Computational Analysis and Deep Learning for Medical Care. Группа авторов
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СКАЧАТЬ can always obtain a higher output by replacing the labor intensity at routine jobs and using the same at places where skill is required. Time and labor saved here can be used where creativity is to be employed. When replaced, we should always check speed and engagement rates with proper audit.

Schematic illustration of architecture diagram for querying.

      2.4.1 Distance Measures

      As shown in Table 2.3, many techniques will provide the user to retrieve the query; based on the different approaches, these may be good for some queries, and it may depend on the retrieved document based on the retrieval of the query [23]. The query suggestion is so important in these days; based on the location, their location, their habits, and interests may change like food preferences, usage items in their locations, it will be purely depends on the perception of the user’s location.

S. no Techniques
1 Index
2 Rank
3 Popularity
4 No of times referred
5 Index + location
6 Document proximity [4]
7 AI-based search
8 Keyword-document graph

      The different measures, which are used in the query suggestion techniques, are listed here.

      1 Euclidean

      2 Manhattan

      3 Cosine similarity

      4 Jaccard coefficients

      The AI perspective will consider the following measures in query preparation, to enhance the performance of the query suggestion.

      1 User’s information

      2 Location

      3 Previous search history

      4 Back links

      5 Keywords

      6 Click through rate

      7 Choice of websites

      8 Other similar users’ choice

      The AI algorithm learns from the results and decides the importance to be given to each of the factors specific to the user location. An AI-powered search engine learns and adjusts itself based on the ambiguous search queries; and it uses feedback data to improve the accuracy of its results.

      Search engine algorithms begin incorporating esoteric information in their ranking algorithms. The tendency of the keyword query suggestion has been replaced by the user log to the location of the user. The user expects more accurate query results. The user needs to provide a single keyword query and location, the system it returns the results considering the user proximity location. Upgrading the system to further levels by adding the AI perspective, the query suggestion has changed to user preference level. The value of AI-powered search is an analysis of growing tremendous information that happens in the background of the user’s data. It helps inappropriate recommendations and drives the system with better user satisfaction and engagement. More is the data availability for the AI-powered search more will be the relevant results to the user. The usage of it will makes the effective in the future based on the location and the movement of the public, the AI will predict what kind of activity is going in that location also will predict.

      1. Baeza-Yates, R., Hurtado, C., Mendoza, M., Query recommendation using query logs in search engines, in: EDBT, pp. 588–596, 2004.

      2. Beeferman, D. and Berger, A., Agglomerative clustering of a search engine query log, in: KDD, pp. 407–416, 2000.

      3. Cao, H., Jiang, D., Pei, J., He, Q., Liao, Z., Chen, E., Li, H., Context-aware query suggestion by mining click-through and session data, in: KDD, pp. 875–883, 2008.

      4. Qi, S., Wu, D., Mamoulis, N., Location aware keyword Query suggestion based on document proximity. IEEE Trans. Knowl. Data Eng., 28, 1, 82–97, 2016.

      5. Berkhin, P., Bookmark-coloring algorithm for personalized pagerankcomputing. Internet Math., 3, 41–62, 2006.

      6. Craswell, N. and Szummer, M., Random walks on the click graph, in: Proc. 30th Annu. Int. ACM SIGIR Conf. Res. Develop. Inf. Retrieval, pp. 239–246, 2007.

      7. Mei, Q., Zhou, D., Church, K., Query suggestion using hitting time, in: Proc. 17th ACM Conf. Inf. Knowl. Manage, pp. 469–478, 2008.

      8. Song, Y. and He, L.-W., Optimal rare query suggestion with implicit user feedback, in: Proc. 19th Int. Conf. World Wide Web, pp. 901–910, 2010.

      9. СКАЧАТЬ