Click-streams are routes of the
user takes when navigating through a site and it shows the page the user
arrived on, the order in which the page was reviewed, how long they stayed and
timestamp when they left.
Click streams give companies
an understanding of their users` behaviours and habits. When recording click-streams
organisations can determine how to arrange/customize their site/page, also it
helps to identify weaknesses of website. “Based on such metrics as page requests,
visit duration, visit pathway, and visit frequency, users were clustered into
browsers, searchers and purchasers” (Hofgesang & Kowalczyk, 2005; Moe, 2003). When we take an example
in e-commerce, if it is noticed that user mostly leave the site from the
shopping cart page, companies might want to consider improving that page by
changing the text colours or arrangement to increase conversions. .
Click-streams are commonly used in e-commerce
websites to analyse the pages of shop or commonly visits spends time run and
what user puts in their cart among other things; however since its quantitative,
it is hard to understand why users behave
in the way they did.
The challenges of click-stream data
Shortcoming of Log Files: there is a possibility
that individual people might not be identified by log file, because computer IP
addresses are recorded as a log file, not the user itself. So this can result
in wrong assumptions while defining user sessions.
Excessive number of pages: low number of page can help to marketers to
forecast or undertand the number of path taken by visitor. But if the number of
website pages are increasing like thaudans, it is getting really difficult to measure,
in other words it may become infinity.
It should not be forgotten that user privacy is becoming a major concern for
internet users. Should it be a necessary to ask for a permission for web
providers in order to take or use users` behavioral data?
Reference:
Hofgesang, P. and Kowalczyk, W., 2005. Analysing clickstream
data: From anomaly detection to visitor profiling. [online] Available at:
<https://www.researchgate.net/publication/228722329_Analysing_clickstream_data_From_anomaly_detection_to_visitor_profiling>
[Accessed 4 June 2020].
Moe, W., 2003. Buying, Searching, or Browsing:
Differentiating Between Online Shoppers Using In-Store Navigational
Clickstream. [online] 13(1-2), pp.29-39. Available at:
<https://www.sciencedirect.com/science/article/abs/pii/S1057740803701740>
[Accessed 4 June 2020].
Nice work Cemre..
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