RegionHong KongColorColorCategoryIII(Hong Kong)PresentMingshi Film-TypeFeature FilmGenreAdult / SubjectSex / Female Nudity / Jing Ping MeiDirectorTan Ruiming ScreenplayLiang Liren CinematographerTang Yutai CastNot according to credit sequenceCai Meiyou Shan Liwen Yang Simin Ye Xianer Related news NewsContribute information about this filmScore 4.5/6 voted. Top moviesI haven't voted yet. Select12345678910Jing Ping Mei (1996) Movie DVD / Rent / DownloadBuy DVD YesAsia.com Play-Asia.com Jing Ping Mei (1996) (Amazon)Download/Online Streaming: Amazon Instant Videovar myTarget=' =143538&wgcampaignid=33387&js=0&clickref=page bottom';var uri = ' =143538&wgcampaignid=33387';document.write('');LinkChinese UKWaterInkRent-A-DVDYesAsia Play-AsiaDatabase StatisticsUpdateBlogAbout UsPrivacy PolicyCopyright (C) 1996-2014. All rights reserved by the Chinese Movie Database, and/or their respective owners.Mandarin Pinyin system is used for romanization. People's last name comes first.try clicky.init(10115); catch(e)
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Problem setting Support vector machines (SVMs) are very popular tools for classification, regression and other problems. Due to the large choice of kernels they can be applied with, a large variety of data can be analysed using these tools. Machine learning thanks its popularity to the good performance of the resulting models. However, interpreting the models is far from obvious, especially when non-linear kernels are used. Hence, the methods are used as black boxes. As a consequence, the use of SVMs is less supported in areas where interpretability is important and where people are held responsible for the decisions made by models. Objective In this work, we investigate whether SVMs using linear, polynomial and RBF kernels can be explained such that interpretations for model-based decisions can be provided. We further indicate when SVMs can be explained and in which situations interpretation of SVMs is (hitherto) not possible. Here, explainability is defined as the ability to produce the final decision based on a sum of contributions which depend on one single or at most two input variables. Results Our experiments on simulated and real-life data show that explainability of an SVM depends on the chosen parameter values (degree of polynomial kernel, width of RBF kernel and regularization constant). When several combinations of parameter values yield the same cross-validation performance, combinations with a lower polynomial degree or a larger kernel width have a higher chance of being explainable. Conclusions This work summarizes SVM classifiers obtained with linear, polynomial and RBF kernels in a single plot. Linear and polynomial kernels up to the second degree are represented exactly. For other kernels an indication of the reliability of the approximation is presented. The complete methodology is available as an R package and two apps and a movie are provided to illustrate the possibilities offered by the method. PMID:27723811
Virtual screening is an important step in early-phase of drug discovery process. Since there are thousands of compounds, this step should be both fast and effective in order to distinguish drug-like and nondrug-like molecules. Statistical machine learning methods are widely used in drug discovery studies for classification purpose. Here, we aim to develop a new tool, which can classify molecules as drug-like and nondrug-like based on various machine learning methods, including discriminant, tree-based, kernel-based, ensemble and other algorithms. To construct this tool, first, performances of twenty-three different machine learning algorithms are compared by ten different measures, then, ten best performing algorithms have been selected based on principal component and hierarchical cluster analysis results. Besides classification, this application has also ability to create heat map and dendrogram for visual inspection of the molecules through hierarchical cluster analysis. Moreover, users can connect the PubChem database to download molecular information and to create two-dimensional structures of compounds. This application is freely available through www.biosoft.hacettepe.edu.tr/MLViS/. PMID:25928885
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