What are some good books on Machine Learning and AI like Krugman, Wells and Graddy's “Essentials of Economics”2019 Community Moderator ElectionWhat are some easy to learn machine-learning applications?Books on Reinforcement LearningData science / machine learning books for mathematiciansWhat is the best tutorial to quickly learning machine learning in RWhat are some of the resources to learn practical issues in machine learning and data science?Good books on unsupervised learningCan anyone recommend some good books or articles on working with time series?Learning Attention Based Models [books]What does Machine Learning Paradigms means, and what are they?What are some good fields to research in data science?

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What are some good books on Machine Learning and AI like Krugman, Wells and Graddy's “Essentials of Economics”



2019 Community Moderator ElectionWhat are some easy to learn machine-learning applications?Books on Reinforcement LearningData science / machine learning books for mathematiciansWhat is the best tutorial to quickly learning machine learning in RWhat are some of the resources to learn practical issues in machine learning and data science?Good books on unsupervised learningCan anyone recommend some good books or articles on working with time series?Learning Attention Based Models [books]What does Machine Learning Paradigms means, and what are they?What are some good fields to research in data science?










3












$begingroup$


I am a Logistics student. I like the book "Essentials of Economics" by Krugman, Wells and Graddy in that it is concise, easygoing and not a beginners book (though it gradually approaches advanced subjects thus paving the way for further rigorous Economics course) so any one interested in Economics can learn it even if he/she never studied the subject before. Also, I am very interested in AI and Machine Learning and acknowledge their importance in this our postmodern era and I am self learning Real Analysis and web site development. What are some good introductory books on Machine Learning and AI like Krugman, Wells and Graddy's "Essentials of Economics"?










share|improve this question







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    3












    $begingroup$


    I am a Logistics student. I like the book "Essentials of Economics" by Krugman, Wells and Graddy in that it is concise, easygoing and not a beginners book (though it gradually approaches advanced subjects thus paving the way for further rigorous Economics course) so any one interested in Economics can learn it even if he/she never studied the subject before. Also, I am very interested in AI and Machine Learning and acknowledge their importance in this our postmodern era and I am self learning Real Analysis and web site development. What are some good introductory books on Machine Learning and AI like Krugman, Wells and Graddy's "Essentials of Economics"?










    share|improve this question







    New contributor




    Anti-American Anti-Zionist is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
    Check out our Code of Conduct.







    $endgroup$














      3












      3








      3





      $begingroup$


      I am a Logistics student. I like the book "Essentials of Economics" by Krugman, Wells and Graddy in that it is concise, easygoing and not a beginners book (though it gradually approaches advanced subjects thus paving the way for further rigorous Economics course) so any one interested in Economics can learn it even if he/she never studied the subject before. Also, I am very interested in AI and Machine Learning and acknowledge their importance in this our postmodern era and I am self learning Real Analysis and web site development. What are some good introductory books on Machine Learning and AI like Krugman, Wells and Graddy's "Essentials of Economics"?










      share|improve this question







      New contributor




      Anti-American Anti-Zionist is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
      Check out our Code of Conduct.







      $endgroup$




      I am a Logistics student. I like the book "Essentials of Economics" by Krugman, Wells and Graddy in that it is concise, easygoing and not a beginners book (though it gradually approaches advanced subjects thus paving the way for further rigorous Economics course) so any one interested in Economics can learn it even if he/she never studied the subject before. Also, I am very interested in AI and Machine Learning and acknowledge their importance in this our postmodern era and I am self learning Real Analysis and web site development. What are some good introductory books on Machine Learning and AI like Krugman, Wells and Graddy's "Essentials of Economics"?







      machine-learning self-study books ai






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          2 Answers
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          active

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          3












          $begingroup$

          The two books that come into my mind are:



          1. Artificial Intelligence: A Modern Approach

          2. The Deep Learning Book

          They both start from the basics and escalate while moving on.



          Also thanks for your recommendation, I'll take a look at it because I want to jump to finance at some point in my career:)






          share|improve this answer









          $endgroup$




















            2












            $begingroup$

            What do you want to learn in AI and Machine learning? Artificial Intelligence covers many practical applications, so your question might be a bit vague here. I will suggest you books on Machine learning itself, as it is as a part of Artificial Intelligence.



            Simply stated the goal of Machine learning is two-fold: inference and prediction.
            Inference: the goal here is to understand the relationship between input variables and output variables. If I change the values of the inputs, how do the output values change? prediction: Here we are not as much interested in how the data changes, but just want to know the value of the output variable.



            So, in general, you should be interested in Statistics, more specifically concerning prediction and inference. That's it, except that doesn't help you decide which books to purchase.



            Here goes the list (it's a popular one)



            Books



            The Master Algorithm



            If you want to learn about machine learning algorithms in a relaxed and fun manner, good if to take up if the next books give you headaches. Certainly worth reading.



            An Introduction to Statistical Learning with Applications in R



            This book is the most approachable one in the list. It requires some understanding of mathematics to understand certain formulas, but the text is still written in a way that will make concepts clear before you dive into the math. Make sure you do the exercises with R. It's a good skill to pick-up and it will make the theory much more tangible.



            This book and next one in the list are freely available online, but if you want you can still purchase paper versions on amazon. I linked you the free versions.



            The Elements Of Statistical Learning



            This one picks up where ISLR left off. it is more math heavy and explores new concepts. You will find some overlap with the first book which will help solidify the concepts you learned in the first book.



            These first three books will already ease you quite into the field. However if you decide to become more serious about learning, the following books should definitely be on your reading list:



            Pattern Recognition and Machine Learning



            Deep Learning



            Reinforcement Learning



            The best advice I can give you with these books is to read them from cover to cover. Don't read too much at once, take breaks and try to explain what you read to yourself. It can often make sense on paper and then not so much when you say it aloud.
            Don't look at the formulae as something to skip. Instead, look at them like lego blocks. Each symbol has a meaning that is defined in the index at the beginning of each book. Try to explain each symbol in the formula; Then explain how the symbols interact. Once you understand the formula, try to think what happens when certain symbols change values. You'll get a very firm grasp of the formula that way. The field of AI and ML has a lot of jargon it can become overwhelming. By really understanding how certain algorithms work you will stop being fooled by the fancy names and start to realize that there is a lot of repetition.



            Enjoy !






            share|improve this answer








            New contributor




            Nicolas is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
            Check out our Code of Conduct.






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              Your Answer





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              2 Answers
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              active

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              2 Answers
              2






              active

              oldest

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              active

              oldest

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              active

              oldest

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              3












              $begingroup$

              The two books that come into my mind are:



              1. Artificial Intelligence: A Modern Approach

              2. The Deep Learning Book

              They both start from the basics and escalate while moving on.



              Also thanks for your recommendation, I'll take a look at it because I want to jump to finance at some point in my career:)






              share|improve this answer









              $endgroup$

















                3












                $begingroup$

                The two books that come into my mind are:



                1. Artificial Intelligence: A Modern Approach

                2. The Deep Learning Book

                They both start from the basics and escalate while moving on.



                Also thanks for your recommendation, I'll take a look at it because I want to jump to finance at some point in my career:)






                share|improve this answer









                $endgroup$















                  3












                  3








                  3





                  $begingroup$

                  The two books that come into my mind are:



                  1. Artificial Intelligence: A Modern Approach

                  2. The Deep Learning Book

                  They both start from the basics and escalate while moving on.



                  Also thanks for your recommendation, I'll take a look at it because I want to jump to finance at some point in my career:)






                  share|improve this answer









                  $endgroup$



                  The two books that come into my mind are:



                  1. Artificial Intelligence: A Modern Approach

                  2. The Deep Learning Book

                  They both start from the basics and escalate while moving on.



                  Also thanks for your recommendation, I'll take a look at it because I want to jump to finance at some point in my career:)







                  share|improve this answer












                  share|improve this answer



                  share|improve this answer










                  answered 55 mins ago









                  pcko1pcko1

                  1,641418




                  1,641418





















                      2












                      $begingroup$

                      What do you want to learn in AI and Machine learning? Artificial Intelligence covers many practical applications, so your question might be a bit vague here. I will suggest you books on Machine learning itself, as it is as a part of Artificial Intelligence.



                      Simply stated the goal of Machine learning is two-fold: inference and prediction.
                      Inference: the goal here is to understand the relationship between input variables and output variables. If I change the values of the inputs, how do the output values change? prediction: Here we are not as much interested in how the data changes, but just want to know the value of the output variable.



                      So, in general, you should be interested in Statistics, more specifically concerning prediction and inference. That's it, except that doesn't help you decide which books to purchase.



                      Here goes the list (it's a popular one)



                      Books



                      The Master Algorithm



                      If you want to learn about machine learning algorithms in a relaxed and fun manner, good if to take up if the next books give you headaches. Certainly worth reading.



                      An Introduction to Statistical Learning with Applications in R



                      This book is the most approachable one in the list. It requires some understanding of mathematics to understand certain formulas, but the text is still written in a way that will make concepts clear before you dive into the math. Make sure you do the exercises with R. It's a good skill to pick-up and it will make the theory much more tangible.



                      This book and next one in the list are freely available online, but if you want you can still purchase paper versions on amazon. I linked you the free versions.



                      The Elements Of Statistical Learning



                      This one picks up where ISLR left off. it is more math heavy and explores new concepts. You will find some overlap with the first book which will help solidify the concepts you learned in the first book.



                      These first three books will already ease you quite into the field. However if you decide to become more serious about learning, the following books should definitely be on your reading list:



                      Pattern Recognition and Machine Learning



                      Deep Learning



                      Reinforcement Learning



                      The best advice I can give you with these books is to read them from cover to cover. Don't read too much at once, take breaks and try to explain what you read to yourself. It can often make sense on paper and then not so much when you say it aloud.
                      Don't look at the formulae as something to skip. Instead, look at them like lego blocks. Each symbol has a meaning that is defined in the index at the beginning of each book. Try to explain each symbol in the formula; Then explain how the symbols interact. Once you understand the formula, try to think what happens when certain symbols change values. You'll get a very firm grasp of the formula that way. The field of AI and ML has a lot of jargon it can become overwhelming. By really understanding how certain algorithms work you will stop being fooled by the fancy names and start to realize that there is a lot of repetition.



                      Enjoy !






                      share|improve this answer








                      New contributor




                      Nicolas is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
                      Check out our Code of Conduct.






                      $endgroup$

















                        2












                        $begingroup$

                        What do you want to learn in AI and Machine learning? Artificial Intelligence covers many practical applications, so your question might be a bit vague here. I will suggest you books on Machine learning itself, as it is as a part of Artificial Intelligence.



                        Simply stated the goal of Machine learning is two-fold: inference and prediction.
                        Inference: the goal here is to understand the relationship between input variables and output variables. If I change the values of the inputs, how do the output values change? prediction: Here we are not as much interested in how the data changes, but just want to know the value of the output variable.



                        So, in general, you should be interested in Statistics, more specifically concerning prediction and inference. That's it, except that doesn't help you decide which books to purchase.



                        Here goes the list (it's a popular one)



                        Books



                        The Master Algorithm



                        If you want to learn about machine learning algorithms in a relaxed and fun manner, good if to take up if the next books give you headaches. Certainly worth reading.



                        An Introduction to Statistical Learning with Applications in R



                        This book is the most approachable one in the list. It requires some understanding of mathematics to understand certain formulas, but the text is still written in a way that will make concepts clear before you dive into the math. Make sure you do the exercises with R. It's a good skill to pick-up and it will make the theory much more tangible.



                        This book and next one in the list are freely available online, but if you want you can still purchase paper versions on amazon. I linked you the free versions.



                        The Elements Of Statistical Learning



                        This one picks up where ISLR left off. it is more math heavy and explores new concepts. You will find some overlap with the first book which will help solidify the concepts you learned in the first book.



                        These first three books will already ease you quite into the field. However if you decide to become more serious about learning, the following books should definitely be on your reading list:



                        Pattern Recognition and Machine Learning



                        Deep Learning



                        Reinforcement Learning



                        The best advice I can give you with these books is to read them from cover to cover. Don't read too much at once, take breaks and try to explain what you read to yourself. It can often make sense on paper and then not so much when you say it aloud.
                        Don't look at the formulae as something to skip. Instead, look at them like lego blocks. Each symbol has a meaning that is defined in the index at the beginning of each book. Try to explain each symbol in the formula; Then explain how the symbols interact. Once you understand the formula, try to think what happens when certain symbols change values. You'll get a very firm grasp of the formula that way. The field of AI and ML has a lot of jargon it can become overwhelming. By really understanding how certain algorithms work you will stop being fooled by the fancy names and start to realize that there is a lot of repetition.



                        Enjoy !






                        share|improve this answer








                        New contributor




                        Nicolas is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
                        Check out our Code of Conduct.






                        $endgroup$















                          2












                          2








                          2





                          $begingroup$

                          What do you want to learn in AI and Machine learning? Artificial Intelligence covers many practical applications, so your question might be a bit vague here. I will suggest you books on Machine learning itself, as it is as a part of Artificial Intelligence.



                          Simply stated the goal of Machine learning is two-fold: inference and prediction.
                          Inference: the goal here is to understand the relationship between input variables and output variables. If I change the values of the inputs, how do the output values change? prediction: Here we are not as much interested in how the data changes, but just want to know the value of the output variable.



                          So, in general, you should be interested in Statistics, more specifically concerning prediction and inference. That's it, except that doesn't help you decide which books to purchase.



                          Here goes the list (it's a popular one)



                          Books



                          The Master Algorithm



                          If you want to learn about machine learning algorithms in a relaxed and fun manner, good if to take up if the next books give you headaches. Certainly worth reading.



                          An Introduction to Statistical Learning with Applications in R



                          This book is the most approachable one in the list. It requires some understanding of mathematics to understand certain formulas, but the text is still written in a way that will make concepts clear before you dive into the math. Make sure you do the exercises with R. It's a good skill to pick-up and it will make the theory much more tangible.



                          This book and next one in the list are freely available online, but if you want you can still purchase paper versions on amazon. I linked you the free versions.



                          The Elements Of Statistical Learning



                          This one picks up where ISLR left off. it is more math heavy and explores new concepts. You will find some overlap with the first book which will help solidify the concepts you learned in the first book.



                          These first three books will already ease you quite into the field. However if you decide to become more serious about learning, the following books should definitely be on your reading list:



                          Pattern Recognition and Machine Learning



                          Deep Learning



                          Reinforcement Learning



                          The best advice I can give you with these books is to read them from cover to cover. Don't read too much at once, take breaks and try to explain what you read to yourself. It can often make sense on paper and then not so much when you say it aloud.
                          Don't look at the formulae as something to skip. Instead, look at them like lego blocks. Each symbol has a meaning that is defined in the index at the beginning of each book. Try to explain each symbol in the formula; Then explain how the symbols interact. Once you understand the formula, try to think what happens when certain symbols change values. You'll get a very firm grasp of the formula that way. The field of AI and ML has a lot of jargon it can become overwhelming. By really understanding how certain algorithms work you will stop being fooled by the fancy names and start to realize that there is a lot of repetition.



                          Enjoy !






                          share|improve this answer








                          New contributor




                          Nicolas is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
                          Check out our Code of Conduct.






                          $endgroup$



                          What do you want to learn in AI and Machine learning? Artificial Intelligence covers many practical applications, so your question might be a bit vague here. I will suggest you books on Machine learning itself, as it is as a part of Artificial Intelligence.



                          Simply stated the goal of Machine learning is two-fold: inference and prediction.
                          Inference: the goal here is to understand the relationship between input variables and output variables. If I change the values of the inputs, how do the output values change? prediction: Here we are not as much interested in how the data changes, but just want to know the value of the output variable.



                          So, in general, you should be interested in Statistics, more specifically concerning prediction and inference. That's it, except that doesn't help you decide which books to purchase.



                          Here goes the list (it's a popular one)



                          Books



                          The Master Algorithm



                          If you want to learn about machine learning algorithms in a relaxed and fun manner, good if to take up if the next books give you headaches. Certainly worth reading.



                          An Introduction to Statistical Learning with Applications in R



                          This book is the most approachable one in the list. It requires some understanding of mathematics to understand certain formulas, but the text is still written in a way that will make concepts clear before you dive into the math. Make sure you do the exercises with R. It's a good skill to pick-up and it will make the theory much more tangible.



                          This book and next one in the list are freely available online, but if you want you can still purchase paper versions on amazon. I linked you the free versions.



                          The Elements Of Statistical Learning



                          This one picks up where ISLR left off. it is more math heavy and explores new concepts. You will find some overlap with the first book which will help solidify the concepts you learned in the first book.



                          These first three books will already ease you quite into the field. However if you decide to become more serious about learning, the following books should definitely be on your reading list:



                          Pattern Recognition and Machine Learning



                          Deep Learning



                          Reinforcement Learning



                          The best advice I can give you with these books is to read them from cover to cover. Don't read too much at once, take breaks and try to explain what you read to yourself. It can often make sense on paper and then not so much when you say it aloud.
                          Don't look at the formulae as something to skip. Instead, look at them like lego blocks. Each symbol has a meaning that is defined in the index at the beginning of each book. Try to explain each symbol in the formula; Then explain how the symbols interact. Once you understand the formula, try to think what happens when certain symbols change values. You'll get a very firm grasp of the formula that way. The field of AI and ML has a lot of jargon it can become overwhelming. By really understanding how certain algorithms work you will stop being fooled by the fancy names and start to realize that there is a lot of repetition.



                          Enjoy !







                          share|improve this answer








                          New contributor




                          Nicolas is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
                          Check out our Code of Conduct.









                          share|improve this answer



                          share|improve this answer






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                          answered 48 mins ago









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                          Nicolas is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
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