Difference between revisions of "ANLY482 AY2016-17 T2 Group7: Project Overview"
Yx.lim.2013 (talk | contribs) m |
Yx.lim.2013 (talk | contribs) m (content refinement) |
||
Line 24: | Line 24: | ||
<!-- Start Information --> | <!-- Start Information --> | ||
− | <div style="background:#307FBB; line-height:0.3em; font-family:sans-serif; font-size:120%; border-left:#bbdefb solid 15px;"><div style="border-left:#fff solid 5px; padding:15px;"><font color="#fff"><strong> | + | <div style="background:#307FBB; line-height:0.3em; font-family:sans-serif; font-size:120%; border-left:#bbdefb solid 15px;"><div style="border-left:#fff solid 5px; padding:15px;"><font color="#fff"><strong>Introduction</strong></font></div></div> |
<div style="color:#212121;"> | <div style="color:#212121;"> | ||
− | The | + | The project sponsor, Singapore Management University’s Library which consists of the Li Ka Shing Library and the Kwa Geok Choo Law Library, has an electronic search platform which offers a wide array of research resources through the EZproxy server. However, the organization requires more valuable insights about the students’ access to the Library’s online database through the EZproxy server. While the team of librarians had an exhaustive repository of EZproxy log data files, they lacked the time and resources to process the data for analysis to better optimize the User Experience. This paper thus aims to process the EZproxy data on a single platform developed in Python 3.0.1 using Jupyter Notebook so that further analysis can be performed independently by the SMU library team with new data in the future. The processed and cleaned data was then tested against 2 test cases, namely the Data Analysis of the search count and the Text Analytics for 3 databases namely Euromonitor, Lawnet and Marketline Advantage (In Appendix D). |
− | |||
− | |||
</div> | </div> | ||
− | <div style="background:#307FBB; line-height:0.3em; font-family:sans-serif; font-size:120%; border-left:#bbdefb solid 15px;"><div style="border-left:#fff solid 5px; padding:15px;"><font color="#fff"><strong> | + | <div style="background:#307FBB; line-height:0.3em; font-family:sans-serif; font-size:120%; border-left:#bbdefb solid 15px;"><div style="border-left:#fff solid 5px; padding:15px;"><font color="#fff"><strong>Motivation</strong></font></div></div> |
<div style="color:#212121;"> | <div style="color:#212121;"> | ||
− | + | Currently, there is no single platform where EZproxy log data can be processed into proper data frames or allow topics to be extracted. We felt that this could be a great opportunity as the log data files could be extracted and analyzed to provide valuable insights for the SMU library team so that the electronic resources database can be better optimized for its users. This motivation originates and resonates deeply with us as students who are active users of the SMU library electronic resources database. We personally use the electronic resources databases frequently to research for academic projects and often faced problems in finding the best and most optimized results on the most appropriate platform. Thus, for this project, we believe that preparing and processing the raw log data onto a single platform, coupled with formulating possible directions for Data Analysis and Textual Analytics, could allow the SMU library team to work more efficiently on the data collected. This in turn could possibly add insights for future projects in optimizing the electronic resources database for current and future students of SMU. | |
− | |||
− | |||
− | |||
</div> | </div> | ||
− | <div style="background:#307FBB; line-height:0.3em; font-family:sans-serif; font-size:120%; border-left:#bbdefb solid 15px;"><div style="border-left:#fff solid 5px; padding:15px;"><font color="#fff"><strong> | + | <div style="background:#307FBB; line-height:0.3em; font-family:sans-serif; font-size:120%; border-left:#bbdefb solid 15px;"><div style="border-left:#fff solid 5px; padding:15px;"><font color="#fff"><strong>Objectives</strong></font></div></div> |
<div style="color:#212121;"> | <div style="color:#212121;"> | ||
− | + | This project aims to create a single platform which enables the pre-processing of EZproxy raw log data and extraction of search queries. This is done on Jupyter Notebook using Python 3.0.1 to offer a ‘plug & play’ solution for processing of future data collected on EZproxy by the SMU library team. After which, the processed data would be tested against 2 test cases which covers the insights on search count and textual analytics on 2 electronic databases: Euromonitor and Lawnet. | |
− | |||
− | |||
− | |||
− | |||
</div> | </div> | ||
Revision as of 12:02, 20 April 2017
The project sponsor, Singapore Management University’s Library which consists of the Li Ka Shing Library and the Kwa Geok Choo Law Library, has an electronic search platform which offers a wide array of research resources through the EZproxy server. However, the organization requires more valuable insights about the students’ access to the Library’s online database through the EZproxy server. While the team of librarians had an exhaustive repository of EZproxy log data files, they lacked the time and resources to process the data for analysis to better optimize the User Experience. This paper thus aims to process the EZproxy data on a single platform developed in Python 3.0.1 using Jupyter Notebook so that further analysis can be performed independently by the SMU library team with new data in the future. The processed and cleaned data was then tested against 2 test cases, namely the Data Analysis of the search count and the Text Analytics for 3 databases namely Euromonitor, Lawnet and Marketline Advantage (In Appendix D).
Currently, there is no single platform where EZproxy log data can be processed into proper data frames or allow topics to be extracted. We felt that this could be a great opportunity as the log data files could be extracted and analyzed to provide valuable insights for the SMU library team so that the electronic resources database can be better optimized for its users. This motivation originates and resonates deeply with us as students who are active users of the SMU library electronic resources database. We personally use the electronic resources databases frequently to research for academic projects and often faced problems in finding the best and most optimized results on the most appropriate platform. Thus, for this project, we believe that preparing and processing the raw log data onto a single platform, coupled with formulating possible directions for Data Analysis and Textual Analytics, could allow the SMU library team to work more efficiently on the data collected. This in turn could possibly add insights for future projects in optimizing the electronic resources database for current and future students of SMU.
This project aims to create a single platform which enables the pre-processing of EZproxy raw log data and extraction of search queries. This is done on Jupyter Notebook using Python 3.0.1 to offer a ‘plug & play’ solution for processing of future data collected on EZproxy by the SMU library team. After which, the processed data would be tested against 2 test cases which covers the insights on search count and textual analytics on 2 electronic databases: Euromonitor and Lawnet.
Proxy log data & student information data (Names of Students are Hashed)
Proxy log data:
59.189.71.33 tDU1zb0CaV2B8qZ 65ff93f70ca7ceaabcca62de3882ed1633bcd14ecdebbe95f9bd826bd68609ba [01/Jan/2016:00:01:39 +0800] "GET http://heinonline.org:80/HOL/VMTP?base=js&handle=hein.journals/fchlj23&div=7&collection=journals&input=(The%20Great%20Peace)&set_as_cursor=19&disp_num=20&viewurl=SearchVolumeSOLR%3Finput%3D%2528The%2520Great%2520Peace%2529%26div%3D7%26f_size%3D600%26num_results%3D10%26handle%3Dhein.journals%252Ffchlj23%26collection%3Djournals%26set_as_cursor%3D19%26men_tab%3Dsrchresults%26terms%3D%2528The%2520Great%2520Peace%2529 HTTP/1.1" 200 2121 "Mozilla/5.0 (Windows NT 10.0; WOW64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/47.0.2526.106 Safari/537.36"
Proxy Log Data:
Parameters | Description | Example |
---|---|---|
Http address | This is the IP address of the webpage | 59.189.71.33 |
Session ID | Each session is identified by an unique ID, which corresponds to 1 session by a single user | tDU1zb0CaV2B8qZ |
Unique Student ID (Hashed) | The student ID is hashed by the SMU Library so as to protect the identity of users | 65ff93f70ca7ceaabcca62de3882ed1633bcd14ecdebbe95f9bd826bd68609ba |
Timestamp | This is the timing which the log is recorded, and the log is recorded whenever the user performs a task. The time is in 24 hours format and in local Singapore time GST+0800. | [01/Jan/2016:00:01:39 +0800] |
HTML method | The search query by the user typically comes after this HTML method. | GET |
Student Information Data:
“feb0e4d05b236c0bcc0c7331dc754921cf9189c4c1317b0b112696fcf68cd2f8, MASTER School of Accountancy, MSc in CFO Leadership, AY_2014, GY_2015”
Parameters | Description | Example |
---|---|---|
Unique Student ID (Hashed) | This is provided so that we can match the unique student ID to the corresponding ones in the proxy data logs. | feb0e4d05b236c0bcc0c7331dc754921cf9189c4c1317b0b112696fcf68cd2f8 |
Level of Education | This indicates which level of education the user is in, typically Masters or Bachelors programme. | MASTER |
Unique Student ID (Hashed) | The student ID is hashed by the SMU Library so as to protect the identity of users | 65ff93f70ca7ceaabcca62de3882ed1633bcd14ecdebbe95f9bd826bd68609ba |
School | This indicates the school that the user is from. | School of Accountancy |
Type of Programme | This indicates the specific programme the user is undertaking. | MSc in CFO Leadership |
Admission Year | This indicates the year which the user is admitted into SMU. | AY_2014 |
Graduating Year | This indicates the year which the user is graduated from SMU. | GY_2015 |