Web Mining Techniques Applicable for Cultural Heritage Observations
DOI:
https://doi.org/10.55630/dipp.2021.11.22Keywords:
Data Mining, Recommendation Systems, Cultural Heritage, Data CollectionAbstract
The rapid digitalization in the cultural domain generated enormous amounts of data. But that data is not personalized or processed, thus the benefit for different users is limited, due to the variety of users – people learn through different methods. However if techniques used in the last decade to personalize web content are applied to cultural content more users could easily absorb and process the cultural heritage knowledge. Also techniques could be applied to cluster and extract useful knowledge.References
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