基于借閱記錄的圖書(shū)個(gè)性化推薦方法研究與應(yīng)用
[Abstract]:With the increasing development of publishing industry, the number and variety of books in university libraries are increasing day by day. It is difficult for readers to find the books they are interested in a large number of books. At present, the book recommendation system of the university library generally only depends on the quantity of borrowing to recommend the popular books, so it can not realize the individualized recommendation. Therefore, it is necessary to carry on the thorough research to the university book personalization recommendation method. Based on the borrowing records of a university library in the past ten years, this paper designs a recommendation method which can realize the personalized book recommendation. The method consists of two parts. In the first part, collaborative filtering algorithm is used to make rough recall of recommendation results. In the second part, the reader preference model is constructed by extracting the features of the borrowed records. The first part of the rough recall results of books is predicted by the model, and the final recommended results are generated according to the ranking of the books. The principle of collaborative filtering algorithm is to find similar users of target users and recommend them according to the behavior of similar users. Collaborative filtering algorithm relies on user-item scoring matrix to calculate user similarity. Based on the research background of university library borrowing data, this paper presents the relationship between readers and books by generating reader-book scoring matrix based on borrowing records, fills in the matrix with the number of days the readers borrow books, and indicates the readers' scores on books. Finally, the evaluation in the matrix is normalized. Based on two collaborative filtering algorithms and two methods to calculate the similarity of the four algorithms for comparison experiments, using the average absolute error (Mean Absolute Error,MAE) as the evaluation criteria, select the optimal combination of algorithms. The resulting recommendation results include books borrowed by readers with different specialties and grades to realize personalized book recommendation. In the second part of the method, the features of reader information, book information and borrowing information are extracted. Select all readers' borrowing records, sort according to the borrowing time, construct positive and negative sample set by appropriate time window, use GBDT algorithm to train the data, construct reader preference model. The rough recall result of the first part is predicted by the generated model, and the final recommendation result is generated according to the ranking of the score. Finally, based on the recommendation method designed in this paper, a book personalized recommendation system is established. Readers log on to the web page through identity authentication and interact with the recommendation system to obtain personalized recommendation results that accord with their interests and preferences.
【學(xué)位授予單位】:北方工業(yè)大學(xué)
【學(xué)位級(jí)別】:碩士
【學(xué)位授予年份】:2017
【分類號(hào)】:TP391.3
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