Read online book Machine Translation by Pushpak Bhattacharyya FB2, DJV
9781439897188 English 1439897182 The proposed project on machine translation will be based on the above pedagogy, through the study of phenomena, formalization, and then elucidation of the techniques. Case studies, examples, and historical perspectives will be used extensively to cover the material. The primary aim of this book is to provide an accessible text book on machine translation covering lucidly the foundations, insights, and case studies for practical concerns. The book would also point towards where the field is currently and heading towards in the future.", This accessible text explains machine translation through the study of phenomena, formalization, and elucidation of the techniques. It extensively uses case studies, examples, and historical perspectives. The book lucidly covers the foundations, insights, and case studies for practical concerns. The text also points toward where the field is heading in the future., Three paradigms have dominated machine translation (MT) rule-based machine translation (RBMT), statistical machine translation (SMT), and example-based machine translation (EBMT). These paradigms differ in the way they handle the three fundamental processes in MT analysis, transfer, and generation (ATG). In its pure form, RBMT uses rules, while SMT uses data. EBMT tries a combination data supplies translation parts that rules recombine to produce translation. Machine Translation compares and contrasts the salient principles and practices of RBMT, SMT, and EBMT. Offering an exposition of language phenomena followed by modeling and experimentation, the text: Introduces MT against the backdrop of language divergence and the Vauquois triangle Presents expectation maximization (EM)-based word alignment as a turning point in the history of MT Discusses the most important element of SMT bilingual word alignment from pairs of parallel translations Explores the IBM models of MT, explaining how to find the best alignment given a translation pair and how to find the best translation given a new input sentence Covers the mathematics of phrase-based SMT, phrase-based decoding, and the Moses SMT environment Provides complete walk-throughs of the working of interlingua-based and transfer-based RBMT Analyzes EBMT, showing how translation parts can be extracted and recombined to translate a new input, all automatically Includes numerous examples that illustrate universal translation phenomena through the usage of specific languages Machine Translation is designed for advanced undergraduate-level and graduate-level courses in machine translation and natural language processing. The book also makes a handy professional reference for computer engineers.", Three paradigms have dominated machine translation (MT)--rule-based machine translation (RBMT), statistical machine translation (SMT), and example-based machine translation (EBMT). These paradigms differ in the way they handle the three fundamental processes in MT--analysis, transfer, and generation (ATG). In its pure form, RBMT uses rules, while SMT uses data. EBMT tries a combination--data supplies translation parts that rules recombine to produce translation. Machine Translation compares and contrasts the salient principles and practices of RBMT, SMT, and EBMT. Offering an exposition of language phenomena followed by modeling and experimentation, the text: Introduces MT against the backdrop of language divergence and the Vauquois triangle Presents expectation maximization (EM)-based word alignment as a turning point in the history of MT Discusses the most important element of SMT--bilingual word alignment from pairs of parallel translations Explores the IBM models of MT, explaining how to find the best alignment given a translation pair and how to find the best translation given a new input sentence Covers the mathematics of phrase-based SMT, phrase-based decoding, and the Moses SMT environment Provides complete walk-throughs of the working of interlingua-based and transfer-based RBMT Analyzes EBMT, showing how translation parts can be extracted and recombined to translate a new input, all automatically Includes numerous examples that illustrate universal translation phenomena through the usage of specific languages Machine Translation is designed for advanced undergraduate-level and graduate-level courses in machine translation and natural language processing. The book also makes a handy professional reference for computer engineers.
9781439897188 English 1439897182 The proposed project on machine translation will be based on the above pedagogy, through the study of phenomena, formalization, and then elucidation of the techniques. Case studies, examples, and historical perspectives will be used extensively to cover the material. The primary aim of this book is to provide an accessible text book on machine translation covering lucidly the foundations, insights, and case studies for practical concerns. The book would also point towards where the field is currently and heading towards in the future.", This accessible text explains machine translation through the study of phenomena, formalization, and elucidation of the techniques. It extensively uses case studies, examples, and historical perspectives. The book lucidly covers the foundations, insights, and case studies for practical concerns. The text also points toward where the field is heading in the future., Three paradigms have dominated machine translation (MT) rule-based machine translation (RBMT), statistical machine translation (SMT), and example-based machine translation (EBMT). These paradigms differ in the way they handle the three fundamental processes in MT analysis, transfer, and generation (ATG). In its pure form, RBMT uses rules, while SMT uses data. EBMT tries a combination data supplies translation parts that rules recombine to produce translation. Machine Translation compares and contrasts the salient principles and practices of RBMT, SMT, and EBMT. Offering an exposition of language phenomena followed by modeling and experimentation, the text: Introduces MT against the backdrop of language divergence and the Vauquois triangle Presents expectation maximization (EM)-based word alignment as a turning point in the history of MT Discusses the most important element of SMT bilingual word alignment from pairs of parallel translations Explores the IBM models of MT, explaining how to find the best alignment given a translation pair and how to find the best translation given a new input sentence Covers the mathematics of phrase-based SMT, phrase-based decoding, and the Moses SMT environment Provides complete walk-throughs of the working of interlingua-based and transfer-based RBMT Analyzes EBMT, showing how translation parts can be extracted and recombined to translate a new input, all automatically Includes numerous examples that illustrate universal translation phenomena through the usage of specific languages Machine Translation is designed for advanced undergraduate-level and graduate-level courses in machine translation and natural language processing. The book also makes a handy professional reference for computer engineers.", Three paradigms have dominated machine translation (MT)--rule-based machine translation (RBMT), statistical machine translation (SMT), and example-based machine translation (EBMT). These paradigms differ in the way they handle the three fundamental processes in MT--analysis, transfer, and generation (ATG). In its pure form, RBMT uses rules, while SMT uses data. EBMT tries a combination--data supplies translation parts that rules recombine to produce translation. Machine Translation compares and contrasts the salient principles and practices of RBMT, SMT, and EBMT. Offering an exposition of language phenomena followed by modeling and experimentation, the text: Introduces MT against the backdrop of language divergence and the Vauquois triangle Presents expectation maximization (EM)-based word alignment as a turning point in the history of MT Discusses the most important element of SMT--bilingual word alignment from pairs of parallel translations Explores the IBM models of MT, explaining how to find the best alignment given a translation pair and how to find the best translation given a new input sentence Covers the mathematics of phrase-based SMT, phrase-based decoding, and the Moses SMT environment Provides complete walk-throughs of the working of interlingua-based and transfer-based RBMT Analyzes EBMT, showing how translation parts can be extracted and recombined to translate a new input, all automatically Includes numerous examples that illustrate universal translation phenomena through the usage of specific languages Machine Translation is designed for advanced undergraduate-level and graduate-level courses in machine translation and natural language processing. The book also makes a handy professional reference for computer engineers.