• 关于LDA的文章


    转:http://www.zhizhihu.com/html/y2011/3228.html

    l  Theory

    n  Introduction

    u  Unsupervised learning by probabilistic latent semantic analysis.

    u  Latent dirichlet allocation.

    u  Finding scientific topics.

    u  Rethinking LDA: Why Priors Matter

    u  On an equivalence between PLSI and LDA

    n  Variations

    u  Correlated Topic Models.

    u  Hierarchical topic models and the nested Chinese restaurant process.

    u  Hierarchical Dirichlet processes.

    u  Nonparametric Bayes pachinko allocation.

    u  Topic Models with Power-Law Using Pitman-Yor Process

    u  Supervised topic models.

    u  Topic Models Conditioned on Arbitrary Features withDirichlet-multinomial Regression

    u  Discriminative Topic Modeling based on Manifold Learning

    u  Interactive Topic Modeling

    u  Mixtures of hierarchical topics with pachinko allocation

    u  Incorporating domain knowledge into topic modeling via DirichletForest priors

    u  Conditional topic random fields

    u  Markov random topic fields

    u  A two-dimensional topic-aspect model for discovering multi-facetedtopics

    u  Generalized component analysis for text with heterogeneousattributes

    n  Inference

    u  Gibbs Sampling:

    l  Finding scientific topics.

    l  Parameter estimation for text analysis

    l  Fast collapsed gibbs sampling for latent dirichlet allocation

    l  Distributed inference for latent dirichlet allocation

    u  Variational EM

    l  Latent dirichlet allocation.

    n  Evaluation

    u  Reading tea leaves: How humans interpret topic models.

    u  Evaluation Methods for Topic Models

    n  Online learning and scalability

    u  On-line LDA: Adaptive topic models for mining text streams withapplications to topic detection and tracking

    u  Online variational inference for the hierarchical Dirichlet process.

    u  Online Learning for Latent Dirichlet Allocation

    u  Efficient Methods for Topic Model Inference on Streaming DocumentCollections

    u  Online Multiscale Dynamic Topic Models

    l  Applications

    n  Classification

    u  DiscLDA: Discriminative learning for dimensionality reduction andclassification

    u  Labeled LDA: A supervised topic model for credit attribution inmulti-labeled corpora

    u  MedLDA: maximum margin supervised topic models for regression andclassification

    n  Clustering

    n  Network data(social network) mining

    u  Link-PLSA-LDA: A new unsupervised model for topics and influence ofblogs

    u  Connections between the lines: augmenting social networks with text

    u  Relational topic models for document networks

    u  Topic and role discovery in social networks with experiments onenron and academic email

    u  Group and topic discovery from relations and text

    u  Probabilistic models for discovering e-communities

    u  Arnetminer: Extraction and mining of academic social networks

    u  Community evolution in dynamic multi-mode networks

    u  An LDA-based community structure discovery approach for large-scalesocial networks

    u  Probabilistic community discovery using hierarchical latent gaussianmixture model

    u  Modeling Evolutionary Behaviors for Community-based DynamicRecommendation

    u  Joint group and topic discovery from relations and text

    u  Social topic models for community extraction

    u  Combining link and content for community detection: a discriminativeapproach

    u  Topic-Link LDA: Joint Models of Topic and Author Community

    u  Modeling hidden topics on document manifold

    u  Topic Modeling with Network Regularization

    u  Mining Topic-Level Influence in Heterogeneous Networks

    u  Utilizing Context in Generative Bayesian Models for Linked Corpus

    u

    n  Sentiment analysis and opinion mining

    u  Rated aspect summarization of short comments.

    u  Learning document-level semantic properties from free-textannotations.

    u  Joint sentiment/topic model for sentiment analysis.

    u  Mining multi-faceted overviews of arbitrary topics in a textcollection

    u  Modeling online reviews with multi-grain topic models

    u  Topic sentiment mixture: modeling facets and opinions in weblogs.

    u  Multiple aspect ranking using the good grief algorithm.

    u  A joint model of text and aspect ratings for sentiment summarization.

    u  Opinion integration through semi-supervised topic modeling

    u  Holistic Sentiment Analysis Across Languages: MultilingualSupervised Latent Dirichlet Allocation.

    u  Latent Aspect Rating Analysis on Review Text Data: A RatingRegression Approach

    u  Aspect and Sentiment Unification Model for Online Review Analysis

    u  An unsupervised aspect-sentiment model for online reviews

    u  Jointly Modeling Aspects and Opinions with a MaxEnt-LDA Hybrid.

    n  Evolutionary text stream mining

    u  Discovering evolutionary theme patterns from text: an exploration oftemporal text mining

    u  Topics over time: a non-markov continuous-time model of topicaltrends

    u  Topic models over text streams: A study of batch and onlineunsupervised learning

    u  Mining correlated bursty topic patterns from coordinated textstreams

    u  Topic Evolution in a stream of Documents

    u  Evolutionary Hierarchical Dirichlet Processes for MultipleCorrelated Time-varying Corpora

    u  Studying the history of ideas using topic models

    u  Mining common topics from multiple asynchronous text streams.

    u  Mining Correlated Bursty Topic Patterns from Coordinated TextStreams

    n  Temporal and spatial data analysis

    u  A latent variable model for geographic lexical variation.

    u  Dynamic topic models

    u  A probabilistic approach to spatiotemporal theme pattern mining onweblogs

    u  Continuous time dynamic topic models

    u  Dynamic mixture models for multiple time series

    u  On-Line LDA: Adaptive Topic Models for Mining Text Streams

    u  Topic models over text streams: A study of batch and onlineunsupervised learning

    u  Spatial latent dirichlet allocation

    n  Scientific publication mining

    u  Finding scientific topics.

    u  The author-topic model for authors and documents.

    u  Statistical entity-topic models

    u  Probabilistic author-topic models for information discovery

    u  The author-recipient-topic model for topic and role discovery insocial networks

    u  Expertise modeling for matching papers with reviewers

    u  Topic evolution and social interactions: how authors effect research

    u  Joint latent topic models for text and citations

    u  Co-ranking authors and documents in a heterogeneous network

    u  Mixed-membership models of scientific publications

    u  Modeling individual differences using Dirichlet processes

    u  Multi-aspect expertise matching for review assignment

    u  Topic-link LDA: joint models of topic and author community

    u  Group and topic discovery from relations and their attributes

    u  Exploiting Temporal Authors Interests via Temporal-Author-TopicModeling, ADMA 2009

    u  Topic and Trend Detection in Text Collections Using Latent DirichletAllocation, ECIR 2009

    u  Mining a digital library for influential authors.

    u  Bibliometric Impact Measures Leveraging Topic Analysis.

    u  Context-aware Citation Recommendation

    u  Detecting Topic Evolution in Scientific Literature: How CanCitations Help?

    u  Latent Interest-Topic Model: Finding the causal relationships behinddyadic data

    u  A topic modeling approach and its integration into the random walkframework for academic search

    n  Web data mining

    u  Latent topic models for hypertext

    n  Information retrieval

    u  LDA-based document models for ad-hoc retrieval

    u  Exploring social annotations for information retrieval

    u  Modeling general and specific aspects of documents with a probabilistictopic model

    u  Exploring topic-based language models for effective web informationretrieval

    u  Probabilistic Models for Expert Finding

    n  Information extraction

    u  Employing Topic Models for Pattern-based Semantic Class Discovery

    u  Combining Concept Hierarchies and Statistical Topic Models

    u  A Probabilistic Approach for Adapting Information ExtractionWrappers and Discovering New Attributes

    u  An Unsupervised Framework for Extracting and Normalizing ProductAttributes from Multiple Web Sites

    u  Learning to Adapt Web Information Extraction Knowledge andDiscovering New Attributes via a Bayesian Approach

    u  Adapting Web Information Extraction Knowledge via Mining SiteInvariant and Site Dependent Features

    u  Learning to Extract and Summarize Hot Item Features from MultipleAuction Web Sites"

    u  Semi-supervised Extraction of Entity Aspects Using Topic Models

    n  Annotations(or Tagging, Labeling) and recommendation

    u  Automatic labeling of multinomial topic models.

    u  Context modeling for ranking and tagging bursty features in textstreams.

    u  Learning document-level semantic properties from free-textannotations.

    u  Generating summary keywords for emails using topics

    u  Semantic Annotation of Frequent Patterns

    u  Latent dirichlet allocation for tag recommendation

    u  Tag-LDA for Scalable Real-time Tag Recommendation

    u  The Topic-Perspective Model for Social Tagging Systems

    u  A Probabilistic Topic-Connection Model for Automatic ImageAnnotation

    u  Clustering the Tagged Web

    n  Summarization

    u  Topical keyphrase extraction from twitter.

    u  Bayesian query-focused summarization

    u  Topic-based multi-document summarization with probabilistic latentsemantic analysis

    u  Multi-topic based Query-oriented Summarization

    u  Multi-Document Summarization using Sentence-based Topic Models

    u  Generating Impact-Based Summaries for Scientific Literature

    u  Generating Comparative Summaries of Contradictory Opinions in Text

    u  Rated Aspect Summarization of Short Comments

    u  A Hybrid Hierarchical Model for Multi-Document Summarization

    u  GENERATING TEMPLATES OF ENTITY SUMMARIES WITH AN ENTITY-ASPECT MODELAND PATTERN MINING

    u  Latent dirichlet allocation and singular value decomposition basedmulti-document summarization

    n  Social media mining

    u  A latent variable model for geographic lexical variation.

    u  Empirical study of topic modeling in twitter.

    u  Characterizing micorblogs with topic models.

    u  TwitterRank: finding topic-sensitive influential twitterers.

    u  Comparing twitter and traditional media using topic models.

    n  DB

    u  Topic cube: Topic modeling for olap on multidimensional textdatabases

    n  NLP tasks

    u  A topic model for word sense disambiguation

    u  Syntactic topic models

    u  Integrating topics and syntax

    u  Topic modeling: beyond bag-of-words

    u  A Bayesian LDA-based model for semi-supervised part-of-speechtagging

    u  Topical n-grams: Phrase and topic discovery, with an application toinformation retrieval

    u  A topic model for word sense disambiguation

    u  Named entity recognition in query

    u  Multilingual topic models for unaligned text.

    u  Markov topic models.

    u  Modeling Syntactic Structures of Topics with a Nested HMM-LDA

    u  Topic segmentation with an aspect hidden Markov model.

    u  Polylingual Topic Models

    u  A Latent Dirichlet Allocation method for Selectional Preferences

    u  Improving word sense disambiguation using topic features

    u  Cross-Lingual Latent Topic Extraction

    u  Exploiting conversation structure in unsupervised topic segmentationfor emails

    u  TOPIC MODELS FOR WORD SENSE DISAMBIGUATION AND TOKEN-BASED IDIOM

    DETECTION

  • 相关阅读:
    XML WebService完全实例详细解析
    List (Java 2 Platform SE 5.0)
    frameset
    关于在outlook2007里面编辑签名的问题
    关于javax.servlet.Http.*;不能被引用的问题
    select标签HTML,刚做地。
    UIButton中setTitleEdgeInsets和setImageEdgeInsets的使用
    玩转UICollectionViewLayout
    常用公共方法
    cell嵌套UIWebView遇到的几个问题
  • 原文地址:https://www.cnblogs.com/guolei/p/3449788.html
Copyright © 2020-2023  润新知