Fajar Purnama, Alvin Fungai, Thinh Minh Do, Al Hafiz Akbar Maulana Siagan, Anwar Annas, Harry Susanto, Hendarmawan, Tsuyoshi Usagawa, Hiroshi Nakano.
- This paper was presented at 11th International Student Conference on Advanced Science and Technology (ICAST) in Kumamoto University, Japan, on 9th December 2016 but was not published thus the copyright remained with me “Fajar Purnama” the main author where I have the authority to repost anywhere and I hereby declare to license it as customized CC-BY-SA where you are also allowed to sell my contents but with a condition that you must mention that the free and open version is available here. In summary, the mention must contain the keyword “free” and “open” and the location such as the link to this content.
- The original is available at Reasearch Gate.
- The presentation is available at Slide Share.
- The source code is available at Github.
With today’s information communication technology (ICT) it is very common for people to publish information online which can be viewed anywhere at anytime unlike the conventional hard copies such as books. This made a possibility for web page analytics (i.e. how long and how many times that page is viewed). These features greatly benefit the field of education, and birth popular terms like e-learning, online course, and learning analytic.
Our colleges   implemented e-learning on their respective universities and some schools, and they were able to monitor their students’ performances at ease which were essential data for their research. Research in  focuses on the online discussion forums of students and distinguished between non-active, lurkers, and active students through the number of posts and post views. Another research in  shows the differences in learning patterns between students below and above average. Their research were able to greatly improve the quality of education, however their types of data still only consists to the likes of number of contents viewed, discussions posted, assignments submitted, quizzes attempted, and their scores, which still has not shown the detail behaviors or habits of those during face to face interaction. In simple terms, the data can answer what, when, and where the contents were viewed but cannot answer how the contents were viewed.
The authors have the idea to extend the details of the data that can be collected like what part of the page is the person currently focusing on, how long did the user spend on that part, how many times did the user click, how often did the user scroll up and down, what did the user type, and other users interactions. Due to the limitation of this paper will only be shown a glimpse of this idea as stated on title of this article as introductory. This work will show that a client-side programming can be implemented on a web page to measure the time spent by a user on that particular section along with the accessed date. Thus the objective of this work is to demonstrate a web application that can track the date and duration viewed on sections of a page.
A related work that most people know is the browser history that contains what site and when we have previously visited. Projects in the ICT industry had built analytic tools for example TimeStat  a Chrome Browser plugin that can generate statistical graph alike that represents our browsing behavior including when and how long we spent on a page. A more advance tool example is Google Analytics  that could capture various user interaction such as mouse clicks, mouse scrolls, keyboard types, image viewed, videos played, and etc.
There are also other works by researchers on learning analytics field. One of our colleges  on his open textbook analytic system framework was able to record students actions such as movements to a next/previous page, jumps to a chapter, link clicks, bookmarks and annotations,  is also very similar that claims to be able to identify reader’s reading habit on e-magazines, but both had not dive as far as this work’s proposed state of the art which is tracking sections viewed on a page. One of the closest to this work is from  which they built a finger trail learning system (FTLS) where the users must scroll to every letters on the reading context. The letters will be highlighted once the pointer touches the letter. The work is very similar and maybe better but not the same. They introduces users reading habit by pointer trailing, while this work is about the time spent by users reading on particular sections.
The application architecture can be seen in Fig. 1. It consists of a representation interface, a web application program interface (API), and a database. The state of the art proposed method is on the representation side where a client-side programming is embedded on a web page to record the section page view event by the user. The other parts are web API and database to store, analyze and present the captured events which is common knowledge. The web API is a server-side programming language that can be Java, hypertext preprocessor (PHP), or any other languages that functions to put the captured events on the database, retrieve and present the data. Advanced analysis can be done on this side to represent the data statistically like in form of line graph for example. Finally the database is a place to store the captured events, which usually use query languages such as structured query language (SQL). The database can either be MySQL, MariaDB, or other known database applications.
Fig. 1. Application Architecture
List. 1. Tracker code example on a section of a text
</span> Section 1
</span> This is section 1\.
Fig. 2\. Demonstration, left focus on section 1.1, right focus on section 1.2
Fig. 2\. is a view of List. 1\. The left figure shows that the timer starts when the mouse pointer is in the first section. Afterwards it stops when leaving section 1 and starts timer on section 2 when it enters it on the right figure. For both sections, the dates of the last time pointed by the pointer is also generated. Therefore Figure Fig. 2\. demonstrate the possibility of tracking the time spent by a user on a particular section. Using a web API and a database can store and output the result, revealing when and how long a user spent on certain sections of the page as on Fig. 3.
Fig. 3\. Sample result showing the date and duration spent on certain sections
## Conclusion and Future Work
This introductory work demonstrated an application that could track the date and time spent on certain sections of a web page which will be an extended feature of currently existing page views feature. The data that can be obtained from this feature allows new possibility to those who researches the behaviors of users online, and may benefit those in the field of e-learning alike. On the next work will be implementing a module or plugin to content editors on content management systems (CMS) and learning management system (LMS) to provide a button to add this tracking feature on their contents. However, this may not be suitable for commercial use since the coding nature of web pages can be complicated and variative to implement this method. It is suggested in future work to develop a browser plugin that can track the window of the browser itself instead of the web pages.
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