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Application of Unsupervised Artificial Neural Network (ANN) Self_Organizing Map (SOM) in Identifying Main Car Sales Factors

Taghavi, Mazyar

arXiv.org Artificial Intelligence

Factors which attract customers and persuade them to buy new car are various regarding different consumer tastes. There are some methods to extract pattern form mass data. In this case we firstly asked passenger car marketing experts to rank more important factors which affect customer decision making behavior using fuzzy Delphi technique, then we provided a sample set from questionnaires and tried to apply a useful artificial neural network method called selforganizing map (SOM) to find out which factors have more effect on Iranian customer's buying decision making. Fuzzy tools were applied to adjust the study to be more real. MATLAB software was used for developing and training network. Results report four factors are more important rather than the others. Results are rather different from marketing expert rankings. Such results would help manufacturers to focus on more important factors and increase company sales level.


On Overcoming Miscalibrated Conversational Priors in LLM-based Chatbots

Herlihy, Christine, Neville, Jennifer, Schnabel, Tobias, Swaminathan, Adith

arXiv.org Artificial Intelligence

We explore the use of Large Language Model (LLM-based) chatbots to power recommender systems. We observe that the chatbots respond poorly when they encounter under-specified requests (e.g., they make incorrect assumptions, hedge with a long response, or refuse to answer). We conjecture that such miscalibrated response tendencies (i.e., conversational priors) can be attributed to LLM fine-tuning using annotators -- single-turn annotations may not capture multi-turn conversation utility, and the annotators' preferences may not even be representative of users interacting with a recommender system. We first analyze public LLM chat logs to conclude that query under-specification is common. Next, we study synthetic recommendation problems with configurable latent item utilities and frame them as Partially Observed Decision Processes (PODP). We find that pre-trained LLMs can be sub-optimal for PODPs and derive better policies that clarify under-specified queries when appropriate. Then, we re-calibrate LLMs by prompting them with learned control messages to approximate the improved policy. Finally, we show empirically that our lightweight learning approach effectively uses logged conversation data to re-calibrate the response strategies of LLM-based chatbots for recommendation tasks.


Students Success Modeling: Most Important Factors

Voghoei, Sahar, Byars, James M., King, Scott Jackson, Shapouri, Soheil, Yaghoobian, Hamed, Rasheed, Khaled M., Arabnia, Hamid R.

arXiv.org Artificial Intelligence

The importance of retention rate for higher education institutions has encouraged data analysts to present various methods to predict at-risk students. The present study, motivated by the same encouragement, proposes a deep learning model trained with 121 features of diverse categories extracted or engineered out of the records of 60,822 postsecondary students. The model undertakes to identify students likely to graduate, the ones likely to transfer to a different school, and the ones likely to drop out and leave their higher education unfinished. This study undertakes to adjust its predictive methods for different stages of curricular progress of students. The temporal aspects introduced for this purpose are accounted for by incorporating layers of LSTM in the model. Our experiments demonstrate that distinguishing between to-be-graduate and at-risk students is reasonably achievable in the earliest stages, and then it rapidly improves, but the resolution within the latter category (dropout vs. transfer) depends on data accumulated over time. However, the model remarkably foresees the fate of students who stay in the school for three years. The model is also assigned to present the weightiest features in the procedure of prediction, both on institutional and student levels. A large, diverse sample size along with the investigation of more than one hundred extracted or engineered features in our study provide new insights into variables that affect students success, predict dropouts with reasonable accuracy, and shed light on the less investigated issue of transfer between colleges. More importantly, by providing individual-level predictions (as opposed to school-level predictions) and addressing the outcomes of transfers, this study improves the use of ML in the prediction of educational outcomes.


HOW TO CHOOSE A PROFITABLE FOREX ROBOT

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Ever since the advent of the use of robots in forex trading, there has been a radical change in the outlook of things in the forex market. Most forex traders now prefer to use a robot in order not to attach much feeling when trading on the forex platform. However, the use of robots in forex trading started to increase after the advent of the Meta 4 trader, an app that helps traders to easily trade forex. Right now, we have many robot expert advisors in the world, that help and advice traders on the best way to trade and make a profit in the forex market. Moreover, the ability to choose the best EA for your trading can be a herculean task to make, since there are so many of them out there.


Traffic Congestion Prediction Using Machine Learning Techniques

Yasir, Rafed Muhammad, Nower, Dr. Naushin, Shoyaib, Dr. Mohammad

arXiv.org Artificial Intelligence

The prediction of traffic congestion can serve a crucial role in making future decisions. Although many studies have been conducted regarding congestion, most of these could not cover all the important factors (e.g., weather conditions). We proposed a prediction model for traffic congestion that can predict congestion based on day, time and several weather data (e.g., temperature, humidity). To evaluate our model, it has been tested against the traffic data of New Delhi. With this model, congestion of a road can be predicted one week ahead with an average RMSE of 1.12. Therefore, this model can be used to take preventive measure beforehand.


How to Choose an Applicant Tracking System Easily - Wisestep

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An application tracking system also known as ATS is a software application that facilitates electronic dealing for the recruitment of the company. The key advantage of the software in an organization is that they help to collect and store job-related data about the candidate. The progress of the candidates throughout the hiring process is monitored with ATS. The system takes responsibility for filtering applications in an automatic manner depending on the criteria formulated based on keywords, skills, experience, former employers etc. Depending upon the company status, an ATS can be implemented or access top applicant tracking system online. Posting jobs on corporate websites can also be accomplished with an ATS.


AI Trends for 2022

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Technology is improving every aspect of a business today. As a result, many organizations from various sectors are improving their digital transformation efforts. One way they do so is by including innovative AI solutions. AI is simply artificial intelligence. Neither would it destroy it.


Identifying the Leading Factors of Significant Weight Gains Using a New Rule Discovery Method

Samizadeh, Mina, Jones-Smith, Jessica C, Sheridan, Bethany, Beheshti, Rahmatollah

arXiv.org Artificial Intelligence

Overweight and obesity remain a major global public health concern and identifying the individualized patterns that increase the risk of future weight gains has a crucial role in preventing obesity and numerous sub-sequent diseases associated with obesity. In this work, we use a rule discovery method to study this problem, by presenting an approach that offers genuine interpretability and concurrently optimizes the accuracy(being correct often) and support (applying to many samples) of the identified patterns. Specifically, we extend an established subgroup-discovery method to generate the desired rules of type X -> Y and show how top features can be extracted from the X side, functioning as the best predictors of Y. In our obesity problem, X refers to the extracted features from very large and multi-site EHR data, and Y indicates significant weight gains. Using our method, we also extensively compare the differences and inequities in patterns across 22 strata determined by the individual's gender, age, race, insurance type, neighborhood type, and income level. Through extensive series of experiments, we show new and complementary findings regarding the predictors of future dangerous weight gains.


Know-How to Learn Machine Learning Algorithms Effectively - KDnuggets

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A few days back, a friend of mine came laughing at me, saying "what is taking you so long to learn machine learning? It's just a few models, I learned them in a week". Those were his exact words. I simply smiled at him and inquired what he had learned. He told the names of a few machine learning algorithms.


The State of Radiology AI: Considerations for Purchase Decisions and Current Market Offerings

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To provide an overview of important factors to consider when purchasing radiology artificial intelligence (AI) software and current software offerings by type, subspecialty, and modality. Important factors for consideration when purchasing AI software, including key decision makers, data ownership and privacy, cost structures, performance indicators, and potential return on investment are described. For the market overview, a list of radiology AI companies was aggregated from the Radiological Society of North America and the Society for Imaging Informatics in Medicine conferences (November 2016–June 2019), then narrowed to companies using deep learning for imaging analysis and diagnosis. Software created for image enhancement, reporting, or workflow management was excluded. Software was categorized by task (repetitive, quantitative, explorative, and diagnostic), modality, and subspecialty.