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• Sentiment Analysis https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Data mining Free open-source data mining software and applications 1 SenticNet API: A semantic and affective resource for opinion mining and sentiment analysis. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Natural language processing - Major tasks in NLP Sentiment analysis: Extract subjective information usually from a set of documents, often using online reviews to determine "polarity" about specific objects. It is especially useful for identifying trends of public opinion in the Social Media, for the purpose of marketing. 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Text mining 1 Typical text mining tasks include text categorization, text clustering, concept mining|concept/entity extraction, production of granular taxonomies, sentiment analysis, document summarization, and entity relation modeling (i.e., learning relations between named entity recognition|named entities). https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Text mining - Text analysis processes * Sentiment analysis involves discerning subjective (as opposed to factual) material and extracting various forms of attitudinal information: sentiment, opinion, mood, and emotion. Text analytics techniques are helpful in analyzing sentiment at the entity, concept, or topic level and in distinguishing opinion holder and opinion object.http://www.clarabridge.com/default.asp x?tabid=137ModuleID=635ArticleID=722 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Text mining - Commercial 1 * Angoss – Angoss Text Analytics provides entity and theme extraction, topic categorization, sentiment analysis and document summarization capabilities via the embedded Lexalytics Salience Engine. The software provides the unique capability of merging the output of unstructured, textbased analysis with structured data to provide additional predictive variables for improved predictive models and association analysis. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Text mining - Commercial 1 * NetOwl – suite of multilingual text and entity analytics products, including entity extraction, link and event extraction, sentiment analysis, geotagging, name translation, name matching, and identity resolution, among others. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Text mining - Commercial * Sysomos - provider Social Media analytics software platform, including text analytics and sentiment analysis on online consumer conversations. 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis 1 'Sentiment analysis' (also known as 'opinion mining') refers to the use of natural language processing, Text analytics|text analysis and computational linguistics to identify and extract subjective information in source materials. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis 1 Generally speaking, sentiment analysis aims to determine the attitude of a speaker or a writer with respect to some topic or the overall contextual polarity of a document. The attitude may be his or her judgment or evaluation (see appraisal theory), affective state (that is to say, the emotional state of the author when writing), or the intended emotional communication (that is to say, the emotional effect the author wishes to have on the reader). https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Subtasks A basic task in sentiment analysis is classifying the polarity of a given text at the document, sentence, or feature/aspect level — whether the expressed opinion in a document, a sentence or an entity feature/aspect is positive, negative, or neutral. Advanced, beyond polarity sentiment classification looks, for instance, at emotional states such as angry, sad, and happy. 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Subtasks 1 The more fine-grained analysis model is called the feature/aspect-based sentiment analysis. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Subtasks 1 More detailed discussions about this level of sentiment analysis can be found in Liu's NLP Handbook chapter, Sentiment Analysis and Subjectivity. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Methods and features 1 Computers can perform automated sentiment analysis of digital texts, using elements from machine learning such as latent semantic analysis, support vector machines, bag of words and Semantic Orientation mdash; Pointwise Mutual Information (See Peter Turney's https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Methods and features 1 Sentiment Analysis can be split in to two separate categories; manual or human sentiment analysis and automated sentiment analysis. The most notable differences lie in the efficiency of the system and the accuracy of the analysis. Many companies will utilize a combination of both methods. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Methods and features Open source software tools deploy machine learning, statistics, and natural language processing techniques to automate sentiment analysis on large collections of texts, including web pages, online news, internet discussion groups, online reviews, web blogs, and Social Media. 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Methods and features A human analysis component is required in sentiment analysis, as automated systems are not able to analyze historical tendencies of the individual commenter, or the platform and are often classified incorrectly in their expressed sentiment. Automation impacts approximately 23% of comments that are correctly classified by humans. 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Methods and features 1 To address this issue a number of rulebased and reasoning-based approaches have been applied to sentiment analysis, including Defeasible Logic Programming https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Evaluation The accuracy of a sentiment analysis system is, in principle, how well it agrees with human judgments. This is usually measured by precision and recall. However, according to research human raters typically agree 79% 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Evaluation 1 For sentiment analysis tasks returning a scale rather than a binary judgement, correlation is a better measure than precision because it takes into account how close the predicted value is to the target value. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Sentiment analysis and Web 2.0 As businesses look to automate the process of filtering out the noise, understanding the conversations, identifying the relevant content and actioning it appropriately, many are now looking to the field of sentiment analysis.Wright, Alex 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Sentiment analysis and Web 2.0 1 Several research teams in universities around the world currently focus on understanding the dynamics of sentiment in Virtual community|e-communities through sentiment analysis.CORDIS https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment analysis - Sentiment analysis and Web 2.0 The problem is that most sentiment analysis algorithms use simple terms to express sentiment about a product or service 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html CyberEmotions 1 It has led to the creation of several sentiment analysis computer programs, such as SentiStrength.Thelwall, M., Buckley, K., Paltoglou, G https://store.theartofservice.com/the-sentiment-analysis-toolkit.html CyberEmotions - Research Results 1 [http://tist.acm.org/papers/TIST-2010-110317.html Twitter, MySpace, Digg: Unsupervised sentiment analysis in Social Media], ACM Transactions on Intelligent Systems and Technology https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Emotion classification - Plutchik's model 1 for tasks such as affective human-computer interaction or sentiment analysis. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Emotion Markup Language - Reasons for defining an emotion markup language *Opinion mining / sentiment analysis in Web 2.0, to automatically track customer's attitude regarding a product across blogs; 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Technical analysis - Combination with other market forecast methods John Murphy (technical analyst)|John Murphy states that the principal sources of information available to technicians are price, volume and open interest. Other data, such as indicators and sentiment analysis, are considered secondary. 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Attensity 1 'Attensity' provides social analytics and engagement applications for social customer relationship management (social CRM). Attensity's text analytics software applications extract facts, relationships and sentiment analysis|sentiment from unstructured data, which comprise approximately 85% of the information companies store electronically. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Bullish In the last decade, investors are also known to measure market sentiment through the use of news analytics, which include sentiment analysis on textual stories about companies and sectors. 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Telligent Community - History 1 It was one of the first analytics suites for enterprise collaboration software, and provides social analytics including sentiment analysis, Social Fingerprints, and buzz analysis on social networking sites such as Twitter.http://www.cmswire.com/cm s/enterprise-20/telligent-updatesand-rebrands-community-solutionsnew-analytics-solution-004889.php https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Topsy (analytics) - Twitter Oscars Index 1 [http://oscars.topsy.com This index] was also co-developed by Twitter and Topsy. It debuted in January 2013 and originally compared social sentiment for films nominated for Academy awards in six categories: Best Picture, Best Actor. Best Actress, Best Supporting Actor, Best Supporting Actress and Best Director. Topsy sentiment analysis used in this index correctly predicted five out of the six award recipients. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Clarabridge Clarabridge offers its Clarabridge Enterprise and Clarabridge Professional products as SaaS and on premise software solutions that utilize sentiment analysis|sentiment and text analytics to automatically collect, categorize and report on Structured data|structured and unstructured data 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html NetOwl NetOwl utilizes computational linguistics, natural language processing, and machine learning approaches to extract entities, links, and events, to perform sentiment analysis, to assign latitude/longitude to geographical references in text, to translate names written in foreign languages, and to perform name matching and identity resolution.[http://apps.washingtonpost. com/local/top-dccompanies/2011/company/srainternational/596/ SRA International.] Washington Post 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html NetOwl - History Since then, Extractor has added several new capabilities, including link and event extraction, geotagging, and sentiment analysis, as well as entity extraction in other languages and name translation 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Sentiment *Sentiment analysis, automatic detection of opinions embodied in text 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Amit Sheth - Semantics and social data In the early 2009 he initiated and framed the issue of social media analysis in a broad set of semantic dimensions he called SpatioTemporal-Thematic (STT). He emphasised the analysis of social data from the perspective of people, content, sentiment analysis and emotions. This idea lead to a system called Twitris, which employs 1 https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Text categorization - Applications 1 * sentiment analysis, determining the attitude of a speaker or a writer with respect to some topic or the overall contextual polarity of a document. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Multidimensional scaling (in marketing) - Applications Furthermore, MDS has been used extensively in geostatistics, for modeling the spatial variability of the patterns of an image (by representing them as points in a lower-dimensional space),Honarkhah, M and Caers, J, 2010, [http://dx.doi.org/10.1007/s11004-0109276-7 Stochastic Simulation of Patterns Using Distance-Based Pattern Modeling], Mathematical Geosciences, 42: 487–517 and natural language processing, for modeling the semantic and affective relatedness of natural language concepts (by representing them as points in a 100-dimensional vector space).Cambria, E, Song, Y, Wang, H and Howard, N, 2013, '[http://dx.doi.org/10.1109/MIS.2012.118 Semantic multi-dimensional scaling for open-domain sentiment analysis], IEEE Intelligent Systems https://store.theartofservice.com/the-sentiment-analysis-toolkit.html 1 Word embedding 1 Word and phrase embeddings, when used as the underlying input representation, have been shown to boost the performance in NLP tasks such as syntactic parsing and sentiment analysis. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Zumbl - Awards 1 Zumbl won Samsung Innovation Awards 2012 on August 9 and was awarded 150,000 Indian rupee|INR for the use of Sentiment analysis|sentiment mining technology to find out the users' intent and depict them graphically through the users' avatars. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Idio - Platform 1 * Content Analytics (including semantic extraction, sentiment analysis, language detection and readability) https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Brandwatch 1 The tool's coverage includes blogs, news sites, internet forum|forums and social networks such as Twitter and Facebook. Users can then search that data for terms that they are researching, before using charting, categorisation, sentiment analysis and other analytic features to provide further insight. https://store.theartofservice.com/the-sentiment-analysis-toolkit.html Indraprastha Institute of Information Technology - Research 1 Data management for emerging mobileP2P applications, data mining and analytics, sentiment analysis, multidimensional and large-scale data indexing, data privacy and access, cloud computing, knowledge management in software engineering, business intelligence https://store.theartofservice.com/the-sentiment-analysis-toolkit.html For More Information, Visit: • https://store.theartofservice.co m/the-sentiment-analysistoolkit.html The Art of Service https://store.theartofservice.com