An Intrusion Detection System (IDS) is a software application or device that monitors the system or activities of network for policy violations or malicious activities and generates reports to the management system. A number of systems may try to prevent an intrusion attempt but this is neither required nor expected of a monitoring system. The main focus of Intrusion detection and prevention systems (IDPS) is to identify the possible incidents, logging information about them and in report attempts. In addition, organizations use IDPS for other purposes, like identifying problems with security policies, deterring individuals and documenting existing threats from infringing security policies. IDPS have become an essential addition to the security infrastructure of nearly every organization. Various methods can be used to detect intrusions but each one is specific to a specific method. The main goal of an intrusion detection system is to detect the attacks efficiently. Furthermore, it is equally important to detect attacks at a beginning stage in order to reduce their impacts. This research work proposed a new approach called outlier detection where, the anomaly dataset is measured by the Neighborhood Outlier Factor (NOF). Here, trained model consists of big datasets with distributed storage environment for improving the performance of Intrusion Detection system. The experimental results proved that the proposed approach identifies the anomalies very effectively than any other approaches.
In a recent years Tourism and Travel stores offering a huge quantity of services and traveling information by online. Additionally, this huge volume of information smoothly accessed by electronic devices, like phone, computer with the availability of internet connection. When tourists are visiting any cities, most of them aimed to explore the interesting fact or things about the places and events etc. in spite of the fruitful progress there are still several opportunities remaining to discover. Firstly, we investigate the properties of the travel package and expand TAST (Tourist-Area-Season topic) model. Thereafter, we expand the Tourist-Area-Season topic (TAST) model for confining the relationship over the every group of the tourist. This research work expressing an outline for the recommender system and describing the latest production of recommendation techniques that are generally divided in the three phase: Collaborative, Hybrid recommendation and Content-based approaches. Finally, we appraise the Tourist-Area-Season topic (TAST) model with the cocktail recommendation approach on the real-world travel package data.
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