Journal of Agricultural Big Data ›› 2019, Vol. 1 ›› Issue (2): 114-120.doi: 10.19788/j.issn.2096-6369.190210
Lei Wu1,Xiaohe Liang1,Jisiguleng Wu1,Rui Wang2,*()
Received:
2019-04-05
Online:
2019-06-26
Published:
2019-08-21
Contact:
Rui Wang
E-mail:13811805186@163.com
CLC Number:
Lei Wu,Xiaohe Liang,Jisiguleng Wu,Rui Wang. Method and Agricultural Empirical Study of Query Reformulation Based on Word Embedding[J].Journal of Agricultural Big Data, 2019, 1(2): 114-120.
Table 1
The different of retrieval words"
序号 | 检索式 | 文章数 | 取舍原因 |
---|---|---|---|
1.1 | TS= (big data OR large data) | 565792 | 用于选择大数据集 |
1.2 | TS= (omics big data OR omics large data OR big data OR large data) | 565792 | 说明 TS=(big data OR large data)包含TS=( omics big data OR omics large data) |
1.3 | TS= (omics big data OR omics large data) | 606 | 用于选择小数据集 |
1.4 | TS= (big data OR large data) AND TS= (omics) | 606 | 同1.3 |
1.5 | TS= (big data OR large data) AND TS= (multi-omics) | 58 | 选择的数据集过于严格 |
2.1 | TS= (function* gene* mining) | 5418 | 选择的数据集过于严格 |
2.2 | TS= (function* gene* OR gene* mining) | 1170759 | 用于选择小数据集和大数据集 |
2.3 | TS= (function* gene* mining OR function* gene* ORgen e* mi ni n g) | 1170759 | 说明 TS=( function* gene* OR gene* mining)包括 TS=( function* gene* mining) |
2.4 | TS= (function* gene* OR gene* mining) NOT TS= (function* gene* mining) TS= (assisted breeding techni* OR breeding techni* OR | 1165341 | 说明 2.2 包括 2.1 |
3.1 | assisted reproductive techni* OR reproductive | 16232 | 选择的数据集过于严格 |
techni*) | |||
3.2 | TS=(breeding techni* OR reproductive techni*) | 16232 | 同3.1 |
3.3 | TS=(breeding OR reproductive) | 305575 | 用于选择小数据集和大数据集 |
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