藏號(hào): WOS:000299928600030 文獻(xiàn)類型: Article 語種: English 作者關(guān)鍵詞: hidden Markov model; Markov family model; speech recognition; part-of-speech tagging 通訊作者地址: Yuan, LC (通訊作者),Jiangxi Univ Finance & Econ, Sch Informat Technol, Nanchang 330013, Peoples R China. 地址: 1. Jiangxi Univ Finance & Econ, Sch Informat Technol, Nanchang 330013, Peoples R China 2. Cent S Univ, Sch Informat Sci & Engn, Changsha 410083, Peoples R China 電子郵件地址: yuanlichi@sohu.com |
|
牛,瞅著眼紅 1. A lexicalized syntactic parsing model based on valence structure Yuan, Li-Chi (Jiangxi Key Laboratory of Date and Knowledge Engineering, School of Information Technology, Jiangxi University of Finance and Economics, Nanchang 330013, China) Source: Zhongnan Daxue Xuebao (Ziran Kexue Ban)/Journal of Central South University (Science and Technology), v 43, n 5, p 1808-1813, May 2012 Language: Chinese Database: Compendex Abstract | Detailed | | | FULL TEXT LINKS 2. Vari-gram language model based on word clustering Yuan, Li-Chi (School of Information Technology, Jiangxi University of Finance and Economics, Nanchang 330013, China) Source: Journal of Central South University of Technology (English Edition), v 19, n 4, p 1057-1062, April 2012 Database: Compendex Abstract | Detailed | | | | FULL TEXT LINKS 3. A part-of-speech tagging method based on improved hidden Markov model Yuan, Li-Chi (Jiangxi Key Lab. of Data and Knowledge Engineering, School of Information Technology, Jiangxi University of Finance and Economics, Nanchang 330013, China) Source: Zhongnan Daxue Xuebao (Ziran Kexue Ban)/Journal of Central South University (Science and Technology), v 43, n 8, p 3053-3057, August 2012 Language: Chinese Database: Compendex Abstract | Detailed | | | FULL TEXT LINKS 4. Statistical parsing with linguistic features Yuan, Li-Chi (School of Information Technology, Jiangxi University of Finance and Economics, Nanchang 330013, China) Source: Zhongnan Daxue Xuebao (Ziran Kexue Ban)/Journal of Central South University (Science and Technology), v 43, n 3, p 986-991, March 2012 Language: Chinese Database: Compendex Abstract | Detailed | | | FULL TEXT LINKS 5. Improved hidden Markov model for speech recognition and POS tagging Yuan, Li-Chi (School of Information Technology, Jiangxi University of Finance and Economics, Nanchang 330013, China) Source: Journal of Central South University of Technology (English Edition), v 19, n 2, p 511-516, February 2012 Database: Compendex Abstract | Detailed | | | | FULL TEXT LINKS |

禁蟲 (初入文壇)
|
本帖內(nèi)容被屏蔽 |
| 最具人氣熱帖推薦 [查看全部] | 作者 | 回/看 | 最后發(fā)表 | |
|---|---|---|---|---|
|
[考研] 317分 一志愿南理工材料工程 本科湖工大 求調(diào)劑 +10 | 芋泥小鈴鐺 2026-03-28 | 10/500 |
|
|---|---|---|---|---|
|
[考研] 296求調(diào)劑 +6 | 彼岸t 2026-03-29 | 6/300 |
|
|
[考研] 一志愿南昌大學(xué)324求調(diào)劑 +5 | hanamiko 2026-03-29 | 5/250 |
|
|
[考研] 349求調(diào)劑 +6 | 李木子啊哈哈 2026-03-25 | 6/300 |
|
|
[考研] 調(diào)劑求院校招收 +6 | 鶴鯨鴿 2026-03-28 | 6/300 |
|
|
[考研] 295求調(diào)劑 +4 | wei-5 2026-03-26 | 4/200 |
|
|
[考研] 學(xué)碩274求調(diào)劑 +9 | Li李魚 2026-03-26 | 9/450 |
|
|
[考研] 316求調(diào)劑 +7 | 江辭666 2026-03-26 | 7/350 |
|
|
[考研] 322求調(diào)劑 +7 | 宋明欣 2026-03-27 | 7/350 |
|
|
[考研] 085701求調(diào)劑初試286分 +4 | secret0328 2026-03-28 | 4/200 |
|
|
[考研] 304求調(diào)劑 +6 | 曼殊2266 2026-03-27 | 6/300 |
|
|
[考研] 299求調(diào)劑 +7 | 嗯嗯嗯嗯2 2026-03-27 | 7/350 |
|
|
[考研] 0856,材料與化工321分求調(diào)劑 +12 | 大饞小子 2026-03-27 | 13/650 |
|
|
[考研] 考研調(diào)劑 +10 | 呼呼?~+123456 2026-03-24 | 10/500 |
|
|
[考研] 315調(diào)劑 +4 | 0860求調(diào)劑 2026-03-26 | 5/250 |
|
|
[考研] 機(jī)械學(xué)碩310分,數(shù)一英一,一志愿211本科雙非找調(diào)劑信息 +3 | @357 2026-03-25 | 3/150 |
|
|
[考研] 材料科學(xué)與工程 317求調(diào)劑 +4 | JKSOIID 2026-03-26 | 4/200 |
|
|
[考研] 一志愿南航 335分 | 0856材料化工 | GPA 4.07 | 有科研經(jīng)歷 +6 | cccchenso 2026-03-23 | 6/300 |
|
|
[考研] 285求調(diào)劑 +3 | AZMK 2026-03-24 | 3/150 |
|
|
[考研] 接收2026碩士調(diào)劑(學(xué)碩+專碩) +4 | allen-yin 2026-03-23 | 6/300 |
|